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Search User Interface Design
                           Dr Max L. Wilson
                           Mixed Reality Lab
                      University of Nottingham, UK




Dr Max L. Wilson                                     http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
About Me
                                                Social Media Search

                    My Research Areas                         Casual Search




                Search User Interface Design
                    My Framework

                            Information vs Interaction

                                                         Brain Response

Dr Max L. Wilson                                                      http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
Software Engineering MEng
                    HCI & Information Science PhD
                    Web Science and Semantic Web


Dr Max L. Wilson                                    http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
Dr Max L. Wilson    http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
UIST
                                2008

                                JCDL
                                2008
Dr Max L. Wilson    http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
My PhD




                                                                Bates, M. J. (1979a). Idea tactics. Journal of
                                                                the American Society for Information
            Belkin, N. J., Marchetti, P. G., and Cool, C.       Science, 30(5):280–289.
            (1993). Braque: design of an interface to support
            user interaction in information retrieval.          Bates, M. J. (1979b). Information search
            Information Processing and Management, 29(3):       tactics. Journal of the American Society for
            325–344.                                            Information Science, 30(4):205–214.

Dr Max L. Wilson                                                                               http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
My PhD




                    Wilson, M. L., schraefel, m. c., and White, R. W. (2009). Evaluating advanced
                    search interfaces using established information-seeking models. Journal of the
                    American Society for Information Science and Technology, 60(7):1407–1422.

Dr Max L. Wilson                                                                                     http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
Come and Sii what I’ve built




                             http://mspace.fm/sii
                          Best JASIST article 2009
Dr Max L. Wilson                                     http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
Dr Max L. Wilson    http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
Dr Max L. Wilson    http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
About Me
                                                Social Media Search

                    My Research Areas                         Casual Search




                Search User Interface Design
                    My Framework

                            Information vs Interaction

                                                         Brain Response

Dr Max L. Wilson                                                      http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
to observe that experience with or of the subject matter was                       In the post-task interviews, we asked users to informally
          important to the information seekers. We also see two very                         augment their relevance judgments with scores out of 5.
          interesting codes appear in this task, which are able to                           Overall, the mean score for all rated tweets over all three
          compliment each other, the first being shared sentiment,                           tasks was 2.2, indicating a very low relevancy score.
          and secondly entertaining. Both of these codes are                                 Individually, the first task, which was temporal in nature,


                                       Social Media Search
          subjective in nature, which could be expected a subjective
          task. Useful links and experience were also played an
          important role in this task. Many participants found this
                                                                                             scored 2.7. The second task, which involved users search
                                                                                             for information regarding purchasing an iPhone, scored a
                                                                                             very low 1.25. The third and final task, which was a

            In Tweet Content                                                                                                          T1       T2     T3
              Experience               Someone reporting a personal experience, but not necessarily suggestion / direction.           15       12     13
              Direct                   Someone making a direct recommendation, but not necessarily relaying a personal                3         3     20
              Recommendation           experience.
              Social Knowledge         Containing information that is spreading socially, or becoming general knowledge.              7         6      6
              Specific                 Where facts are listed directly in tweets e.g. prices, times etc.                              51       10     47
              Information
            Reflection on Tweet
              Entertaining             The reader finds them amusing.                                                                 1         3      2
              Shared Sentiment         The reader agrees with the author of the tweet.                                                1         2      1
            Relevant
              Time                     The time is current.                                                                           14        0      2
              Location                 The location is relevant to the query.                                                         6         1     40
            Trust
              Trusted Author           The twitter account has a reputation / following.                                              3         2      6
              Trusted Avatar           The visual appearance cultivates trust.                                                        2         0      2
              Trusted Link             A link to a trustworthy recognizable domain.                                                   14        1      7
            Links
              Actionable Link          The user can perform a transaction by using the link (heavily dependent on trust).             9         0      0
              Media Link               The link is to rich multimedia content.                                                        9         0      0
              Useful Link              The link provides valuable information content, e.g. authoritative information, educated       61       30     43
                                       reviews, and discussions.
            Meta Tweet
             Retweeted Lots            Its information that others have passed on lots.                                               4         0      4
             Conversation              It is part of a series of tweets, and they all need to be useful.                              1         4      4

            Table 3. The 16 codes and the 6 categories extracted from responses and tweet pairs from the useful tweets. Further, columns 3-5 show how

                                                                                                                              ICWSM 2011
            frequently each was associated with the temporal (T1), subjective (T2) and location-sensitive (T3) tasks.




