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Yana Kuchirko
@mslogophiliac

Will Evans
@semanticwill
"They've done studies, you
           know. 60% of the time, it
           works every time. ”
                                          - Brian Fantana




03/18/12     Will Evans & Yana Kuchirko             2
Surveys Aren’t Objective




They are created by people who are biased and analyze their
       results based on their own (mis)perceptions.

03/18/12                Will Evans & Yana Kuchirko        3
Epistemological Dead End?




              No. Awareness that the researcher plays an integral
              role in the process of measuring any given
              phenomena by deciding how to measure is key.

              There are ways to minimize researcher bias by
              creating better questions.
03/18/12                   Will Evans & Yana Kuchirko         4
Methods are not “just methods”




How you measure what you are studying shapes what you find.

 03/18/12               Will Evans & Yana Kuchirko       5
Let’s say you are studying…




              How often teenagers use your website

03/18/12                   Will Evans & Yana Kuchirko   6
You might ask teenagers…

“How often do you my website?”

c.Very rarely
d.Rarely
e.Occasionally
f.Frequently
g.Very frequently

 Response options source: http://www.dataguru.org
    03/18/12                                Will Evans & Yana Kuchirko   7
You might ask teenagers…

“How often do you my website?”

c.Very rarely
d.Rarely                                                         And what’s wrong
e.Occasionally                                                   with these????
f.Frequently
g.Very frequently

 Response options source: http://www.dataguru.org
    03/18/12                                Will Evans & Yana Kuchirko              8
You might ask teenagers…

“How often do you my website?” !  !!
                           VI TY
                     EC TI
c.Very rarely
                  BJ
d.Rarely       SU           And what’s wrong
e.Occasionally                                                   with these????
f.Frequently
g.Very frequently

 Response options source: http://www.dataguru.org
    03/18/12                                Will Evans & Yana Kuchirko            9
“Hmmm, for me “frequently”
                really means….”




     A few times a week                                A few times a day

So what are we really measuring? NOISE.
 03/18/12                 Will Evans & Yana Kuchirko                       10
What is “noise”?




What we observe…

 03/18/12        Will Evans & Yana Kuchirko   11
What is “noise”?

     We WANT this!




 We DON’T WANT this!


03/18/12                  Will Evans & Yana Kuchirko   12
An imaginary scenario
Let’s really stretch our thinking a bit here to
provide a more concrete understanding of
“noise” in your data.

Imagine you have AT&T phone service and
you’re trying to make a call. The signal isn’t
clearly going through and you end up hearing
everything but the other person’s voice.
Frustrating, right? Thank God this is only a
pretend scenario.
03/18/12             Will Evans & Yana Kuchirko   13
How is AT&T related to “Noise”?




When you develop bad questions, you don’t
“hear” the message of your data clearly.
  03/18/12         Will Evans & Yana Kuchirko   14
So…why is “noise” bad???
• Badly structured and poorly worded
  questions that obfuscate meaning for
  participants provide bad data.

• Bad data
      – Doesn’t answer your research question
      – Makes it difficult to interpret results
      – Is pretty much useless.

03/18/12                Will Evans & Yana Kuchirko   15
More bad examples
of frequently used response options
  a.   Completely satisfied                       a.   Totally like
  b.   Very satisfied                             b.   Very much like
  c.   Fairly well satisfied                      c.   Moderately like
  d.   Somewhat dissatisfied                      d.   Somewhat like
  e.   Very dissatisfied                          e.   Not like




  What’s the difference between                        What’s the difference between
  “fairly well” and “somewhat”?                    “moderately like” and “somewhat like”?




03/18/12                          Will Evans & Yana Kuchirko                         16
More bad examples
of frequently used response options
  a.   Completely satisfied                       a.   Totally like
  b.   Very satisfied                             b.   Very much like
  c.   Fairly well satisfied                      c.   Moderately like
  d.   Somewhat dissatisfied                      d.   Somewhat like
  e.   Very dissatisfied                          e.   Not like




  What’s the difference between                        What’s the difference between
  “fairly well” and “somewhat”?                    “moderately like” and “somewhat like”?




                                  Semantics
03/18/12                          Will Evans & Yana Kuchirko                         17
Words like….
 •   Sometimes
 •   Often
 •   Moderately
 •   Very
 •   Not very much


                                                          Are subjective
            = they mean different things for different people

 03/18/12                    Will Evans & Yana Kuchirko                18
A better alternative?




