SlideShare una empresa de Scribd logo
1 de 17
Descargar para leer sin conexión
Search engine user behaviour: How can users
be guided to quality content?
Dirk Lewandowski
University of Applied Sciences Hamburg
dirk.lewandowski@haw-hamburg.de


The Bloomsbury Conference: a joint EUSIDIC - CLSIG Conference
London, 31 March 2008
Agenda




 Situation

 User behaviour in Web search engines

 Quality content in search engines

 Conclusion: What libraries can learn from search engines




1 | Dirk Lewandowski
Agenda




 Situation

 User behaviour in Web search engines

 Quality content in search engines

 Conclusion: What libraries can learn from search engines




2 | Dirk Lewandowski
Situation




 • Web context
    – Search engines dominate web searching
    – Major problem: Relevance.

 • Scientific context
    – Students use general Web search engines for finding scientific content.
    – Search engine vendors created scientific search engines
           – Google Scholar
           – Windows Live Academic
           – Scirus
    – Where do libraries (and their information sources) stand?




3 | Dirk Lewandowski
Agenda




 Situation

 User behaviour in Web search engines

 Quality content in search engines

 Conclusion: What libraries can learn from search engines




4 | Dirk Lewandowski
Users use relatively few cognitive resources in web searching.




 • Queries
    – average length: 1.7 words (German language queries; English language queries
      slightly longer)
    – Approx. 50 percent of queries consist of just one word

 • Search engine results pages (SERPs)
    – 80 percent of users view no more than the first results page (10 results)
    – Users normally only view the first few results („above the fold“)
    – Users only view up to five results per session
    – Session length is less than 15 minutes

 • Users are usually satisfied with the results given.
 • Users expect that all information systems to be as easy as Google (and to
   produce good results for their queries, too).
5 | Dirk Lewandowski
Search engines deal with different query types.




 Query types (Broder, 2002):

 • Informational
     – Looking for information on a certain topic
     – User wants to view a few relevant pages

 • Navigational
    – Looking for a (known) homepage
    – User wants to navigate to this homepage, only one relevant result

 • Transactional
     – Looking for a website to complete a transaction
     – One or more relevant results
     – Transaction can be purchasing a product, downloading a file, etc.
6 | Dirk Lewandowski
Agenda




 Situation

 User behaviour in Web search engines

 Quality content in search engines

 Conclusion: What libraries can learn from search engines




7 | Dirk Lewandowski
Search engines do rate web pages for quality.




 • There’s more than just text matching
    – Link popularity algorithms (PageRank, HITS, etc.)
    – Page freshness
    – User location

 • Adjusting the results to the query
    – Broad queries are best answered with broad pages, specific queries are best
      answered with specific information.
    – There are “must have” pages for some queries.

 • Problem: All these work on a per page basis only.



8 | Dirk Lewandowski
Search engines offer more than a results list to a query.

 Composition of a typical SERP




                                             Additional databases

                                            „Sponsored results“ (ads)



                                             One box results (e.g., news)



                                             Web results




9 | Dirk Lewandowski
Search engines offer additional content from specialised web
 databases.


 • Additional databases
    – News
    – Video
    – Blogs
    – Q&A
    – Books
    – Scientific
    – ...




10 | Dirk Lewandowski
So what is quality content in search engines?




 • Authoritative web pages
    – Official sites (e.g., biography of George W. Bush on whitehouse.gov)
    – Topical authorities (e.g., IMDB.com for films)
    From regular web crawl, results are part of the web results list.

 • Relevant documents from additional databases
    – News, video, etc.
    Additional databases are created through focused crawling.

 • Pointers to external databases
    – Content itself is not indexed by the search engines




11 | Dirk Lewandowski
12 | Dirk Lewandowski
“Universal Search“ ranks results
                        from all databases into the web
                        results list.




13 | Dirk Lewandowski
Agenda




 Situation

 User behaviour in Web search engines

 Quality content in search engines

 Conclusion: What libraries can learn from search engines




14 | Dirk Lewandowski
Libraries and information vendors can learn from web search
 engines.


 • New library search solution seem all to about Web 2.0, but the search problem
   is still not solved!
 • The libraries’ problems with different collections and databases are similar to
   the search engines with their collections.

