Categorizing study participants based on their scores on summated scales (non-SPSS question).

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Categorizing study participants based on their scores on summated scales (non-SPSS question).

Faiz Rasool
Hi all,
 
The research textbooks I've read so far, do not provide a guideline on how to categorize study participants into categories like  low, moderate and high, open to change, somewhat open to change and not at all open to change, based on the scores they have obtained on the summated scale.
 
To give more clarity to my question, I'll describe the confusion that I'm facing in my own research on conservation behaviors. Variables like attitudes towards conservation, awareness of environmental problems and influence of others on conservation behaviors are all part of my research. I've constructed scales to measure these variables. I'm having confusion in categorizing participants into different categories based on their scores.  I'll use an example of a five question scale to  further clarify my question.  I've constructed a scale of 5 questions,  It provides 4 standard Likert type responses, i.e. strongly disagree to strongly agree. Since the scale has 5 questions the maximum score possible is 20 and 5 is the lowest possible score. But I'm unable to find any guideline on the following things:
 
What criteria should I use other than personal judgment to decide that on what is the score based on which participants can be placed in high or low category. Should scores between 16 and 20 imply high, scores 11 to 15 moderate and scores between 5 to 10 low? Of course the responses are coded in a way that higher scores means that the conservation behavior and conservation attitudes are high. I plan to use the scores on the scale to use in regression analysis, and if assumptions of regression are not met, then I'd want to use those scores to make categories and use test like chi-square.
 
Any  suggestions and comments are most appreciated.
 
Thanks and regards,
Faiz.
 
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Re: Categorizing study participants based on their scores on summated scales (non-SPSS question).

John F Hall
Faiz
 
First thing to do is check whether the items relate to each other and more or less measure the same thing.  Are all your items positively worded or do ome need to be reversed?  Taking your example and assuming five vars v1 to v5, 1 = strongly disagree ~ ~ ~ 5 = strongly agree you can run (much quicker in syntax):
 
file > new > syntax:
 
compute score = sum.5 (v1 to v5) - 5 .
*generates a score with a genuine zero point (ratio scale) with a range of 0 to 15 .
freq score .
corr score v1 to v5 .
 
Technically you should use non-parametric stats with ordinal vars, but pragmatically (we all do it) the above is simpler.
 
You can tell a lot just by looking at the correlation matrix: there may be a single underlying factor or possibly more than one.
 
You can split your sample into Hi - Lo groups in any way you like using quartiles, deciles, median etc. or just by looking at the cumulative % column in the frequencies table.
 
You could check reliability using Cronbach's alpha .
 
analyze > scale > reliability analysis
 
There is a set of SPSS tutorials on simple scale construction in section 3.5 of Block 3 on my website, but nothing (yet) on reliability.  Statisticians on the list will be able to advise you on other aspects.
 
Get back to me off-list and I may be able to offer more detailed help. 
 
----- Original Message -----
Sent: Monday, January 10, 2011 7:07 AM
Subject: Categorizing study participants based on their scores on summated scales (non-SPSS question).

Hi all,
 
The research textbooks I've read so far, do not provide a guideline on how to categorize study participants into categories like  low, moderate and high, open to change, somewhat open to change and not at all open to change, based on the scores they have obtained on the summated scale.
 
To give more clarity to my question, I'll describe the confusion that I'm facing in my own research on conservation behaviors. Variables like attitudes towards conservation, awareness of environmental problems and influence of others on conservation behaviors are all part of my research. I've constructed scales to measure these variables. I'm having confusion in categorizing participants into different categories based on their scores.  I'll use an example of a five question scale to  further clarify my question.  I've constructed a scale of 5 questions,  It provides 4 standard Likert type responses, i.e. strongly disagree to strongly agree. Since the scale has 5 questions the maximum score possible is 20 and 5 is the lowest possible score. But I'm unable to find any guideline on the following things:
 
What criteria should I use other than personal judgment to decide that on what is the score based on which participants can be placed in high or low category. Should scores between 16 and 20 imply high, scores 11 to 15 moderate and scores between 5 to 10 low? Of course the responses are coded in a way that higher scores means that the conservation behavior and conservation attitudes are high. I plan to use the scores on the scale to use in regression analysis, and if assumptions of regression are not met, then I'd want to use those scores to make categories and use test like chi-square.
 