Actually asking people how often they do certain
                   activities.
 03/18/12           Will Evans & Yana Kuchirko   19
In order to gather objective data…
…your questions must mean the same thing
for everyone.

How often do you use my website?
d.Never
e.A few times a year
f.Once a month
g.2-3 times a month
h.Once a week
i.A few times a week
j.Every day
                       “Never” means never for everyone!
03/18/12                        Will Evans & Yana Kuchirko   20
Importance of “Anchors”




Responses options serve as “anchors” for each question,
determining the “location” of each responses as qualitatively
distinct from the other.

   03/18/12                Will Evans & Yana Kuchirko       21
Importance of “Anchors”
Responses options serve as “anchors” for each
question, determining the “location” of each
responses as qualitatively distinct from the other.




  Strongly                                                    Strongly
  disagree    Disagree       Neutral                  Agree    Agree




03/18/12                 Will Evans & Yana Kuchirko                      22
(Ideal) Response Symmetry
• Good questions aim to have symmetrical
  quantitative/qualitative distance between
  anchors
    a.     Never
    b.     A few times a year
                                           The distance between “never” and
    c.     Once a month
                                           “a few times a year” is proportionate to
    d.     2-3 times a month               “every day” and “a few times a week”.
    e.     Once a week
    f.     A few times a week
    g.     Every day


03/18/12                        Will Evans & Yana Kuchirko                            23
Adherence to Logic & Linearity




People are accustomed to paradigms that are
        intuitive, and often “linear”.

           Anchors should not be the exception.
03/18/12                 Will Evans & Yana Kuchirko   24
Intuitive Anchor Directions

 Never                                             Always

Disagree                                           Agree


Very poor                                          Very good

Not very                                           Very
important                                          Important
 03/18/12             Will Evans & Yana Kuchirko            25
Value of Clarity




If questions are clear and concise, participants would
spend less time analyzing the questions themselves and
more time on answering them.                        Mystic Arts, LLC



   03/18/12            Will Evans & Yana Kuchirko               26
So do good questions guarantee valid
             results?
• No. But good questions offer more
  assurance that you are listening to signal
  and not the noise.

• But answering your research question can be
  done in other ways
           • Behavioral Observations
           • Open ended qualitative questions
           • Many more…

03/18/12                    Will Evans & Yana Kuchirko   27
The End.

           So was this presentation simply
            oh-my-fucking-god-awesome?



                                    a. Hell yeah!
                                    b. Definitely!
                                    c. Totally rocked!

03/18/12              Will Evans & Yana Kuchirko         28
Thanks!

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How to create surveys that don't suck