 • It’s not only about offering quality content, but also about guiding the user to it.
 • Users need one access point to all the content offered.
 • Results from all the library’s collections and databases should be shown within
   one results list.

 • Therefore, the OPAC must become a scientific search engine.
 • This goal can only be achieved with libraries, database vendors and OPAC
   vendors working together.


15 | Dirk Lewandowski
Thank you for your attention.
Prof. Dr.
Dirk Lewandowski

Hamburg University of Applied Sciences
Department Information
Berliner Tor 5
D - 20099 Hamburg
Germany



www.durchdenken.de/lewandowski
E-Mail: dirk.lewandowski@haw-hamburg.de

Más contenido relacionado

La actualidad más candente

Advanced google searching (1)
Advanced google searching (1)Advanced google searching (1)
Advanced google searching (1)
Brenda Crawford
 
The Canadian Linked Data Initiative: Charting a Path to a Linked Data Future
The Canadian Linked Data Initiative: Charting a Path to a Linked Data FutureThe Canadian Linked Data Initiative: Charting a Path to a Linked Data Future
The Canadian Linked Data Initiative: Charting a Path to a Linked Data Future
NASIG
 
Webpage Classification
Webpage ClassificationWebpage Classification
Webpage Classification
PacharaStudio
 
Linda Treffinger presentation for Univ Press as Digital Pub
Linda Treffinger presentation for Univ Press as Digital PubLinda Treffinger presentation for Univ Press as Digital Pub
Linda Treffinger presentation for Univ Press as Digital Pub
avonderharr
 
web page classification
web page classificationweb page classification
web page classification
Nabeelah Ali
 
Web page classification features and algorithms
Web page classification features and algorithmsWeb page classification features and algorithms
Web page classification features and algorithms
unyil96
 

La actualidad más candente (20)

EDS across the pond
EDS across the pondEDS across the pond
EDS across the pond
 
How discovery impacts of users' experiences
How discovery impacts of users' experiencesHow discovery impacts of users' experiences
How discovery impacts of users' experiences
 
Web Scale Discovery Vs Federated Search
Web Scale Discovery Vs Federated SearchWeb Scale Discovery Vs Federated Search
Web Scale Discovery Vs Federated Search
 
Web Scale Discovery Services: Google like search experience
Web Scale Discovery Services: Google like search experienceWeb Scale Discovery Services: Google like search experience
Web Scale Discovery Services: Google like search experience
 
NHSL Digital Library
NHSL Digital LibraryNHSL Digital Library
NHSL Digital Library
 
Harvesting From Many Silos at Web-scale Makes E-content Truly Discoverable
Harvesting From Many Silos at Web-scale Makes E-content Truly  DiscoverableHarvesting From Many Silos at Web-scale Makes E-content Truly  Discoverable
Harvesting From Many Silos at Web-scale Makes E-content Truly Discoverable
 
Advanced google searching (1)
Advanced google searching (1)Advanced google searching (1)
Advanced google searching (1)
 
Text mining 101 what you should know
Text mining 101 what you should knowText mining 101 what you should know
Text mining 101 what you should know
 
Web scale discovery vs google scholar
Web scale discovery vs google scholarWeb scale discovery vs google scholar
Web scale discovery vs google scholar
 
Lectio Praecursoria: Search Interfaces on the Web: Querying and Characterizin...
Lectio Praecursoria: Search Interfaces on the Web: Querying and Characterizin...Lectio Praecursoria: Search Interfaces on the Web: Querying and Characterizin...
Lectio Praecursoria: Search Interfaces on the Web: Querying and Characterizin...
 