Any  suggestions and comments are most appreciated.
 
Thanks and regards,
Faiz.
 
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Re: Categorizing study participants based on their scores on summated scales (non-SPSS question).

Bruce Weaver
Administrator
In reply to this post by Faiz Rasool
Faiz Rasool wrote
Hi all,

The research textbooks I've read so far, do not provide a guideline on how to categorize study participants into categories like  low, moderate and high, open to change, somewhat open to change and not at all open to change, based on the scores they have obtained on the summated scale.

To give more clarity to my question, I'll describe the confusion that I'm facing in my own research on conservation behaviors. Variables like attitudes towards conservation, awareness of environmental problems and influence of others on conservation behaviors are all part of my research. I've constructed scales to measure these variables. I'm having confusion in categorizing participants into different categories based on their scores.  I'll use an example of a five question scale to  further clarify my question.  I've constructed a scale of 5 questions,  It provides 4 standard Likert type responses, i.e. strongly disagree to strongly agree. Since the scale has 5 questions the maximum score possible is 20 and 5 is the lowest possible score. But I'm unable to find any guideline on the following things:

What criteria should I use other than personal judgment to decide that on what is the score based on which participants can be placed in high or low category. Should scores between 16 and 20 imply high, scores 11 to 15 moderate and scores between 5 to 10 low? Of course the responses are coded in a way that higher scores means that the conservation behavior and conservation attitudes are high. I plan to use the scores on the scale to use in regression analysis, and if assumptions of regression are not met, then I'd want to use those scores to make categories and use test like chi-square.

Any  suggestions and comments are most appreciated.

Thanks and regards,
Faiz.
For the regression analysis, are your scales explanatory (predictor) variables or outcome (dependent) variables?  

Regarding assumptions for regression, the most important one is that the residuals be independent of (or uncorrelated with) the explanatory variables.  If you are concerned about normality, note that it applies to the errors, not the outcome variable itself, and is not nearly as important as the assumption of independence.  See this old post from sci.stat.edu, for example.

  http://groups.google.com/group/sci.stat.edu/msg/745a15f3122398cf?dmode=source

HTH.
--
Bruce Weaver
bweaver@lakeheadu.ca
http://sites.google.com/a/lakeheadu.ca/bweaver/

"When all else fails, RTFM."

PLEASE NOTE THE FOLLOWING: 
1. My Hotmail account is not monitored regularly. To send me an e-mail, please use the address shown above.
2. The SPSSX Discussion forum on Nabble is no longer linked to the SPSSX-L listserv administered by UGA (https://listserv.uga.edu/).
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Re: Categorizing study participants based on their scores on summated scales (non-SPSS question).

J P-6
Faiz,
 
I have seen two approaches to this. 1) form groups in terms of whether they endorse the positive or negative side of the scale (i.e. strongly disagree + disagree and agree + strongly agree).
 
2. If you have multiple items and want to form what are essentially latent profiles you can try using cluster analysis. http://www.mvsolution.com/wp-content/uploads/SPSS-Tutorial-Cluster-Analysis.pdf
 
Good luck,
 
John


From: Bruce Weaver <[hidden email]>
To: [hidden email]
Sent: Mon, January 10, 2011 9:19:05 AM
Subject: Re: Categorizing study participants based on their scores on summated scales (non-SPSS question).

Faiz Rasool wrote:

>
> Hi all,
>
> The research textbooks I've read so far, do not provide a guideline on how
> to categorize study participants into categories like  low, moderate and
> high, open to change, somewhat open to change and not at all open to
> change, based on the scores they have obtained on the summated scale.
>
> To give more clarity to my question, I'll describe the confusion that I'm
> facing in my own research on conservation behaviors. Variables like
> attitudes towards conservation, awareness of environmental problems and
> influence of others on conservation behaviors are all part of my research.
> I've constructed scales to measure these variables. I'm having confusion
> in categorizing participants into different categories based on their
> scores.  I'll use an example of a five question scale to  further clarify
> my question.  I've constructed a scale of 5 questions,  It provides 4
> standard Likert type responses, i.e. strongly disagree to strongly agree.
> Since the scale has 5 questions the maximum score possible is 20 and 5 is
> the lowest possible score. But I'm unable to find any guideline on the
> following things:
>
> What criteria should I use other than personal judgment to decide that on
> what is the score based on which participants can be placed in high or low
> category. Should scores between 16 and 20 imply high, scores 11 to 15
> moderate and scores between 5 to 10 low? Of course the responses are coded
> in a way that higher scores means that the conservation behavior and
> conservation attitudes are high. I plan to use the scores on the scale to
> use in regression analysis, and if assumptions of regression are not met,
> then I'd want to use those scores to make categories and use test like
> chi-square.
>
> Any  suggestions and comments are most appreciated.
>
> Thanks and regards,
> Faiz.
>
>

For the regression analysis, are your scales explanatory (predictor)
variables or outcome (dependent) variables?

Regarding assumptions for regression, the most important one is that the
residuals be independent of (or uncorrelated with) the explanatory
variables.  If you are concerned about normality, note that it applies to
the errors, not the outcome variable itself, and is not nearly as important
as the assumption of independence.  See this old post from sci.stat.edu, for
example.


http://groups.google.com/group/sci.stat.edu/msg/745a15f3122398cf?dmode=source

HTH.


-----
--
Bruce Weaver
[hidden email]
http://sites.google.com/a/lakeheadu.ca/bweaver/

"When all else fails, RTFM."

NOTE: My Hotmail account is not monitored regularly.
To send me an e-mail, please use the address shown above.

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Re: Categorizing study participants based on their scores on summated scales (non-SPSS question).

Evan Harrington, Ph.D.
In reply to this post by Faiz Rasool

In addition to the comments of other listmembers, you might consider conducting a quick read of John Tukey’s view on exploratory data analysis. He published a classic, titled Exploratory Data Analysis (referred to as EDA) in which he promoted an alternative view to standard null hypothesis significance testing. His discussions of exploration of data, and his use of the box plot and other devices, might provide you with some guidance on where to draw your arbitrary demarcations for “high” and “low”.

 

Evan R. Harrington, Ph.D.

Associate Professor

Forensic Thesis Track Director

The Chicago School of Professional Psychology

Department of Forensic Psychology

325 North Wells Street

Chicago, IL 60654

 

Phone: 312 329-6693

Fax: 312 661-1272


From: SPSSX(r) Discussion [mailto:[hidden email]] On Behalf Of Faiz Rasool
Sent: Monday, January 10, 2011 12:08 AM
To: [hidden email]
Subject: Categorizing study participants based on their scores on summated scales (non-SPSS question).

 

Hi all,

 

The research textbooks I've read so far, do not provide a guideline on how to categorize study participants into categories like  low, moderate and high, open to change, somewhat open to change and not at all open to change, based on the scores they have obtained on the summated scale.

 

To give more clarity to my question, I'll describe the confusion that I'm facing in my own research on conservation behaviors. Variables like attitudes towards conservation, awareness of environmental problems and influence of others on conservation behaviors are all part of my research. I've constructed scales to measure these variables. I'm having confusion in categorizing participants into different categories based on their scores.  I'll use an example of a five question scale to  further clarify my question.  I've constructed a scale of 5 questions,  It provides 4 standard Likert type responses, i.e. strongly disagree to strongly agree. Since the scale has 5 questions the maximum score possible is 20 and 5 is the lowest possible score. But I'm unable to find any guideline on the following things:

 

What criteria should I use other than personal judgment to decide that on what is the score based on which participants can be placed in high or low category. Should scores between 16 and 20 imply high, scores 11 to 15 moderate and scores between 5 to 10 low? Of course the responses are coded in a way that higher scores means that the conservation behavior and conservation attitudes are high. I plan to use the scores on the scale to use in regression analysis, and if assumptions of regression are not met, then I'd want to use those scores to make categories and use test like chi-square.

 

Any  suggestions and comments are most appreciated.

 

Thanks and regards,

Faiz.