Dr Max L. Wilson                                                                                                                           http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
Social Media Search


                         INSERT VIDEO




Dr Max L. Wilson                          http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
D
               behaviours documented so far.
               4.1 Need-less browsing                                                             d

                           Casual Leisure Search
                 Much like the desire to pass time at the television, we saw
               many examples (some shown in Table 3) of people passing
                                                                                                  a

               time typically associated with the ‘browsing’ keyword.                             5
                                                                                                  h
                    1)   ... I’m not even *doing* anything useful... just browsing
                         eBay aimlessly...
                                                                                                  f
                    2)   to do list today: browse the Internet until fasting break                o
                         time..                                                                   S
                    3)   ... just got done eating dinner and my family is watch-
                         ing the football. Rather browse on the laptop
                                                                                                  i
                    4)   I’m at the dolphin mall. Just browsing.                                  b
                                                                                                  a
               Table 3: Example tweets where the browsing activ-                                  d
               ity is need-less.                                                                  f
                                                                                                  t
                From the collected tweets it is clear that often the inform-                      s
           ation-need in these situations are not only fuzzy, but2010
                                                               HCIR typi-                         W
           cally absent. The aim appears to be focused on the activity,                           t
           where the measure of success would be in how much they
Dr Max L. Wilson                                                     http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
Casual Leisure Search




                    Springer Book Chapter - Award: Outstanding Author Contribution
Dr Max L. Wilson                                                               http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
About Me
                                                Social Media Search

                    My Research Areas                         Casual Search




                Search User Interface Design
                    My Framework

                            Information vs Interaction

                                                         Brain Response

Dr Max L. Wilson                                                      http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
Search User Interface Design




Dr Max L. Wilson                        http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
Dr Max L. Wilson    http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
4
                                                                   14                13
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                        9




                    12




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Dr Max L. Wilson                                                        http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
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                                                       1                            14



                             10
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                    5
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                        6
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                                      9
                        16

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Dr Max L. Wilson                                                http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
Dr Max L. Wilson    http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
Dr Max L. Wilson    http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
Dr Max L. Wilson    http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
Dr Max L. Wilson    http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
4
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                                    5


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                                2



                        9




                    12




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                    6




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Dr Max L. Wilson                                                        http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
4

                             1

                                 Input Features
                                  8




                    12




Dr Max L. Wilson                         http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
4
                                                                            13
                                             1

                                5                     Control Features
                                                        8
                                            11




                        9




                    12




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                    6




                                    9




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                                        3
Dr Max L. Wilson                                               http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
1

                                5                Informational Features
                                                      10
                                            11

                            2



                        9




                    12




                                                                       7
                    6




                                    9




                                                 11

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Dr Max L. Wilson                                              http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
14               13
                                    1

                                    Personalisable Features


                            2



                        9




                    12




                    6




                                9




Dr Max L. Wilson                                    http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
SUI Design Taxonomy

           Input Features

           Control Features

           Informational Features

           Personalisable Features


Dr Max L. Wilson                          http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
SUI Design Taxonomy

           Input Features            Search box
                                     Query-by-example
           Control Features          Clusters/Categories
                                     Taxonomies
           Informational Features    Facets
                                     Social annotations
           Personalisable Features


Dr Max L. Wilson                                http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
Auto-complete/suggest                                         4.1. INPUT FEATURES          31




                    (a) Apple – shows lots of contextual informa-   (b) Google – prioritising previous searches.
                    tion and multimedia.

            Figure 4.1: Examples of AutoComplete.
Dr Max L. Wilson                                                                                         http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
SUI Design Taxonomy

           Input Features
                                     Query Suggestions
           Control Features          Corrections
                                     Sorting
                                     Filters
           Informational Features
                                     Groupings
           Personalisable Features


Dr Max L. Wilson                                http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
46
                                                Sorting
                         4. MODERN SEARCH USER INTERFACES




                     (a) Sorting in Amazon     (b) Sorting in Walmart         (c) Sorting in Yahoo!




                                             (d) Tabular sorting in Scan.co.uk.

Dr Max L. Wilson                                                                                      http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
SUI Design Taxonomy
                                     Snippets
           Input Features            Usable Info
                                     Thumbnails
                                     Previews
           Control Features
                                     Relevance Info
                                     2D & 3D Viz
           Informational Features    Guiding numbers
                                     Zero-click answers
           Personalisable Features   Signposting
                                     Pagination
                                     Social Info
Dr Max L. Wilson                                http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
Usable Information
                    Figure 4.17: Snippets in Ciao’s search results can be extended using the ‘more’ link.