  • 2. "They've done studies, you know. 60% of the time, it works every time. ” - Brian Fantana 03/18/12 Will Evans & Yana Kuchirko 2
  • 3. Surveys Aren’t Objective They are created by people who are biased and analyze their results based on their own (mis)perceptions. 03/18/12 Will Evans & Yana Kuchirko 3
  • 4. Epistemological Dead End? No. Awareness that the researcher plays an integral role in the process of measuring any given phenomena by deciding how to measure is key. There are ways to minimize researcher bias by creating better questions. 03/18/12 Will Evans & Yana Kuchirko 4
  • 5. Methods are not “just methods” How you measure what you are studying shapes what you find. 03/18/12 Will Evans & Yana Kuchirko 5
  • 6. Let’s say you are studying… How often teenagers use your website 03/18/12 Will Evans & Yana Kuchirko 6
  • 7. You might ask teenagers… “How often do you my website?” c.Very rarely d.Rarely e.Occasionally f.Frequently g.Very frequently Response options source: http://www.dataguru.org 03/18/12 Will Evans & Yana Kuchirko 7
  • 8. You might ask teenagers… “How often do you my website?” c.Very rarely d.Rarely And what’s wrong e.Occasionally with these???? f.Frequently g.Very frequently Response options source: http://www.dataguru.org 03/18/12 Will Evans & Yana Kuchirko 8
  • 9. You might ask teenagers… “How often do you my website?” ! !! VI TY EC TI c.Very rarely BJ d.Rarely SU And what’s wrong e.Occasionally with these???? f.Frequently g.Very frequently Response options source: http://www.dataguru.org 03/18/12 Will Evans & Yana Kuchirko 9
  • 10. “Hmmm, for me “frequently” really means….” A few times a week A few times a day So what are we really measuring? NOISE. 03/18/12 Will Evans & Yana Kuchirko 10
  • 11. What is “noise”? What we observe… 03/18/12 Will Evans & Yana Kuchirko 11
  • 12. What is “noise”? We WANT this! We DON’T WANT this! 03/18/12 Will Evans & Yana Kuchirko 12
  • 13. An imaginary scenario Let’s really stretch our thinking a bit here to provide a more concrete understanding of “noise” in your data. Imagine you have AT&T phone service and you’re trying to make a call. The signal isn’t clearly going through and you end up hearing everything but the other person’s voice. Frustrating, right? Thank God this is only a pretend scenario. 03/18/12 Will Evans & Yana Kuchirko 13
  • 14. How is AT&T related to “Noise”? When you develop bad questions, you don’t “hear” the message of your data clearly. 03/18/12 Will Evans & Yana Kuchirko 14
  • 15. So…why is “noise” bad??? • Badly structured and poorly worded questions that obfuscate meaning for participants provide bad data. • Bad data – Doesn’t answer your research question – Makes it difficult to interpret results – Is pretty much useless. 03/18/12 Will Evans & Yana Kuchirko 15
  • 16. More bad examples of frequently used response options a. Completely satisfied a. Totally like b. Very satisfied b. Very much like c. Fairly well satisfied c. Moderately like d. Somewhat dissatisfied d. Somewhat like e. Very dissatisfied e. Not like What’s the difference between What’s the difference between “fairly well” and “somewhat”? “moderately like” and “somewhat like”? 03/18/12 Will Evans & Yana Kuchirko 16
  • 17. More bad examples of frequently used response options a. Completely satisfied a. Totally like b. Very satisfied b. Very much like c. Fairly well satisfied c. Moderately like d. Somewhat dissatisfied d. Somewhat like e. Very dissatisfied e. Not like What’s the difference between What’s the difference between “fairly well” and “somewhat”? “moderately like” and “somewhat like”? Semantics 03/18/12 Will Evans & Yana Kuchirko 17
  • 18. Words like…. • Sometimes • Often • Moderately • Very • Not very much Are subjective = they mean different things for different people 03/18/12 Will Evans & Yana Kuchirko 18
  • 19. A better alternative? Actually asking people how often they do certain activities. 03/18/12 Will Evans & Yana Kuchirko 19
  • 20. In order to gather objective data… …your questions must mean the same thing for everyone. How often do you use my website? d.Never e.A few times a year f.Once a month g.2-3 times a month h.Once a week i.A few times a week j.Every day “Never” means never for everyone! 03/18/12 Will Evans & Yana Kuchirko 20
  • 21. Importance of “Anchors” Responses options serve as “anchors” for each question, determining the “location” of each responses as qualitatively distinct from the other. 03/18/12 Will Evans & Yana Kuchirko 21
  • 22. Importance of “Anchors” Responses options serve as “anchors” for each question, determining the “location” of each responses as qualitatively distinct from the other. Strongly Strongly disagree Disagree Neutral Agree Agree 03/18/12 Will Evans & Yana Kuchirko 22
  • 23. (Ideal) Response Symmetry • Good questions aim to have symmetrical quantitative/qualitative distance between anchors a. Never b. A few times a year The distance between “never” and c. Once a month “a few times a year” is proportionate to d. 2-3 times a month “every day” and “a few times a week”. e. Once a week f. A few times a week g. Every day 03/18/12 Will Evans & Yana Kuchirko 23
  • 24. Adherence to Logic & Linearity People are accustomed to paradigms that are intuitive, and often “linear”. Anchors should not be the exception. 03/18/12 Will Evans & Yana Kuchirko 24
  • 25. Intuitive Anchor Directions Never Always Disagree Agree Very poor Very good Not very Very important Important 03/18/12 Will Evans & Yana Kuchirko 25
  • 26. Value of Clarity If questions are clear and concise, participants would spend less time analyzing the questions themselves and more time on answering them. Mystic Arts, LLC 03/18/12 Will Evans & Yana Kuchirko 26
  • 27. So do good questions guarantee valid results? • No. But good questions offer more assurance that you are listening to signal and not the noise. • But answering your research question can be done in other ways • Behavioral Observations • Open ended qualitative questions • Many more… 03/18/12 Will Evans & Yana Kuchirko 27
  • 28. The End. So was this presentation simply oh-my-fucking-god-awesome? a. Hell yeah! b. Definitely! c. Totally rocked! 03/18/12 Will Evans & Yana Kuchirko 28