 

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Re: Categorizing study participants based on their scores on summated scales (non-SPSS question).

Ryan
In reply to this post by Faiz Rasool
Faiz,

Determing cut-points can be quite tricky. Before even considering
cut-points, however, I think you have a more pressing issue. You have
yet to establish that there are any underlying constructs (a.k.a.
factors), and if there are, the actual number of underlying
constructs.

The classic approach to examine dimensionality would be to perform an
exploratory factor analysis (EFA), assuming you have no theory or
previous work establishing the structure. EFA falls under the rubric
of classical test theory. There are other approaches (which I tend to
prefer) that fall under item response theory that should be seriously
considered.

The bottom line is that your concern about developing cut-points may
be a bit premature. Having stated that, there are a variety of ways to
establish cut-points. One approach typically used after employing
models which fall under classical test theory would be to compare a
"normative" sample to a "clinical" sample, so to speak. Details on how
to develop cut-points from such a comparison are probably not worth
discussing since your situation does not appear to lend itself to this
approach.

Ryan

On Mon, Jan 10, 2011 at 1:07 AM, Faiz Rasool <[hidden email]> wrote:

> Hi all,
>
> The research textbooks I've read so far, do not provide a guideline on how
> to categorize study participants into categories like  low, moderate and
> high, open to change, somewhat open to change and not at all open to change,
> based on the scores they have obtained on the summated scale.
>
> To give more clarity to my question, I'll describe the confusion that I'm
> facing in my own research on conservation behaviors. Variables like
> attitudes towards conservation, awareness of environmental problems and
> influence of others on conservation behaviors are all part of my research.
> I've constructed scales to measure these variables. I'm having confusion in
> categorizing participants into different categories based on their scores.
>  I'll use an example of a five question scale to  further clarify my
> question.  I've constructed a scale of 5 questions,  It provides 4 standard
> Likert type responses, i.e. strongly disagree to strongly agree. Since the
> scale has 5 questions the maximum score possible is 20 and 5 is the lowest
> possible score. But I'm unable to find any guideline on the following
> things:
>
> What criteria should I use other than personal judgment to decide that on
> what is the score based on which participants can be placed in high or low
> category. Should scores between 16 and 20 imply high, scores 11 to 15
> moderate and scores between 5 to 10 low? Of course the responses are coded
> in a way that higher scores means that the conservation behavior and
> conservation attitudes are high. I plan to use the scores on the scale to
> use in regression analysis, and if assumptions of regression are not met,
> then I'd want to use those scores to make categories and use test like
> chi-square.
>
> Any  suggestions and comments are most appreciated.
>
> Thanks and regards,
> Faiz.
>

=====================
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
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For a list of commands to manage subscriptions, send the command
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Re: Categorizing study participants based on their scores on summated scales (non-SPSS question).

Bruce Weaver
Administrator
In reply to this post by Bruce Weaver
Bruce Weaver wrote
Faiz Rasool wrote
Hi all,

The research textbooks I've read so far, do not provide a guideline on how to categorize study participants into categories like  low, moderate and high, open to change, somewhat open to change and not at all open to change, based on the scores they have obtained on the summated scale.

To give more clarity to my question, I'll describe the confusion that I'm facing in my own research on conservation behaviors. Variables like attitudes towards conservation, awareness of environmental problems and influence of others on conservation behaviors are all part of my research. I've constructed scales to measure these variables. I'm having confusion in categorizing participants into different categories based on their scores.  I'll use an example of a five question scale to  further clarify my question.  I've constructed a scale of 5 questions,  It provides 4 standard Likert type responses, i.e. strongly disagree to strongly agree. Since the scale has 5 questions the maximum score possible is 20 and 5 is the lowest possible score. But I'm unable to find any guideline on the following things:

What criteria should I use other than personal judgment to decide that on what is the score based on which participants can be placed in high or low category. Should scores between 16 and 20 imply high, scores 11 to 15 moderate and scores between 5 to 10 low? Of course the responses are coded in a way that higher scores means that the conservation behavior and conservation attitudes are high. I plan to use the scores on the scale to use in regression analysis, and if assumptions of regression are not met, then I'd want to use those scores to make categories and use test like chi-square.