                    Figure 4.18: Results in Sainsbury’s groceries search can be added to the shopping basket without having
                    to leave the search page.


                    allows searchers to add items to their cart from the SERP, as shown in Figure 4.18. If searchers are
                    unsure if an item is right for them, however, they can view a page with more information about
                    each product, and buy from there too. Ciao!, in Figure 4.17, also has a range of usable links in
                    their results, including links directly to reviews, pricing options, and to the category that an item
                    belongs in. In Google Image Search, there is a usable link that turns any result into a new search for
                    ‘Similar Images,’ as discussed in the Query-by-example section above. Further, searchers may now
Dr Max L. Wilson    ‘+1’ a result in a Google SERP, without affecting or interrupting their search. Finally, searching http://cs.nott.ac.uk/~mlw/
                                                                                                                        in
Monday, 2 July 12          23
74   4. MODERN SEARCH USER INTERFACES




                                 Social Information
                            Recommendation

                                • Track and reuse information about the behaviour of a systems
                                  searchers.




             Figure 4.39: Amazon often provides feedback to tell searchers what people typically end up actually
             buying.


                  or even the way they are presented. Further, they can affect the Control features that are provided.
                  For clarification, there has been a lot of work that has focused on algorithmic personalisation for
Dr Max L. Wilson                                                                                            http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12 search, which has a whole book of its own [133]. Instead, this section focuses on different types of
SUI Design Taxonomy

           Input Features

           Control Features

           Informational Features

           Personalisable Features   Current-search
                                     Persistent
                                     Socialised
Dr Max L. Wilson                                http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
76     4. MODERN SEARCH USER INTERFACES



                                         Search Histories
                                  Recommendation

                                      • Help searchers to return to previously viewed SERPs and results.




                       (a) History of searches in PubMed.               (b) History of searches and results in Ama-
                                                                        zon.

                    Figure 4.41: SUIs can help searchers get back to previous searches by keeping a history.
Dr Max L. Wilson                                                                                               http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
SUI Design Taxonomy
                         Input          Control




                      Informational   Personalisable


Dr Max L. Wilson                                       http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
The Search Box
                          Input       Control
     Query
     Only
                    sb




                    Informational   Personalisable


Dr Max L. Wilson                                     http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
The Search Box
                        Input         Control




    with
    auto-              sb


   suggest



                    Informational   Personalisable


Dr Max L. Wilson                                     http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
The Search Box
                       Input               Control




                                                              If query
                                    sb                     is persistent
                                                          in search box




                    Informational        Personalisable


Dr Max L. Wilson                                            http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
The Search Box
                       Input               Control
                                                           with auto-
                                                            suggest,
                                                           and query
                                                              left in
                                    sb                     place, and
                                                             if auto-
                                                             suggest
                                                            includes
                                                              search
                    Informational        Personalisable      history
Dr Max L. Wilson                                          http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
The Sweet Spot for SUI design
                            Input          Control




                         Informational   Personalisable

                    Good SUI features fit into >1 category
Dr Max L. Wilson                                            http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
Search User Interface Design

                          • The Taxonomy

                          • Historical   context

                          • Lots   of examples

                          • 20   Design Recommendations

                          • Future Trends

                          • Evaluation   notes
Dr Max L. Wilson                                    http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
About Me
                                                Social Media Search

                    My Research Areas                         Casual Search




                Search User Interface Design
                    My Framework

                            Information vs Interaction

                                                         Brain Response

Dr Max L. Wilson                                                      http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
Search User Interface Design

                              Does Interaction Matter?

           Does interaction provide significant benefits to users?

                    Or is it just more information and more data?

  How should companies prioritise investment in these areas?

Dr Max L. Wilson                                             http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
Information vs Interaction




Dr Max L. Wilson                            http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
Information vs Interaction

                                     Useful info - or Efficient interaction?

    • Kelly         et al (2009) - query suggests > term suggestions

    • Ruthven          (2003) - humans not good at choosing useful ones

    • Diriye         (2009) - slow people down during simple tasks


Dr Max L. Wilson                                                 http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
Information vs Interaction


        Useful data?                                         Efficient
   (from good algorithm)                                   interaction?


    • Hearst         & Pederson (1996) - better task performance

    • Pirolli       et al (1996) - helped to understand corpus


Dr Max L. Wilson                                                 http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
Information vs Interaction

                            Powerful interaction?

                           or lots of useful data?