The Canadian Linked Data Initiative: Charting a Path to a Linked Data Future
The Canadian Linked Data Initiative: Charting a Path to a Linked Data FutureThe Canadian Linked Data Initiative: Charting a Path to a Linked Data Future
The Canadian Linked Data Initiative: Charting a Path to a Linked Data Future
 
Discovery platforms: Technology, tools and issues
Discovery platforms: Technology, tools and issuesDiscovery platforms: Technology, tools and issues
Discovery platforms: Technology, tools and issues
 
Webpage Classification
Webpage ClassificationWebpage Classification
Webpage Classification
 
Evaluation of web scale discovery services
Evaluation of web scale discovery servicesEvaluation of web scale discovery services
Evaluation of web scale discovery services
 
Linda Treffinger presentation for Univ Press as Digital Pub
Linda Treffinger presentation for Univ Press as Digital PubLinda Treffinger presentation for Univ Press as Digital Pub
Linda Treffinger presentation for Univ Press as Digital Pub
 
web page classification
web page classificationweb page classification
web page classification
 
Webpage classification and Features
Webpage classification and FeaturesWebpage classification and Features
Webpage classification and Features
 
E book acquisition discovery-delivery-support
E book acquisition discovery-delivery-supportE book acquisition discovery-delivery-support
E book acquisition discovery-delivery-support
 
Web page classification features and algorithms
Web page classification features and algorithmsWeb page classification features and algorithms
Web page classification features and algorithms
 
November 19, 2014 NISO Virtual Conference: Can't We All Work Together?: Inter...
November 19, 2014 NISO Virtual Conference: Can't We All Work Together?: Inter...November 19, 2014 NISO Virtual Conference: Can't We All Work Together?: Inter...
November 19, 2014 NISO Virtual Conference: Can't We All Work Together?: Inter...
 

Destacado

Wie beeinflussen Suchmaschinen den Informationsmarkt?
Wie beeinflussen Suchmaschinen den Informationsmarkt?Wie beeinflussen Suchmaschinen den Informationsmarkt?
Wie beeinflussen Suchmaschinen den Informationsmarkt?
Dirk Lewandowski
 
How can library materials be ranked in the OPAC?
How can library materials be ranked in the OPAC?How can library materials be ranked in the OPAC?
How can library materials be ranked in the OPAC?
Dirk Lewandowski
 
Why we need an independent index of the Web
Why we need an independent index of the WebWhy we need an independent index of the Web
Why we need an independent index of the Web
Dirk Lewandowski
 
Ordinary Search Engine Users Assessing Difficulty, Effort and Outcome for Sim...
Ordinary Search Engine Users Assessing Difficulty, Effort and Outcome for Sim...Ordinary Search Engine Users Assessing Difficulty, Effort and Outcome for Sim...
Ordinary Search Engine Users Assessing Difficulty, Effort and Outcome for Sim...
Dirk Lewandowski
 

Destacado (6)

Wie beeinflussen Suchmaschinen den Informationsmarkt?
Wie beeinflussen Suchmaschinen den Informationsmarkt?Wie beeinflussen Suchmaschinen den Informationsmarkt?
Wie beeinflussen Suchmaschinen den Informationsmarkt?
 
Mudlick Mail Presentation - Direct Mail Marketing for the Pet Retail Industry
Mudlick Mail Presentation - Direct Mail Marketing for the Pet Retail IndustryMudlick Mail Presentation - Direct Mail Marketing for the Pet Retail Industry
Mudlick Mail Presentation - Direct Mail Marketing for the Pet Retail Industry
 
How can library materials be ranked in the OPAC?
How can library materials be ranked in the OPAC?How can library materials be ranked in the OPAC?
How can library materials be ranked in the OPAC?
 
Nutzer verstehen
Nutzer verstehenNutzer verstehen
Nutzer verstehen
 
Why we need an independent index of the Web
Why we need an independent index of the WebWhy we need an independent index of the Web
Why we need an independent index of the Web
 
Ordinary Search Engine Users Assessing Difficulty, Effort and Outcome for Sim...
Ordinary Search Engine Users Assessing Difficulty, Effort and Outcome for Sim...Ordinary Search Engine Users Assessing Difficulty, Effort and Outcome for Sim...
Ordinary Search Engine Users Assessing Difficulty, Effort and Outcome for Sim...
 

Similar a Search engine user behaviour: How can users be guided to quality content?

Measuring the quality of web search engines
Measuring the quality of web search enginesMeasuring the quality of web search engines
Measuring the quality of web search engines
Dirk Lewandowski
 
How search engines work
How search engines workHow search engines work
How search engines work
Chinna Botla
 
Internet browsing techniques
Internet browsing techniquesInternet browsing techniques
Internet browsing techniques
Tola Odugbesan
 
Owl presentation
Owl presentationOwl presentation
Owl presentation
Bobby Sr.
 
