I have a set of agreement statements designed to measure staff engagement. The data has very low variability between variables (statements) and within respondents. All statements very negatively skewed. Each statement far from normally distributed. Most claims to be happy with all statements. If i run a factor analysis there is basically one factor with ev gt 1. CFA in Rs lavaan also struggles. I tried a log10 transformation to help the normality issue with little improvement.
I think the underlying issue is that the statements are not "contentious" enough. What tests are available to analyse non-normal, low variability data? Or is the only solution to measure issues in such a way as to get more variability and more normal data distributions? Any comments on "boring" low variability data and poor normality welcome. Thank you in advance. Mark -- Mark Webb +27 21 786 1124 +27 072 199 1000 |
How many items are there, and how many respondents? Have they almost all agreed/disagreed with every (uni-polar) statement. Has one or more persons filled out the battery several times? Looks like you need more contentious items or, perhaps better, a set of bi-polar choices (in semantic differential format). John F Hall MA (Cantab) Dip Ed (Dunelm) [Retired academic survey researcher] Email: [hidden email] Website: Journeys in Survey Research Course: Survey Analysis Workshop (SPSS) Research: Subjective Social Indicators (Quality of Life) From: SPSSX(r) Discussion <[hidden email]> On Behalf Of Mark Webb I have a set of agreement statements designed to measure staff engagement. The data has very low variability between variables (statements) and within respondents. All statements very negatively skewed. Each statement far from normally distributed. Most claims to be happy with all statements. If i run a factor analysis there is basically one factor with ev gt 1. CFA in Rs lavaan also struggles. I tried a log10 transformation to help the normality issue with little improvement. I think the underlying issue is that the statements are not "contentious" enough. What tests are available to analyse non-normal, low variability data? Or is the only solution to measure issues in such a way as to get more variability and more normal data distributions? Any comments on "boring" low variability data and poor normality welcome. Thank you in advance. Mark -- Mark Webb +27 21 786 1124 +27 072 199 1000 ===================== To manage your subscription to SPSSX-L, send a message to [hidden email] (not to SPSSX-L), with no body text except the command. To leave the list, send the command SIGNOFF SPSSX-L For a list of commands to manage subscriptions, send the command INFO REFCARD |
In reply to this post by Mark Webb-5
Well, what were you hoping to find out?
Apparently, "most" are very happy with "almost everything".
Are there cracks in that happy facade? That is, are SOME items
outliers? Are a few people outliers?
Given the universal role of "response bias", this could be a case where
dichotomizing the items is justifiable -- that is, there might not be
much meaning in the distribution outside of not-fine. You can find
general outliers by tabulating for each person how many times
they were not at the extreme.
Analyses should be guided by what you want to say. Transformations
can be convenient for simplifying the descriptions, which, here, is
probably more important than for "selecting the test." Get a good
description of < whatever you want to say > ; and then, consider
whether any testing is useful. I did not notice any hypotheses
mentioned in your post.
--
Rich Ulrich
From: SPSSX(r) Discussion <[hidden email]> on behalf of Mark Webb <[hidden email]>
Sent: Wednesday, February 20, 2019 8:55 AM To: [hidden email] Subject: Low variability issues I have a set of agreement statements designed to measure staff engagement. The data has very low variability between variables (statements) and within respondents. All statements very negatively skewed. Each statement far from normally distributed. Most
claims to be happy with all statements. If i run a factor analysis there is basically one factor with ev gt 1. CFA in Rs lavaan also struggles. I tried a log10 transformation to help the normality issue with little improvement.
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I think the underlying issue is that the statements are not "contentious" enough.
What tests are available to analyse non-normal, low variability data?
Or is the only solution to measure issues in such a way as to get more variability and more normal data distributions?
Any comments on "boring" low variability data and poor normality welcome.
Thank you in advance.
Mark
-- Mark Webb +27 21 786 1124 +27 072 199 1000 |
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