    • Hearst        (2006) - careful metadata is always better than clusters

    • Wilson        & schraefel (2009) - good for understanding corpus


Dr Max L. Wilson                                                 http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
Information vs Interaction




Dr Max L. Wilson                            http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
Information vs Interaction




                Query data

Dr Max L. Wilson                            http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
Information vs Interaction




                              Clustered
                Query data
                              algorithms
Dr Max L. Wilson                            http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
Information vs Interaction




                              Clustered    Faceted
                Query data
                              algorithms   metadata
Dr Max L. Wilson                               http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
Information vs Interaction




                Query data

Dr Max L. Wilson                            http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
Information vs Interaction



                                      Figure 1: The three interaction conditions in the stu
                                     common form. UIC in the middle presents secondar
                                    hierarchical clustering. UIF on the right, which inclu
                                     terms, or facets, that can be applied to or removed fr

                               -    H1: Searchers will be more efficient with more
                                    powerful interaction, using the same metadata, when
                                    completing search tasks.
                               -    H2: Searchers will enjoy more powerful interaction,
                Query data          despite using the same metadata.
                               -    H3: Searchers will use query recommendations more
                                    when they are presented differently.
Dr Max L. Wilson               In order to accept or reject these hypotheses, we designed a
                                                                        http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
                               3x2 repeated-measures study using two independent
3 Conditions




        UIQ                UIC                  UIF
         Figure 1: The three interaction conditions in the study. UIQ on the left presents query suggestions in their
Dr Max L. Wilson                                                                                   http://cs.nott.ac.uk/~mlw/
       common form. UIC in the middle presents secondary query suggestions with an interaction model based on
Monday, 2 July 12
xperience, standard         Two standard types of user study task were used in the
he Bing API for the         study: 1) a simple lookup task and 2) an exploratory task.
 op-level entities in       All six tasks are shown in Table 1.
 n, UIC then asked

                                      2 Types of Task
                            The simple lookup tasks had a fixed answer, but the chosen
 h were represented         task description was presented in such a way that the most
  To create the same        likely query would not find the answer without subsequent
wsing through the           queries or refinements. This approach was chosen to
  ies, the searchers        intrinsically encourage participants to use the IIR features
   box. As well as          on the left of each user interface condition.
n selected in the
dard terminology to              Table 1: Tasks set to participants in the study.
em in hierarchy]’.                        S = Simple, E = Exploratory
  technically issuing       ID    S/E    Task Description
xperience appeared          1     S      What is the population of Ohio?
 fferent sub-clusters
y.                          2     E      Find an appropriate review of “Harry Potter and
                                         the Deathly Hallows”.
  filtering systems,
                                         - Compare the rating with the previous film.
 of metadata made
 mbination in order         3     S      Find the first state of America.
s able to flexibly          4     E      Deduce the main problems that Steve Jobs
f keyword filters in                     incurred with regards to his health.
 or and narrow their        5     S      What is the iPad 3’s proposed processor name?
 typically maintain
                            6     E      Explore information related to Apple’s next
 arch box, and then
                                         iPhone, the iPhone 5.
  results to portions
                                         - Note the expected release date. There could well
                                         be multiple rumours.
 elves to using just
 aimed L. Wilson
  Dr Max
            to create a                                                                       http://cs.nott.ac.uk/~mlw/
 to apply 12
  Monday, 2 July multiple   The exploratory search tasks were chosen to be tasks with
18 People
                    Intro +    UI1       UI2       UI3      QA +
                    Consent   2 tasks   2 tasks   2 tasks   Debrief




Dr Max L. Wilson                                                 http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
18 People
                    Intro +       UI1       UI2       UI3      QA +
                    Consent      2 tasks   2 tasks   2 tasks   Debrief




                      Queries
                    Refinements
                     Pageviews
                       Time

                                     Measures
Dr Max L. Wilson                                                    http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
18 People
                    Intro +       UI1       UI2       UI3      QA +
                    Consent      2 tasks   2 tasks   2 tasks   Debrief




                      Queries
                    Refinements          Ease of use
                     Pageviews        Task Satisfaction
                       Time

                                     Measures
Dr Max L. Wilson                                                    http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
18 People
                    Intro +       UI1       UI2       UI3      QA +
                    Consent      2 tasks   2 tasks   2 tasks   Debrief




                      Queries
                                                             Quickest
                    Refinements          Ease of use
                                                           Most Enjoyable
                     Pageviews        Task Satisfaction
                                                            Best Design
                       Time

                                     Measures
Dr Max L. Wilson                                                    http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
Simple vs Exploratory