Webpowerpoint
WebpowerpointWebpowerpoint
Webpowerpoint
tonideegs
 

Similar a Search engine user behaviour: How can users be guided to quality content? (20)

Measuring the quality of web search engines
Measuring the quality of web search enginesMeasuring the quality of web search engines
Measuring the quality of web search engines
 
Introduction to Information Retrieval
Introduction to Information RetrievalIntroduction to Information Retrieval
Introduction to Information Retrieval
 
How search engines work
How search engines workHow search engines work
How search engines work
 
Search Engine Optimization for the Bibliographer
Search Engine Optimization for the BibliographerSearch Engine Optimization for the Bibliographer
Search Engine Optimization for the Bibliographer
 
Search Engine Optimization for the Research Librarian, or, How Librarians Can...
Search Engine Optimization for the Research Librarian, or, How Librarians Can...Search Engine Optimization for the Research Librarian, or, How Librarians Can...
Search Engine Optimization for the Research Librarian, or, How Librarians Can...
 
Semantic Search overview at SSSW 2012
Semantic Search overview at SSSW 2012Semantic Search overview at SSSW 2012
Semantic Search overview at SSSW 2012
 
Information Discovery and Search Strategies for Evidence-Based Research
Information Discovery and Search Strategies for Evidence-Based ResearchInformation Discovery and Search Strategies for Evidence-Based Research
Information Discovery and Search Strategies for Evidence-Based Research
 
Keyword research tools for Search Engine Optimisation (SEO)
Keyword research tools for Search Engine Optimisation (SEO)Keyword research tools for Search Engine Optimisation (SEO)
Keyword research tools for Search Engine Optimisation (SEO)
 
TechFuse 2013 - Break down the walls SharePoint 2013
TechFuse 2013 - Break down the walls SharePoint 2013TechFuse 2013 - Break down the walls SharePoint 2013
TechFuse 2013 - Break down the walls SharePoint 2013
 
Pam goodrich and Joe Gelb - A Journey to Intelligent Content Delivery
Pam goodrich and Joe Gelb - A Journey to Intelligent Content DeliveryPam goodrich and Joe Gelb - A Journey to Intelligent Content Delivery
Pam goodrich and Joe Gelb - A Journey to Intelligent Content Delivery
 
Digital Marketing Course Week 6: Search Engine Optimization (SEO)
Digital Marketing Course Week 6: Search Engine Optimization (SEO)Digital Marketing Course Week 6: Search Engine Optimization (SEO)
Digital Marketing Course Week 6: Search Engine Optimization (SEO)
 
Internet browsing techniques
Internet browsing techniquesInternet browsing techniques
Internet browsing techniques
 
Data analytics and SEO to grow your international business | John Caldwell | ...
Data analytics and SEO to grow your international business | John Caldwell | ...Data analytics and SEO to grow your international business | John Caldwell | ...
Data analytics and SEO to grow your international business | John Caldwell | ...
 
Riley-o.com
Riley-o.comRiley-o.com
Riley-o.com
 
Search Engines
Search EnginesSearch Engines
Search Engines
 
Owl presentation
Owl presentationOwl presentation
Owl presentation
 
How We Incrementally Improved Search
How We Incrementally Improved SearchHow We Incrementally Improved Search
How We Incrementally Improved Search
 
Alternatives to Google
Alternatives to GoogleAlternatives to Google
Alternatives to Google
 
Lost in the Net? Navigating Search Engines
Lost in the Net?  Navigating Search EnginesLost in the Net?  Navigating Search Engines
Lost in the Net? Navigating Search Engines
 
Webpowerpoint
WebpowerpointWebpowerpoint
Webpowerpoint
 

Más de Dirk Lewandowski

In a World of Biased Search Engines
In a World of Biased Search EnginesIn a World of Biased Search Engines
In a World of Biased Search Engines
Dirk Lewandowski
 
Künstliche Intelligenz bei Suchmaschinen
Künstliche Intelligenz bei SuchmaschinenKünstliche Intelligenz bei Suchmaschinen
Künstliche Intelligenz bei Suchmaschinen
Dirk Lewandowski
 
