Title: Designing Web Surveys Dr Lisa Wise
1Designing Web Surveys Dr Lisa Wise
2Overview
- web surveys
- overview of survey design
- when to use surveys
- how to design survey questions
- data analysis and reporting
- data be collection, storage and analysis
- ethical issues to do with handling sensitive or
personal data
3Web-based Surveys
- can do from anywhere with web access
- but samples are biased against those with no
internet access (gt 50 of Aust households are
connected - AC Nielson Mar 2002) - data can be validated before submission
- note that validation is in terms of correct data
type rather than meaningfulness - issue of multiple submissions vs anonymity
- quick data collection phase for researcher
4Web Survey
survey form
processing scripts
database
web server
filesystem
Survey data might go to a database or might be
stored in a file in the file system or could be
emailed to the researcher
email
5Web survey design
- use standard web design principles
- especially ensure that
- survey is not too long (or can be saved)
- information travels correctly between screens
- error messages, if they occur, are meaningful
- all fields are validated and can handle
appropriate input and reject inappropriate input - check field length, data type, illegal characters
6Making a web survey
- put the questions into an HTML form
- get the data formatted for analysis using the
scripting tools of your choice - set up access controls if required
- test across a range of browsers with a range of
good and bad input - ensure security / integrity of your data, but
also of the system collecting your data
7Data collection and storage
- use cgi-mailer or FormMail to email formatted
form variables to researcher - http//www.its.monash.edu.au/web/resources/cgi-mai
ler.html - http//www.its.monash.edu.au/web/resources/formmai
l.html - use a script (eg Perl, PHP) to write to a file on
the filesystem - use a script to put data into a database
- dont put into a database if you are then going
to take it out into SPSS / excel to analyse it !!
8Privacy
- Privacy laws impose quite specific requirements
regarding data storage and security, access and
correction rights, ensuring data is accurate
before use, used only for the purpose for which
it was collected or for which consent has been
given, and disclosure only in limited
circumstances. - Legal requirements may be more detailed than
ethical requirements - http//www.monash.edu.au/resgrant/human-ethics/pri
vacy/index.html
9Handling data
- shared responsibility of technical staff and
researchers to ensure that privacy and
confidentiality requirements are met - information is only de-identified only if all
identifying information has been irreversibly
removed from the record - retention of codes which allow recovery of
identifiable information means record is not
de-identified
10Cost effectiveness
- even a simple web survey takes a couple of days
to implement and test - cost-effectiveness of solution needs to include
real costs - eg email vs database solution might involve 3
days of coding for programmer versus 1 day of
data entry (cutting and pasting from email to
analysis program) for researcher - cost saving or cost shifting?
11Making a survey ...
- technical design requirements covered in
previous slides but what about designing the
actual survey questions ? - there is a whole discipline area focused on
designing surveys and questionnaires and
analysing data collected using these tools - it is not a trivial exercise and committees /
managers are not ideal survey designers
12Overview of survey design
- survey design requires that you have clear
research questions - survey questions need to be focused on answering
your research questions - survey design includes generating the questions
and planning the data analysis - planning the data analysis happens before the
survey is released !!
13When to use surveys
- surveys allow you collect lots of data relatively
quickly and cheaply - lots of poor quality data is never better than
smaller amounts of high quality data - lack of time and money are not excuses for
collecting poor quality data - if you cant
afford to collect reasonable quality data, dont
do the research.
14Personal data
- most surveys request demographic information
about respondents - usually ask for opinions about something
- collecting either type of information has ethical
and privacy implications - survey designers should be familiar with
- http//www.monash.edu.au/resgrant/human-ethics/
- above page has link to Use of Personal Information
15 from Privacy statement on web
- On-line Surveys
- All research surveys conducted on-line by
University staff and /or students which involve
the collection of personal information, will have
received approval from the University's Committee
for Human Ethics in Research. A survey might
ask visitors for unique identifiers (such as
login information).
16Sensitive information
- Do the records or information you are collecting
or using include any sensitive information (such
as political opinion or memberships, religious
beliefs or affiliation, philosophical beliefs
) - note that peoples opinions are considered to be
personal information - be aware of perceived power relationships and
potential access to confidential information
17Classroom and workplace surveys
- work / class surveys have ethical issues related
to perceived power relationships between
respondents and researchers - even if survey does not require specific ethics
committee approval, the ethical and privacy
principles should be considered - go through all the ethics forms whether or not
they need to be submitted
18SCERH ethics forms
- based on National Statement on Ethical Conduct in
Research Involving Humans (NHMRC, 1999) - apply to anyone who is gathering information
about human beings and organisations through
interviewing, surveying, administering
questionnaires, observing human behaviour, taking
human tissue / fluids - there are no exceptions, exclusions or
blanket permissions
19Sampling
- Sampling design and survey design must be tightly
coupled - Who or what are you planning to draw conclusions
about ? - Are they a homogenous group or are there
sub-groupings in the population ? - do you need a stratified sample?
- do you want to compare between groups?