           Measure               S       E          Diff

                    Time        176s    179s          no

              Queries           1.75    2.33       p<0.05

            Pageviews           1.65    2.09   p<0.005

         Refinements             2.42    2.45          no

Dr Max L. Wilson                                   http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
Log data By UI

                    Measure         Simple         Exploratory

                    Queries     UIQ < UIC & UIF UIQ > UIC & UIF

                Refinements          No diff       UIQ & UIC < UIF

                     Visits         No diff       UIQ > UIC & UIF

                     Time       UIQ > UIC < UIF   UIC < UIF < UIQ

Dr Max L. Wilson                                         http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
Subjective Responses
                     Measure                         Simple
                     Easy of Use                 UIQ & UIC > UIF
                     Satisfaction                UIQ & UIC > UIF


                           Question                 UIQ   UIC            UIF
                    Quickest to correct answer       11       5             2
                     Most enjoyed during task        4     11               3
                      Most appealing design          5     11               2
Dr Max L. Wilson                                                  http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
What did we actually learn?

    • We            did see different behaviour in all 3 conditions

    • People          were good at simple tasks with original UIQ

    • People          were faster and more effective with UIC
                          and preferred it

    • People          used more filters and viewed fewer pages with UIF
                           but did not like it so much

    • But           is it better or worse behaviour?
Dr Max L. Wilson                                                    http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
Information vs Interaction




                Query data

Dr Max L. Wilson                            http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
Information vs Interaction




                              Clustered    Faceted
                Query data
                              algorithms   metadata
Dr Max L. Wilson                               http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
Information vs Interaction
                                                  Facets

                                                  Clusters
                     Performance




                                                      Suggestions




                                   (hypothetically)
Dr Max L. Wilson                                                    http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
About Me
                                                Social Media Search

                    My Research Areas                         Casual Search




                Search User Interface Design
                    My Framework

                            Information vs Interaction

                                                         Brain Response

Dr Max L. Wilson                                                      http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
SUI Design + Brain Response




Dr Max L. Wilson                      http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
SUI Design + Brain Response
                      Cognitive Load Theory

                      Total Mental Capacity


                              Easy Task




                              Simple UI


Dr Max L. Wilson                              http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
SUI Design + Brain Response
                      Cognitive Load Theory

                      Total Mental Capacity

                              Hard Task




                              Simple UI


Dr Max L. Wilson                              http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
SUI Design + Brain Response
                      Cognitive Load Theory

                      Total Mental Capacity
                              Hard Task




                             Complex UI




Dr Max L. Wilson                              http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
Dr Max L. Wilson    http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
Dr Max L. Wilson    http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
Dr Max L. Wilson    http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
SUI Design & Brain Response


                    Clear design recommendations

                    Cost vs Gain of adding a feature

                    Ways to reduce cost of a feature



Dr Max L. Wilson                                       http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
About Me
                                                Social Media Search

                    My Research Areas                         Casual Search




                Search User Interface Design
                    My Framework

                            Information vs Interaction

                                                         Brain Response

Dr Max L. Wilson                                                      http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12
Dr Max L. Wilson    http://cs.nott.ac.uk/~mlw/
Monday, 2 July 12

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Search User Interface Design