Analysing search engine data on socially relevant topics
Analysing search engine data on socially relevant topicsAnalysing search engine data on socially relevant topics
Analysing search engine data on socially relevant topics
Dirk Lewandowski
 
Neue Trends: Google, SEO und Co.?
Neue Trends: Google, SEO und Co.?Neue Trends: Google, SEO und Co.?
Neue Trends: Google, SEO und Co.?
Dirk Lewandowski
 
Internet-Suchmaschinen: Aktueller Stand und Entwicklungsperspektiven
Internet-Suchmaschinen: Aktueller Stand und EntwicklungsperspektivenInternet-Suchmaschinen: Aktueller Stand und Entwicklungsperspektiven
Internet-Suchmaschinen: Aktueller Stand und Entwicklungsperspektiven
Dirk Lewandowski
 
Verwendung von Skalenbewertungen in der Evaluierung von Suchmaschinen
Verwendung von Skalenbewertungen in der Evaluierung von SuchmaschinenVerwendung von Skalenbewertungen in der Evaluierung von Suchmaschinen
Verwendung von Skalenbewertungen in der Evaluierung von Suchmaschinen
Dirk Lewandowski
 
Neue Entwicklungen bei Suchmaschinen und deren Relevanz für Bibliotheken (3)
Neue Entwicklungen bei Suchmaschinen und deren Relevanz für Bibliotheken (3)Neue Entwicklungen bei Suchmaschinen und deren Relevanz für Bibliotheken (3)
Neue Entwicklungen bei Suchmaschinen und deren Relevanz für Bibliotheken (3)
Dirk Lewandowski
 
Neue Entwicklungen bei Suchmaschinen und deren Relevanz für Bibliotheken (2)
Neue Entwicklungen bei Suchmaschinen und deren Relevanz für Bibliotheken (2)Neue Entwicklungen bei Suchmaschinen und deren Relevanz für Bibliotheken (2)
Neue Entwicklungen bei Suchmaschinen und deren Relevanz für Bibliotheken (2)
Dirk Lewandowski
 
Neue Entwicklungen bei Suchmaschinen und deren Relevanz für Bibliotheken (1)
Neue Entwicklungen bei Suchmaschinen und deren Relevanz für Bibliotheken (1)Neue Entwicklungen bei Suchmaschinen und deren Relevanz für Bibliotheken (1)
Neue Entwicklungen bei Suchmaschinen und deren Relevanz für Bibliotheken (1)
Dirk Lewandowski
 

Más de Dirk Lewandowski (20)

The Need for and fundamentals of an Open Web Index
The Need for and fundamentals of an Open Web IndexThe Need for and fundamentals of an Open Web Index
The Need for and fundamentals of an Open Web Index
 
In a World of Biased Search Engines
In a World of Biased Search EnginesIn a World of Biased Search Engines
In a World of Biased Search Engines
 
EIN ANDERER BLICK AUF GOOGLE: Wie interpretieren Nutzer/innen die Suchergebni...
EIN ANDERER BLICK AUF GOOGLE: Wie interpretieren Nutzer/innen die Suchergebni...EIN ANDERER BLICK AUF GOOGLE: Wie interpretieren Nutzer/innen die Suchergebni...
EIN ANDERER BLICK AUF GOOGLE: Wie interpretieren Nutzer/innen die Suchergebni...
 
Künstliche Intelligenz bei Suchmaschinen
Künstliche Intelligenz bei SuchmaschinenKünstliche Intelligenz bei Suchmaschinen
Künstliche Intelligenz bei Suchmaschinen
 
Analysing search engine data on socially relevant topics
Analysing search engine data on socially relevant topicsAnalysing search engine data on socially relevant topics
Analysing search engine data on socially relevant topics
 
Google Assistant, Alexa & Co.: Wie sich die Welt der Suche verändert
Google Assistant, Alexa & Co.: Wie sich die Welt der Suche verändertGoogle Assistant, Alexa & Co.: Wie sich die Welt der Suche verändert
Google Assistant, Alexa & Co.: Wie sich die Welt der Suche verändert
 
Suchverhalten und die Grenzen von Suchdiensten
Suchverhalten und die Grenzen von SuchdienstenSuchverhalten und die Grenzen von Suchdiensten
Suchverhalten und die Grenzen von Suchdiensten
 
Können Nutzer echte Suchergebnisse von Werbung in Suchmaschinen unterscheiden?
Können Nutzer echte Suchergebnisse von Werbung in Suchmaschinen unterscheiden?Können Nutzer echte Suchergebnisse von Werbung in Suchmaschinen unterscheiden?
Können Nutzer echte Suchergebnisse von Werbung in Suchmaschinen unterscheiden?
 
