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Surveys

  • one of the most commonly used research techniques.
  • strength: large number of responses quickly.
  • respondents can be geographically dispersed.
  • can help capture the "big picture"

Survey Pros and Cons

Pros

  • easy to collect data from a large number of people.
  • do not require (advanced) tools for development.
  • can be distributed easily.

Cons

  • not very good at getting detailed data.
  • can lead to biased data. (recall bias: subject to interpretation or memory)
  • not possible to ask follow up questions.

population of interest == target population == targeted users (in hci)

the population of interest is filtered based on inclusion criteria such as profession, etc...

Probabilistic Sampling

in a probability sample it is known exactly how likely it is to select a participant from the sample.

Stratification

  • A stratified sample is when you divide your entire population in separate subpopulations, known as strata.
  • A separate sample is drawn within each subpopulation.
  • stratification can help to have subgroups of the same size.

Example:

  • Survey of BIT students:
  • Subpopulations: first-years, second-years, third-years
  • Each year has different number of students, but stratified sample invites the same number from each year.

Non-probabilistic Sampling

  • goal in HCI is not usually population estimates.
  • usually population is not well defined.

Non probabilistic sampling examples:

  • volunteer opt-in panels.

  • self-selected surveys.

  • snowball recruiting. (respondents recruit other people)

  • ask about demographic data to confirm validity.

oversampling: asking a large amount of people relative to the estimated population size, to avoid biases.

  • Random sampling of usage:

    • user is asked to fill a survey every 10th time they load a website.
  • Self selected survey:

    • respondent finds the survey online.
    • most natural data collection method.

Developing Survey Questions

  • open ended questions.
  • close ended questions
    • scale (excellent - poor)
    • yes or no questions.

Common problems

  • two questions in the same question.
  • use of negation
  • biased wording
  • hot button words

Overall Structure

  • instructions
  • nice layout
  • not too long

Online vs Paper

different people will have different access to both. So depends on the audience.

Testing

  1. review by colleagues and analysts
  2. Interviews with potential respondents.
  3. pilot study of the survey tool and implementation procedures.

How to increase response rate:

  • offer reward
  • introductory letter
  • ease of submitting
  • multiple contacts with respondent

Data analysis

  1. quantitative and qualitative data is separated
  2. data is cleaned: removed invalid responses.
  3. if it is quantitative data use descriptive statistics
  4. if it is qualitative data use content analysis (chapter 11)