  • 1. Search User Interface Design Dr Max L. Wilson Mixed Reality Lab University of Nottingham, UK Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 2. About Me Social Media Search My Research Areas Casual Search Search User Interface Design My Framework Information vs Interaction Brain Response Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 3. Software Engineering MEng HCI & Information Science PhD Web Science and Semantic Web Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 4. Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 5. UIST 2008 JCDL 2008 Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 6. My PhD Bates, M. J. (1979a). Idea tactics. Journal of the American Society for Information Belkin, N. J., Marchetti, P. G., and Cool, C. Science, 30(5):280–289. (1993). Braque: design of an interface to support user interaction in information retrieval. Bates, M. J. (1979b). Information search Information Processing and Management, 29(3): tactics. Journal of the American Society for 325–344. Information Science, 30(4):205–214. Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 7. My PhD Wilson, M. L., schraefel, m. c., and White, R. W. (2009). Evaluating advanced search interfaces using established information-seeking models. Journal of the American Society for Information Science and Technology, 60(7):1407–1422. Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 8. Come and Sii what I’ve built http://mspace.fm/sii Best JASIST article 2009 Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 9. Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 10. Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 11. About Me Social Media Search My Research Areas Casual Search Search User Interface Design My Framework Information vs Interaction Brain Response Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 12. to observe that experience with or of the subject matter was In the post-task interviews, we asked users to informally important to the information seekers. We also see two very augment their relevance judgments with scores out of 5. interesting codes appear in this task, which are able to Overall, the mean score for all rated tweets over all three compliment each other, the first being shared sentiment, tasks was 2.2, indicating a very low relevancy score. and secondly entertaining. Both of these codes are Individually, the first task, which was temporal in nature, Social Media Search subjective in nature, which could be expected a subjective task. Useful links and experience were also played an important role in this task. Many participants found this scored 2.7. The second task, which involved users search for information regarding purchasing an iPhone, scored a very low 1.25. The third and final task, which was a In Tweet Content T1 T2 T3 Experience Someone reporting a personal experience, but not necessarily suggestion / direction. 15 12 13 Direct Someone making a direct recommendation, but not necessarily relaying a personal 3 3 20 Recommendation experience. Social Knowledge Containing information that is spreading socially, or becoming general knowledge. 7 6 6 Specific Where facts are listed directly in tweets e.g. prices, times etc. 51 10 47 Information Reflection on Tweet Entertaining The reader finds them amusing. 1 3 2 Shared Sentiment The reader agrees with the author of the tweet. 1 2 1 Relevant Time The time is current. 14 0 2 Location The location is relevant to the query. 6 1 40 Trust Trusted Author The twitter account has a reputation / following. 3 2 6 Trusted Avatar The visual appearance cultivates trust. 2 0 2 Trusted Link A link to a trustworthy recognizable domain. 14 1 7 Links Actionable Link The user can perform a transaction by using the link (heavily dependent on trust). 9 0 0 Media Link The link is to rich multimedia content. 9 0 0 Useful Link The link provides valuable information content, e.g. authoritative information, educated 61 30 43 reviews, and discussions. Meta Tweet Retweeted Lots Its information that others have passed on lots. 4 0 4 Conversation It is part of a series of tweets, and they all need to be useful. 1 4 4 Table 3. The 16 codes and the 6 categories extracted from responses and tweet pairs from the useful tweets. Further, columns 3-5 show how ICWSM 2011 frequently each was associated with the temporal (T1), subjective (T2) and location-sensitive (T3) tasks. Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 13. Social Media Search INSERT VIDEO Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 14. D behaviours documented so far. 4.1 Need-less browsing d Casual Leisure Search Much like the desire to pass time at the television, we saw many examples (some shown in Table 3) of people passing a time typically associated with the ‘browsing’ keyword. 5 h 1) ... I’m not even *doing* anything useful... just browsing eBay aimlessly... f 2) to do list today: browse the Internet until fasting break o time.. S 3) ... just got done eating dinner and my family is watch- ing the football. Rather browse on the laptop i 4) I’m at the dolphin mall. Just browsing. b a Table 3: Example tweets where the browsing activ- d ity is need-less. f t From the collected tweets it is clear that often the inform- s ation-need in these situations are not only fuzzy, but2010 HCIR typi- W cally absent. The aim appears to be focused on the activity, t where the measure of success would be in how much they Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 15. Casual Leisure Search Springer Book Chapter - Award: Outstanding Author Contribution Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 16. About Me Social Media Search My Research Areas Casual Search Search User Interface Design My Framework Information vs Interaction Brain Response Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 17. Search User Interface Design Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 18. Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 19. 4 14 13 1 5 10 8 11 2 9 12 7 6 9 11 3 Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 20. 4 1 14 10 8 12 13 15 11 5 2 6 7 9 16 3 Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 21. Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 22. Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 23. Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 24. Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 25. 4 14 13 1 5 10 8 11 2 9 12 7 6 9 11 3 Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 26. 4 1 Input Features 8 12 Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 27. 