Are Ads on Google search engine results pages labeled clearly enough?
Are Ads on Google search engine results pages labeled clearly enough?Are Ads on Google search engine results pages labeled clearly enough?
Are Ads on Google search engine results pages labeled clearly enough?
 
Search Engine Bias - sollen wir Googles Suchergebnissen vertrauen?
Search Engine Bias - sollen wir Googles Suchergebnissen vertrauen?Search Engine Bias - sollen wir Googles Suchergebnissen vertrauen?
Search Engine Bias - sollen wir Googles Suchergebnissen vertrauen?
 
Wie Suchmaschinen die Inhalte des Web interpretieren
Wie Suchmaschinen die Inhalte des Web interpretierenWie Suchmaschinen die Inhalte des Web interpretieren
Wie Suchmaschinen die Inhalte des Web interpretieren
 
Perspektiven eines Open Web Index
Perspektiven eines Open Web IndexPerspektiven eines Open Web Index
Perspektiven eines Open Web Index
 
Wie entwickeln sich Suchmaschinen heute, was kommt morgen?
Wie entwickeln sich Suchmaschinen heute, was kommt morgen?Wie entwickeln sich Suchmaschinen heute, was kommt morgen?
Wie entwickeln sich Suchmaschinen heute, was kommt morgen?
 
Suchmaschinen verstehen
Suchmaschinen verstehenSuchmaschinen verstehen
Suchmaschinen verstehen
 
Neue Trends: Google, SEO und Co.?
Neue Trends: Google, SEO und Co.?Neue Trends: Google, SEO und Co.?
Neue Trends: Google, SEO und Co.?
 
Internet-Suchmaschinen: Aktueller Stand und Entwicklungsperspektiven
Internet-Suchmaschinen: Aktueller Stand und EntwicklungsperspektivenInternet-Suchmaschinen: Aktueller Stand und Entwicklungsperspektiven
Internet-Suchmaschinen: Aktueller Stand und Entwicklungsperspektiven
 
Verwendung von Skalenbewertungen in der Evaluierung von Suchmaschinen
Verwendung von Skalenbewertungen in der Evaluierung von SuchmaschinenVerwendung von Skalenbewertungen in der Evaluierung von Suchmaschinen
Verwendung von Skalenbewertungen in der Evaluierung von Suchmaschinen
 
Neue Entwicklungen bei Suchmaschinen und deren Relevanz für Bibliotheken (3)
Neue Entwicklungen bei Suchmaschinen und deren Relevanz für Bibliotheken (3)Neue Entwicklungen bei Suchmaschinen und deren Relevanz für Bibliotheken (3)
Neue Entwicklungen bei Suchmaschinen und deren Relevanz für Bibliotheken (3)
 
Neue Entwicklungen bei Suchmaschinen und deren Relevanz für Bibliotheken (2)
Neue Entwicklungen bei Suchmaschinen und deren Relevanz für Bibliotheken (2)Neue Entwicklungen bei Suchmaschinen und deren Relevanz für Bibliotheken (2)
Neue Entwicklungen bei Suchmaschinen und deren Relevanz für Bibliotheken (2)
 
Neue Entwicklungen bei Suchmaschinen und deren Relevanz für Bibliotheken (1)
Neue Entwicklungen bei Suchmaschinen und deren Relevanz für Bibliotheken (1)Neue Entwicklungen bei Suchmaschinen und deren Relevanz für Bibliotheken (1)
Neue Entwicklungen bei Suchmaschinen und deren Relevanz für Bibliotheken (1)
 

Último

IAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI SolutionsIAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI Solutions
Enterprise Knowledge
 
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptxEIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
Earley Information Science
 