Any  suggestions and comments are most appreciated.

Thanks and regards,
Faiz.
For the regression analysis, are your scales explanatory (predictor) variables or outcome (dependent) variables?  

Regarding assumptions for regression, the most important one is that the residuals be independent of (or uncorrelated with) the explanatory variables.  If you are concerned about normality, note that it applies to the errors, not the outcome variable itself, and is not nearly as important as the assumption of independence.  See this old post from sci.stat.edu, for example.

  http://groups.google.com/group/sci.stat.edu/msg/745a15f3122398cf?dmode=source

HTH.
One thing I was driving at here is that I don't (necessarily) see a need for carving them into categories.  Why can you not use them as they are?  There are lots of articles that describe the consequences of carving variables into categories prior to analysis.  See Dave Streiner's "Breaking Up is Hard to Do" article, for example.

--
Bruce Weaver
bweaver@lakeheadu.ca
http://sites.google.com/a/lakeheadu.ca/bweaver/

"When all else fails, RTFM."

PLEASE NOTE THE FOLLOWING: 
1. My Hotmail account is not monitored regularly. To send me an e-mail, please use the address shown above.
2. The SPSSX Discussion forum on Nabble is no longer linked to the SPSSX-L listserv administered by UGA (https://listserv.uga.edu/).
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Re: Categorizing study participants based on their scores on summated scales (non-SPSS question).

gouri shankar jain
In reply to this post by Faiz Rasool


Hi Faiz
 
        I am not sure whether am having a strong hand on this topic but still i like to share what i know.

  I've constructed a scale of 5 questions,  It provides 4 standard Likert type responses, i.e. strongly disagree to strongly agree. Since the scale has 5 questions the maximum score possible is 20 and 5 is the lowest possible score. But I'm unable to find any guideline on the following things:

 from this i could understand tat u created 5 questions ok
  and each question consist of 5 point scale ie
       very  stongly agree :5 pint
               strongly agree:4
               moderately agree:3
               disagree:2
               strongly dis agree:1
so u got total of 5 question each with 5point scale
so   5x5 =25 will be maximum score
      3x5 = 15 is moderately satisfied
      2x5 = 10 will be disagree

here wen u cal calculate and u get a score if the score is above 15.. u can plot them as stongly agree
suppose the score is 21  u can say majorty very stongly agree... if its below10 u can say majorty stongly disagree

                                                                                                                            tanx faiz
     
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Re: Categorizing study participants based on their scores on summated scales (non-SPSS question).

Rich Ulrich
The useful way to report Likert summative scales,
in my experience, is to give the "average item score."
This lets you give your audience the original anchor-labels
as complete explanation of what the score indicates.

Since dividing by N-of-items is a linear transformation,
it makes absolutely no difference to subsequent tests.

--
Rich Ulrich

> Date: Thu, 17 May 2012 11:58:31 -0700

> From: [hidden email]
> Subject: Re: Categorizing study participants based on their scores on summated scales (non-SPSS question).
> To: [hidden email]
>
> Hi Faiz
>
> I am not sure whether am having a strong hand on this topic but
> still i like to share what i know.
>
> I've constructed a scale of 5 questions, It provides 4 standard Likert
> type responses, i.e. strongly disagree to strongly agree. Since the scale
> has 5 questions the maximum score possible is 20 and 5 is the lowest
> possible score. But I'm unable to find any guideline on the following
> things:
>
> from this i could understand tat u created 5 questions ok
> and each question consist of 5 point scale ie
> very stongly agree :5 pint
> strongly agree:4
> moderately agree:3
> disagree:2
> strongly dis agree:1
> so u got total of 5 question each with 5point scale
> so 5x5 =25 will be maximum score
> 3x5 = 15 is moderately satisfied
> 2x5 = 10 will be disagree
>
> here wen u cal calculate and u get a score if the score is above 15.. u can
> plot them as stongly agree
> suppose the score is 21 u can say majorty very stongly agree... if its
> below10 u can say majorty stongly disagree
>
>
...
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Re: Categorizing study participants based on their scores on summated scales (non-SPSS question).