4 13 1 5 Control Features 8 11 9 12 7 6 9 11 3 Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 28. 1 5 Informational Features 10 11 2 9 12 7 6 9 11 3 Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 29. 14 13 1 Personalisable Features 2 9 12 6 9 Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 30. SUI Design Taxonomy Input Features Control Features Informational Features Personalisable Features Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 31. SUI Design Taxonomy Input Features Search box Query-by-example Control Features Clusters/Categories Taxonomies Informational Features Facets Social annotations Personalisable Features Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 32. Auto-complete/suggest 4.1. INPUT FEATURES 31 (a) Apple – shows lots of contextual informa- (b) Google – prioritising previous searches. tion and multimedia. Figure 4.1: Examples of AutoComplete. Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 33. SUI Design Taxonomy Input Features Query Suggestions Control Features Corrections Sorting Filters Informational Features Groupings Personalisable Features Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 34. 46 Sorting 4. MODERN SEARCH USER INTERFACES (a) Sorting in Amazon (b) Sorting in Walmart (c) Sorting in Yahoo! (d) Tabular sorting in Scan.co.uk. Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 35. SUI Design Taxonomy Snippets Input Features Usable Info Thumbnails Previews Control Features Relevance Info 2D & 3D Viz Informational Features Guiding numbers Zero-click answers Personalisable Features Signposting Pagination Social Info Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 36. Usable Information Figure 4.17: Snippets in Ciao’s search results can be extended using the ‘more’ link. Figure 4.18: Results in Sainsbury’s groceries search can be added to the shopping basket without having to leave the search page. allows searchers to add items to their cart from the SERP, as shown in Figure 4.18. If searchers are unsure if an item is right for them, however, they can view a page with more information about each product, and buy from there too. Ciao!, in Figure 4.17, also has a range of usable links in their results, including links directly to reviews, pricing options, and to the category that an item belongs in. In Google Image Search, there is a usable link that turns any result into a new search for ‘Similar Images,’ as discussed in the Query-by-example section above. Further, searchers may now Dr Max L. Wilson ‘+1’ a result in a Google SERP, without affecting or interrupting their search. Finally, searching http://cs.nott.ac.uk/~mlw/ in Monday, 2 July 12 23
  • 37. 74 4. MODERN SEARCH USER INTERFACES Social Information Recommendation • Track and reuse information about the behaviour of a systems searchers. Figure 4.39: Amazon often provides feedback to tell searchers what people typically end up actually buying. or even the way they are presented. Further, they can affect the Control features that are provided. For clarification, there has been a lot of work that has focused on algorithmic personalisation for Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12 search, which has a whole book of its own [133]. Instead, this section focuses on different types of
  • 38. SUI Design Taxonomy Input Features Control Features Informational Features Personalisable Features Current-search Persistent Socialised Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 39. 76 4. MODERN SEARCH USER INTERFACES Search Histories Recommendation • Help searchers to return to previously viewed SERPs and results. (a) History of searches in PubMed. (b) History of searches and results in Ama- zon. Figure 4.41: SUIs can help searchers get back to previous searches by keeping a history. Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 40. SUI Design Taxonomy Input Control Informational Personalisable Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 41. The Search Box Input Control Query Only sb Informational Personalisable Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 42. The Search Box Input Control with auto- sb suggest Informational Personalisable Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 43. The Search Box Input Control If query sb is persistent in search box Informational Personalisable Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 44. The Search Box Input Control with auto- suggest, and query left in sb place, and if auto- suggest includes search Informational Personalisable history Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 45. The Sweet Spot for SUI design Input Control Informational Personalisable Good SUI features fit into >1 category Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 46. Search User Interface Design • The Taxonomy • Historical context • Lots of examples • 20 Design Recommendations • Future Trends • Evaluation notes Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 47. About Me Social Media Search My Research Areas Casual Search Search User Interface Design My Framework Information vs Interaction Brain Response Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 48. Search User Interface Design Does Interaction Matter? Does interaction provide significant benefits to users? Or is it just more information and more data? How should companies prioritise investment in these areas? Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 49. Information vs Interaction Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 50. Information vs Interaction Useful info - or Efficient interaction? • Kelly et al (2009) - query suggests > term suggestions • Ruthven (2003) - humans not good at choosing useful ones • Diriye (2009) - slow people down during simple tasks Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 51. Information vs Interaction Useful data? Efficient (from good algorithm) interaction? • Hearst & Pederson (1996) - better task performance • Pirolli et al (1996) - helped to understand corpus Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 52. Information vs Interaction Powerful interaction? or lots of useful data? • Hearst (2006) - careful metadata is always better than clusters • Wilson & schraefel (2009) - good for understanding corpus Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 53. Information vs Interaction Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 54. Information vs Interaction Query data Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 55. Information vs Interaction Clustered Query data algorithms Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 