CNv6 Instructor Chapter 6 Quality of Service
CNv6 Instructor Chapter 6 Quality of ServiceCNv6 Instructor Chapter 6 Quality of Service
CNv6 Instructor Chapter 6 Quality of Service
giselly40
 

Último (20)

04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
 
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
 
A Call to Action for Generative AI in 2024
A Call to Action for Generative AI in 2024A Call to Action for Generative AI in 2024
A Call to Action for Generative AI in 2024
 
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
 
Presentation on how to chat with PDF using ChatGPT code interpreter
Presentation on how to chat with PDF using ChatGPT code interpreterPresentation on how to chat with PDF using ChatGPT code interpreter
Presentation on how to chat with PDF using ChatGPT code interpreter
 
Data Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt RobisonData Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt Robison
 
Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...
Workshop - Best of Both Worlds_ Combine  KG and Vector search for  enhanced R...Workshop - Best of Both Worlds_ Combine  KG and Vector search for  enhanced R...
Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...
 
Finology Group – Insurtech Innovation Award 2024
Finology Group – Insurtech Innovation Award 2024Finology Group – Insurtech Innovation Award 2024
Finology Group – Insurtech Innovation Award 2024
 
Slack Application Development 101 Slides
Slack Application Development 101 SlidesSlack Application Development 101 Slides
Slack Application Development 101 Slides
 
IAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI SolutionsIAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI Solutions
 
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptxEIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
 
Understanding Discord NSFW Servers A Guide for Responsible Users.pdf
Understanding Discord NSFW Servers A Guide for Responsible Users.pdfUnderstanding Discord NSFW Servers A Guide for Responsible Users.pdf
Understanding Discord NSFW Servers A Guide for Responsible Users.pdf
 
The Role of Taxonomy and Ontology in Semantic Layers - Heather Hedden.pdf
The Role of Taxonomy and Ontology in Semantic Layers - Heather Hedden.pdfThe Role of Taxonomy and Ontology in Semantic Layers - Heather Hedden.pdf
The Role of Taxonomy and Ontology in Semantic Layers - Heather Hedden.pdf
 
Raspberry Pi 5: Challenges and Solutions in Bringing up an OpenGL/Vulkan Driv...
Raspberry Pi 5: Challenges and Solutions in Bringing up an OpenGL/Vulkan Driv...Raspberry Pi 5: Challenges and Solutions in Bringing up an OpenGL/Vulkan Driv...
Raspberry Pi 5: Challenges and Solutions in Bringing up an OpenGL/Vulkan Driv...
 
The 7 Things I Know About Cyber Security After 25 Years | April 2024
The 7 Things I Know About Cyber Security After 25 Years | April 2024The 7 Things I Know About Cyber Security After 25 Years | April 2024
The 7 Things I Know About Cyber Security After 25 Years | April 2024
 
Breaking the Kubernetes Kill Chain: Host Path Mount
Breaking the Kubernetes Kill Chain: Host Path MountBreaking the Kubernetes Kill Chain: Host Path Mount
Breaking the Kubernetes Kill Chain: Host Path Mount
 
CNv6 Instructor Chapter 6 Quality of Service
CNv6 Instructor Chapter 6 Quality of ServiceCNv6 Instructor Chapter 6 Quality of Service
CNv6 Instructor Chapter 6 Quality of Service
 
Driving Behavioral Change for Information Management through Data-Driven Gree...
Driving Behavioral Change for Information Management through Data-Driven Gree...Driving Behavioral Change for Information Management through Data-Driven Gree...
Driving Behavioral Change for Information Management through Data-Driven Gree...
 
08448380779 Call Girls In Friends Colony Women Seeking Men
08448380779 Call Girls In Friends Colony Women Seeking Men08448380779 Call Girls In Friends Colony Women Seeking Men
08448380779 Call Girls In Friends Colony Women Seeking Men
 
Scaling API-first – The story of a global engineering organization
Scaling API-first – The story of a global engineering organizationScaling API-first – The story of a global engineering organization
Scaling API-first – The story of a global engineering organization
 

Search engine user behaviour: How can users be guided to quality content?