20Sampling
- Surveys usually use convenience samples
- Demographic information is collected to allow
comparisons between target groups - If targeting specific groups is critical to your
research, consider interviewing participants, or
delivering and collecting surveys from selected
participants - convenience sample / random sample
21Sampling
- for statistical techniques, calculate the sample
size required for valid conclusions - consider whether you want lots of general data or
whether you are actually interested in very
specific focussed data - a large survey doesnt give more objective data
than eg a focus group unless it follow rigorous
methodology
22Types of questions
- Open ended
- more difficult to answer and to code or to
analyse objectively - Closed questions
- forced choice (one of two mutually exclusive)
- multiple choice (one of several)
- checklist (one or more of several)
- partially closed (alternatives including Other)
23Questions
- avoid double-barrelled questions
- avoid leading questions
- avoid motherhood statements
- avoid undefined terms
- ensure that your questions lead to responses that
interest you and conversely that responses that
interest you are elicited by your questions
24Order effects
- funnel questions from general to specific
- can use general filter questions to determine
whether respondent should be asked detailed
questions - can have some practice questions
- counterbalance order of presentation
- prevent response sets
- can use alternate forms of questions
25Content analysis
- talk to expert about content analysis
- consider whether you are happier with the
assumptions underlying content analysis or your
research teams ability to interpret and code
responses - if you code responses, take measures of inter-
and intra-rater reliability - do raters make similar / consistent judgements
26Response scales
- response scales should allow people to
communicate what they want - eg there are differences between neutral,
undecided, dont know, dont care, n.a. - anchor points should be bipolar
- need to test this on pilot sample
boring
interesting
fun
boring
27Measurement scales
- Ratio scales (true zero - eg age, height)
- Equal Interval scales
- Thurstone scales, Likert scales, Guttman scales,
semantic differentials - Ordered scale (eg lt18, 18-30, 31-50, gt50)
- Categories (ITS, Med, Sci, Arts )
- Different types of data are amenable to different
analyses consult a statistician!
Albrecht et al, Social Psychology, pp 190-198
28Rating scales
Likert scales should have 5 marked values not 7
strongly disagree
strongly agree
undecided
disagree
agree
The following multiple choice format is still an
interval scale 1. Strongly disagree 2.
Disagree 3. Undecided 4. Agree 5. Strongly agree
29Rating scales
- constructing rating scales to have specific
psychometric properties is labour-intensive and
requires expertise - multiple forms or minimal number of questions?
- group similar questions or intermix?
- alter format to avoid response bias or keep
consistent to avoid response errors? - normalise data or trust participants responses?
- consult a statistician or social scientist
30Measurement
- rating scales should be equal-interval scales to
use parametric statistics - the fact that you have numerical data does not
mean it is accurate or reliable - male (1) - female (0) obvious that 0 and 1 are
codes not numbers - rarely (1) - sometimes (2) - often (3) things
that can be ranked are not necessarily equal
interval scales - can you take the mean?
31Statistics
- Descriptive
- describe a sample distribution in terms of shape,
central tendency and variance - Inferential
- draw inferences about population parameters based
on sample statistics - hypothesis testing - test whether a statement is
true or false based on sample statistics
32Reliability and validity
- Reliability
- test - retest
- surveys are only a snapshot at particular time
- Validity
- face validity
- criterion-based validity
- construct validity
- internal / external validity
33Hypothesis testing
- null hypothesis H0 (no effect of experimental
manipulation) - alternative hypothesis H1 (experimental
manipulation has an effect on this test
statistic) - type 1 error (accept H1 when H0 true)
- type 2 error (accept H0 when H1 true)
34Inferential statistics
- use statistics to make inferences about
populations from your samples - need to be aware of assumptions underlying
statistical tests - eg t-tests and anovas assume continuous
underlying variable, normal distribution and
homogeneity of variance - what happens when assumptions are violated?
35Statistics
- most survey data is not ratio and may not be
interval data (depending on your perspective on
this) - non-parametric statistical tests dont make
assumptions about underlying distribution - dont use statistics to show things you cant see
by eye - statistics help decide if what you can
see is significant
36Correlational studies
- surveys usually correlate opinions with
demographic information - correlations show relationships between variables
but dont address causality - correlation coefficients indicate strength of
relationship (between 0 and 1) - r of .8 explains 64 of variance, or the degree
to which knowing X can predict the value of Y
37But Im not doing real research ...
- I just want to run a quick survey
- This stuff doesnt apply to me cos Im not doing
real research - . . . so what are you doing?
- anyone who is gathering information about human
beings and organisations through interviewing,
surveying, administering questionnaires,
observing human behaviour, no exceptions ...
38What constitutes research?
- If you are going to summarise responses on your
survey and you are going to act on them in any
way, you are doing research - for that research to be meaningful, you need be
aware of proper research methodology and the
limitations of what you are doing - if you cant do it properly, dont do it at all
!! - informed professional opinion can far more
valuable than poor quality survey data
39When to use web surveys
- small amount of non-confidential data from wide
range of people - not good for sensitive or confidential data
- not good where loss of data would be a major
problem - not good for long surveys (usability issues)
- can use web to download a survey which is printed
out and submitted