56. Information vs Interaction Clustered Faceted Query data algorithms metadata Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 57. Information vs Interaction Query data Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 58. Information vs Interaction Figure 1: The three interaction conditions in the stu common form. UIC in the middle presents secondar hierarchical clustering. UIF on the right, which inclu terms, or facets, that can be applied to or removed fr - H1: Searchers will be more efficient with more powerful interaction, using the same metadata, when completing search tasks. - H2: Searchers will enjoy more powerful interaction, Query data despite using the same metadata. - H3: Searchers will use query recommendations more when they are presented differently. Dr Max L. Wilson In order to accept or reject these hypotheses, we designed a http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12 3x2 repeated-measures study using two independent
  • 59. 3 Conditions UIQ UIC UIF Figure 1: The three interaction conditions in the study. UIQ on the left presents query suggestions in their Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ common form. UIC in the middle presents secondary query suggestions with an interaction model based on Monday, 2 July 12
  • 60. xperience, standard Two standard types of user study task were used in the he Bing API for the study: 1) a simple lookup task and 2) an exploratory task. op-level entities in All six tasks are shown in Table 1. n, UIC then asked 2 Types of Task The simple lookup tasks had a fixed answer, but the chosen h were represented task description was presented in such a way that the most To create the same likely query would not find the answer without subsequent wsing through the queries or refinements. This approach was chosen to ies, the searchers intrinsically encourage participants to use the IIR features box. As well as on the left of each user interface condition. n selected in the dard terminology to Table 1: Tasks set to participants in the study. em in hierarchy]’. S = Simple, E = Exploratory technically issuing ID S/E Task Description xperience appeared 1 S What is the population of Ohio? fferent sub-clusters y. 2 E Find an appropriate review of “Harry Potter and the Deathly Hallows”. filtering systems, - Compare the rating with the previous film. of metadata made mbination in order 3 S Find the first state of America. s able to flexibly 4 E Deduce the main problems that Steve Jobs f keyword filters in incurred with regards to his health. or and narrow their 5 S What is the iPad 3’s proposed processor name? typically maintain 6 E Explore information related to Apple’s next arch box, and then iPhone, the iPhone 5. results to portions - Note the expected release date. There could well be multiple rumours. elves to using just aimed L. Wilson Dr Max to create a http://cs.nott.ac.uk/~mlw/ to apply 12 Monday, 2 July multiple The exploratory search tasks were chosen to be tasks with
  • 61. 18 People Intro + UI1 UI2 UI3 QA + Consent 2 tasks 2 tasks 2 tasks Debrief Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 62. 18 People Intro + UI1 UI2 UI3 QA + Consent 2 tasks 2 tasks 2 tasks Debrief Queries Refinements Pageviews Time Measures Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 63. 18 People Intro + UI1 UI2 UI3 QA + Consent 2 tasks 2 tasks 2 tasks Debrief Queries Refinements Ease of use Pageviews Task Satisfaction Time Measures Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 64. 18 People Intro + UI1 UI2 UI3 QA + Consent 2 tasks 2 tasks 2 tasks Debrief Queries Quickest Refinements Ease of use Most Enjoyable Pageviews Task Satisfaction Best Design Time Measures Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 65. Simple vs Exploratory Measure S E Diff Time 176s 179s no Queries 1.75 2.33 p<0.05 Pageviews 1.65 2.09 p<0.005 Refinements 2.42 2.45 no Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 66. Log data By UI Measure Simple Exploratory Queries UIQ < UIC & UIF UIQ > UIC & UIF Refinements No diff UIQ & UIC < UIF Visits No diff UIQ > UIC & UIF Time UIQ > UIC < UIF UIC < UIF < UIQ Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 67. Subjective Responses Measure Simple Easy of Use UIQ & UIC > UIF Satisfaction UIQ & UIC > UIF Question UIQ UIC UIF Quickest to correct answer 11 5 2 Most enjoyed during task 4 11 3 Most appealing design 5 11 2 Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 68. What did we actually learn? • We did see different behaviour in all 3 conditions • People were good at simple tasks with original UIQ • People were faster and more effective with UIC and preferred it • People used more filters and viewed fewer pages with UIF but did not like it so much • But is it better or worse behaviour? Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 69. Information vs Interaction Query data Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 70. Information vs Interaction Clustered Faceted Query data algorithms metadata Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 71. Information vs Interaction Facets Clusters Performance Suggestions (hypothetically) Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 72. About Me Social Media Search My Research Areas Casual Search Search User Interface Design My Framework Information vs Interaction Brain Response Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 73. SUI Design + Brain Response Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 74. SUI Design + Brain Response Cognitive Load Theory Total Mental Capacity Easy Task Simple UI Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 75. SUI Design + Brain Response Cognitive Load Theory Total Mental Capacity Hard Task Simple UI Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 76. SUI Design + Brain Response Cognitive Load Theory Total Mental Capacity Hard Task Complex UI Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 77. Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 78. Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 79. Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 80. SUI Design & Brain Response Clear design recommendations Cost vs Gain of adding a feature Ways to reduce cost of a feature Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 81. About Me Social Media Search My Research Areas Casual Search Search User Interface Design My Framework Information vs Interaction Brain Response Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12
  • 82. Dr Max L. Wilson http://cs.nott.ac.uk/~mlw/ Monday, 2 July 12