  • 1. Search engine user behaviour: How can users be guided to quality content? Dirk Lewandowski University of Applied Sciences Hamburg dirk.lewandowski@haw-hamburg.de The Bloomsbury Conference: a joint EUSIDIC - CLSIG Conference London, 31 March 2008
  • 2. Agenda Situation User behaviour in Web search engines Quality content in search engines Conclusion: What libraries can learn from search engines 1 | Dirk Lewandowski
  • 3. Agenda Situation User behaviour in Web search engines Quality content in search engines Conclusion: What libraries can learn from search engines 2 | Dirk Lewandowski
  • 4. Situation • Web context – Search engines dominate web searching – Major problem: Relevance. • Scientific context – Students use general Web search engines for finding scientific content. – Search engine vendors created scientific search engines – Google Scholar – Windows Live Academic – Scirus – Where do libraries (and their information sources) stand? 3 | Dirk Lewandowski
  • 5. Agenda Situation User behaviour in Web search engines Quality content in search engines Conclusion: What libraries can learn from search engines 4 | Dirk Lewandowski
  • 6. Users use relatively few cognitive resources in web searching. • Queries – average length: 1.7 words (German language queries; English language queries slightly longer) – Approx. 50 percent of queries consist of just one word • Search engine results pages (SERPs) – 80 percent of users view no more than the first results page (10 results) – Users normally only view the first few results („above the fold“) – Users only view up to five results per session – Session length is less than 15 minutes • Users are usually satisfied with the results given. • Users expect that all information systems to be as easy as Google (and to produce good results for their queries, too). 5 | Dirk Lewandowski
  • 7. Search engines deal with different query types. Query types (Broder, 2002): • Informational – Looking for information on a certain topic – User wants to view a few relevant pages • Navigational – Looking for a (known) homepage – User wants to navigate to this homepage, only one relevant result • Transactional – Looking for a website to complete a transaction – One or more relevant results – Transaction can be purchasing a product, downloading a file, etc. 6 | Dirk Lewandowski
  • 8. Agenda Situation User behaviour in Web search engines Quality content in search engines Conclusion: What libraries can learn from search engines 7 | Dirk Lewandowski
  • 9. Search engines do rate web pages for quality. • There’s more than just text matching – Link popularity algorithms (PageRank, HITS, etc.) – Page freshness – User location • Adjusting the results to the query – Broad queries are best answered with broad pages, specific queries are best answered with specific information. – There are “must have” pages for some queries. • Problem: All these work on a per page basis only. 8 | Dirk Lewandowski
  • 10. Search engines offer more than a results list to a query. Composition of a typical SERP Additional databases „Sponsored results“ (ads) One box results (e.g., news) Web results 9 | Dirk Lewandowski
  • 11. Search engines offer additional content from specialised web databases. • Additional databases – News – Video – Blogs – Q&A – Books – Scientific – ... 10 | Dirk Lewandowski
  • 12. So what is quality content in search engines? • Authoritative web pages – Official sites (e.g., biography of George W. Bush on whitehouse.gov) – Topical authorities (e.g., IMDB.com for films) From regular web crawl, results are part of the web results list. • Relevant documents from additional databases – News, video, etc. Additional databases are created through focused crawling. • Pointers to external databases – Content itself is not indexed by the search engines 11 | Dirk Lewandowski
  • 13. 12 | Dirk Lewandowski
  • 14. “Universal Search“ ranks results from all databases into the web results list. 13 | Dirk Lewandowski
  • 15. Agenda Situation User behaviour in Web search engines Quality content in search engines Conclusion: What libraries can learn from search engines 14 | Dirk Lewandowski
  • 16. Libraries and information vendors can learn from web search engines. • New library search solution seem all to about Web 2.0, but the search problem is still not solved! • The libraries’ problems with different collections and databases are similar to the search engines with their collections. • It’s not only about offering quality content, but also about guiding the user to it. • Users need one access point to all the content offered. • Results from all the library’s collections and databases should be shown within one results list. • Therefore, the OPAC must become a scientific search engine. • This goal can only be achieved with libraries, database vendors and OPAC vendors working together. 15 | Dirk Lewandowski
  • 17. Thank you for your attention. Prof. Dr. Dirk Lewandowski Hamburg University of Applied Sciences Department Information Berliner Tor 5 D - 20099 Hamburg Germany www.durchdenken.de/lewandowski E-Mail: dirk.lewandowski@haw-hamburg.de