Poes, Matthew Joseph

Hey Rich,

                While what you have recommended is far and away the most common practice, there are some who would suggest that is bad practice.  It makes an assumption that the summative scale retained the properties of the original scale, even though that is not true.  It causes people to interpret the sum scale as if it were the individual component scales, but that really isn’t what it represents.  Even when all items are on the same scale, people’s response is going to create local variation for each item, and this local variation creates differences in the meaning of the variation of the final scale.  You also have the problem that the final scale will have much less variability than it’s component scales, which could be argued to reflect a change in the distance between points on the scale as well.

 

                I personally believe that the best approach in the somewhat casual use of scales, as we are discussing here, that refined factor scores or object scores be used instead to reflect the final scale.  It maximizes homogeneity, minimizes heterogeneity, and forces a more accurate interpretation of the end scale.  I’ve actually presented a white paper on this topic not too long ago, and hope to have a journal article out in the near future that makes the case for increased use of  Refined factor scores and optimal scaling.

 

                A good recent paper that explores this topic is “Understanding and Using Factor Scores: Considerations for the Applied Researcher” by DiStefano, Zhu, and Mindrila (2009).  As I began to do my own lit review, this helped me find some of the good standard papers discussing the various methods of creating factor scores, and there advantages/disadvantages.  Another body of literature that discusses this issue would be the older classical test theory papers in ability measures.  I found the best work and descriptions was right when Rasche scaling took over in its place, after that it appears that factor scores from measures became a topic relegated to people like us.

 

                I guess my main point here is that I believe it is potentially/arguably dangerous to interpret a factor as the simple sum of its parts.  Rather I believe it should be looked at for what it is, a latent construct represented by the triangulation of findings across a set of related measures/questions.  Its own scale is related but not equal to that of its component measures/variables.  The major drawback to the use of refined factor scores is easy interpretation, which I believe is actually wrong on its face value.  If we consider what I’ve said, then factors shouldn’t be interpreted based on their component scaling, and thus the loss of scale or metric from the original variables is unimportant.          

 

Matthew J Poes

Research Data Specialist

Center for Prevention Research and Development

University of Illinois

510 Devonshire Dr.

Champaign, IL 61820

Phone: 217-265-4576

email: [hidden email]

 

 

From: SPSSX(r) Discussion [mailto:[hidden email]] On Behalf Of Rich Ulrich
Sent: Thursday, May 17, 2012 9:45 PM
To: [hidden email]
Subject: Re: Categorizing study participants based on their scores on summated scales (non-SPSS question).

 

The useful way to report Likert summative scales,
in my experience, is to give the "average item score."
This lets you give your audience the original anchor-labels
as complete explanation of what the score indicates.

Since dividing by N-of-items is a linear transformation,
it makes absolutely no difference to subsequent tests.

--
Rich Ulrich

> Date: Thu, 17 May 2012 11:58:31 -0700
> From: [hidden email]
> Subject: Re: Categorizing study participants based on their scores on summated scales (non-SPSS question).
> To: [hidden email]
>
> Hi Faiz
>
> I am not sure whether am having a strong hand on this topic but
> still i like to share what i know.
>
> I've constructed a scale of 5 questions, It provides 4 standard Likert
> type responses, i.e. strongly disagree to strongly agree. Since the scale
> has 5 questions the maximum score possible is 20 and 5 is the lowest
> possible score. But I'm unable to find any guideline on the following
> things:
>
> from this i could understand tat u created 5 questions ok
> and each question consist of 5 point scale ie
> very stongly agree :5 pint
> strongly agree:4
> moderately agree:3
> disagree:2
> strongly dis agree:1
> so u got total of 5 question each with 5point scale
> so 5x5 =25 will be maximum score
> 3x5 = 15 is moderately satisfied
> 2x5 = 10 will be disagree
>
> here wen u cal calculate and u get a score if the score is above 15.. u can
> plot them as stongly agree
> suppose the score is 21 u can say majorty very stongly agree... if its
> below10 u can say majorty stongly disagree
>
>
...

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Re: Categorizing study participants based on their scores on summated scales (non-SPSS question).

Rich Ulrich
Matthew,

I agree that what I do is a "casual use" of scales, though
I think of it more as doing what is appropriate for "one-off"
applications.  With relatively small samples, and samples
whose characteristics are unique, it is overkill -- with the
risk of screwing it up, either in computation or interpretation --
to be fancy with one-time applications.  Moreover, it was
established in the 1930s (Likert and others) that, generally,
little or nothing is gained by changing the spacing from 1,
2, 3, ....   And short scales can become less reliable when
heavy weight is given to one or two items.

What I do recommend for instances where I want to average
unlike items (or sub-scales) is to standardize each scale to SD=1;
average the results; express the final scale as a T-score:  with
mean=50, SD=10.  Similar T-scoring is also useful whenever
there is a control group or a baseline that is important for a lot
of comparisons.

I am not sure what you are referring to as Refined factor scores
and optimal scaling but I expect that it is less simple than my
T scores.

Finally, you make a statement that is hard to parse, about face-
value interpretation.  I think you are admitting that your Refined
scales are hard to interpret.  In my experience, one of the nastiest
errors in data interpretation is that the researcher becomes
enchanted by the label that is assigned to a factor.  But being "high
on bizarreness" gains a proper anchor if you can see that "high" is
only 1.3  on a scale from 1 to 4.  Then you may check and see that
the only subscale item with many responses is the mildest of the 5
items in Bizarreness, "talks about dreams" (occasionally).  [real example]
You lose that ease with a Total in place of the Average, or with
"optimal scaling" ala Correspondence analysis. 


It may be "dangerous to interpret a factor as the simple sum of its parts."
I suppose it is more dangerous to interpret it that way... when it is *not*
the simple sum of its parts, but uses obscure weights.

--
Rich Ulrich



Date: Fri, 18 May 2012 13:29:29 +0000
From: [hidden email]
Subject: Re: Categorizing study participants based on their scores on summated scales (non-SPSS question).
To: [hidden email]

Hey Rich,

                While what you have recommended is far and away the most common practice, there are some who would suggest that is bad practice.  It makes an assumption that the summative scale retained the properties of the original scale, even though that is not true.  It causes people to interpret the sum scale as if it were the individual component scales, but that really isn’t what it represents.  Even when all items are on the same scale, people’s response is going to create local variation for each item, and this local variation creates differences in the meaning of the variation of the final scale.  You also have the problem that the final scale will have much less variability than it’s component scales, which could be argued to reflect a change in the distance between points on the scale as well.

 

                I personally believe that the best approach in the somewhat casual use of scales, as we are discussing here, that refined factor scores or object scores be used instead to reflect the final scale.  It maximizes homogeneity, minimizes heterogeneity, and forces a more accurate interpretation of the end scale.  I’ve actually presented a white paper on this topic not too long ago, and hope to have a journal article out in the near future that makes the case for increased use of  Refined factor scores and optimal scaling.

 

                A good recent paper that explores this topic is “Understanding and Using Factor Scores: Considerations for the Applied Researcher” by DiStefano, Zhu, and Mindrila (2009).  As I began to do my own lit review, this helped me find some of the good standard papers discussing the various methods of creating factor scores, and there advantages/disadvantages.  Another body of literature that discusses this issue would be the older classical test theory papers in ability measures.  I found the best work and descriptions was right when Rasche scaling took over in its place, after that it appears that factor scores from measures became a topic relegated to people like us.

 

                I guess my main point here is that I believe it is potentially/arguably dangerous to interpret a factor as the simple sum of its parts.  Rather I believe it should be looked at for what it is, a latent construct represented by the triangulation of findings across a set of related measures/questions.  Its own scale is related but not equal to that of its component measures/variables.  The major drawback to the use of refined factor scores is easy interpretation, which I believe is actually wrong on its face value.  If we consider what I’ve said, then factors shouldn’t be interpreted based on their component scaling, and thus the loss of scale or metric from the original variables is unimportant.          

 

Matthew J Poes

Research Data Specialist

Center for Prevention Research and Development

University of Illinois

510 Devonshire Dr.

Champaign, IL 61820

Phone: 217-265-4576

email: [hidden email]

 

 [snip, previous]