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Hi,
I submitted a paper where I had used a cluster analysis (Ward's method and k-means) to structure a questionnaire. However, this was rejected by one reviewer who did not find my approach convincing (factor analysis is more common indeed). The journal addresses practitioners, therefore I preferred the clear-cut 7-cluster solution of the cluster analysis to the 17-factor result from the cluster analysis with strong crossloadings (the questionnaire concerns a certain subgroup of students, therefore this might probably be expected; the many mini factors consisting of two or three items only suck, though, and eliminating them might shorten the questionnaire significantly ...). So, are there any arguments about the statistical advantages of CA over FA which might help convince the reviewer? :) Thanks in advance Tanya ===================== 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 |
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Hello,
I think what determines your data analysis strategy is the research question on hand. What is your research question? On Fri, Aug 20, 2010 at 10:47 AM, Tanya <[hidden email]> wrote: Hi, -- Mustafa Ozkaynak ><((((º>`·.¸¸.·´¯`·.¸.·´¯`·...¸><((((º>¸. `·.¸¸.·´¯`·.¸.·´¯`·...¸><((((º>`·.¸¸.·´¯`·.¸.·´¯`·...¸><((((º> |
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In reply to this post by Tanja Gabriele Baudson
How did you decide the number of factors to retain? It sounds as if
you used the Kaiser criterion. I suggest that you try the conventional approach to factor analysis before you dismiss it as a technique. How many scales were the items designed to measure? or is this a strictly an ad hoc factor analysis? search the archives at http://listserv.uga.edu/archives/spssx-l.html for "parallel analysis". When you redo the factor analysis with fewer factors and find scales that are meaningful and have only cleanly loading items, what do the scale reliabilities look like? How do the scaling keys compare from the cluster vs factor approach? Art Kendall Social Research Consultants On 8/20/2010 11:47 AM, Tanya wrote: > Hi, > > I submitted a paper where I had used a cluster analysis (Ward's method and > k-means) to structure a questionnaire. However, this was rejected by one > reviewer who did not find my approach convincing (factor analysis is more > common indeed). The journal addresses practitioners, therefore I preferred > the clear-cut 7-cluster solution of the cluster analysis to the 17-factor > result from the cluster analysis with strong crossloadings (the > questionnaire concerns a certain subgroup of students, therefore this might > probably be expected; the many mini factors consisting of two or three items > only suck, though, and eliminating them might shorten the questionnaire > significantly ...). > > So, are there any arguments about the statistical advantages of CA over FA > which might help convince the reviewer? :) > > Thanks in advance > Tanya > > ===================== > 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 > ===================== 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
Art Kendall
Social Research Consultants |
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In reply to this post by Mustafa Ozkaynak
A key difference is that cluster analysis is dealing with proximities.
Thus correlation as a proximity measure is employed as a whole coefficient. Factor analysis employs partial coefficients and takes controlled relationships into account. FA can indeed yield overly complex results. That is one of several reasons why confirmatory factor analysis in SEM would be recommended by many in this situation. In statistics as in religion, however, there are many paths to heaven. DG Mustafa Ozkaynak wrote: > Hello, > I think what determines your data analysis strategy is the research > question on hand. > What is your research question? > > > On Fri, Aug 20, 2010 at 10:47 AM, Tanya <[hidden email] > <mailto:[hidden email]>> wrote: > > Hi, > > I submitted a paper where I had used a cluster analysis (Ward's > method and > k-means) to structure a questionnaire. However, this was rejected > by one > reviewer who did not find my approach convincing (factor analysis > is more > common indeed). The journal addresses practitioners, therefore I > preferred > the clear-cut 7-cluster solution of the cluster analysis to the > 17-factor > result from the cluster analysis with strong crossloadings (the > questionnaire concerns a certain subgroup of students, therefore > this might > probably be expected; the many mini factors consisting of two or > three items > only suck, though, and eliminating them might shorten the > questionnaire > significantly ...). > > So, are there any arguments about the statistical advantages of CA > over FA > which might help convince the reviewer? :) > > Thanks in advance > Tanya > > ===================== > To manage your subscription to SPSSX-L, send a message to > [hidden email] <mailto:[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 > > > > > -- > Mustafa Ozkaynak > > ><((((º>`·.¸¸.·´¯`·.¸.·´¯`·...¸><((((º>¸. > `·.¸¸.·´¯`·.¸.·´¯`·...¸><((((º>`·.¸¸.·´¯`·.¸.·´¯`·...¸><((((º> -- _________________________________________________________ G. David Garson School of Public and International Affairs North Carolina State University, Campus Box #8102 Raleigh, NC 27695-8102 For Fedex and other express mail add: 212 Caldwell Hall, Hillsborough Street Tel. 1-919-515-3067 Fax: 1-919-515-7333 Email [hidden email] ________________________________________________________ ===================== 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 |
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In reply to this post by Tanja Gabriele Baudson
it seems to me that...
"FA" and "CA" address completely different questions; that is, FA assesses the relations among *variables* -- aka "variable-centered" analysis -- and finds fewer vars aka "factors" that explain the relations among the raw variables. CA assesses the relations among *objects* (e.g., people) -- aka "person-centered" analysis -- and finds relatively homogeneous sugroups of objects (defined by similar patterns of values on the given cluster variables). In practice, people generally first use FA to find a reduced number of variables and then CA to find subgroups based on this reduced number of variables/factors. (even though it is usually better to select your best raw variables for CA, unless the FA reveals highly reliable and uni-dimensional factors that include everything you want to know about subgroups) Any reviewer who suggests using FA instead of CA does not understand CA. On 8/20/2010 11:47 AM, Tanya wrote: Hi, I submitted a paper where I had used a cluster analysis (Ward's method and k-means) to structure a questionnaire. However, this was rejected by one reviewer who did not find my approach convincing (factor analysis is more common indeed). The journal addresses practitioners, therefore I preferred the clear-cut 7-cluster solution of the cluster analysis to the 17-factor result from the cluster analysis with strong crossloadings (the questionnaire concerns a certain subgroup of students, therefore this might probably be expected; the many mini factors consisting of two or three items only suck, though, and eliminating them might shorten the questionnaire significantly ...). So, are there any arguments about the statistical advantages of CA over FA which might help convince the reviewer? :) Thanks in advance Tanya ===================== 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 -- Stephen C. Peck Research Investigator Achievement Research Lab Research Center for Group Dynamics Institute for Social Research University of Michigan 426 Thompson Street, # 5136 Ann Arbor, MI 48106-1248 (734) 647-3683; fax (734) 936-7370 http://www.rcgd.isr.umich.edu/garp/ [hidden email] |
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a high alpha would be one indicator of reliability, yes
(but there are other indicators/methods that could be used as well)
I just meant that FA can reveal lots of factors indicated by a few items that might need further item development to reliably measure the construct in question, but when doing CA I'm usually more concerned about whether the items/scales I'm using are valid and relevant indicators of the components/functions of the system I'm studying On 8/22/2010 10:09 PM, Eins Bernardo wrote:
-- Stephen C. Peck Research Investigator Achievement Research Lab Research Center for Group Dynamics Institute for Social Research University of Michigan 426 Thompson Street, # 5136 Ann Arbor, MI 48106-1248 (734) 647-3683; fax (734) 936-7370 http://www.rcgd.isr.umich.edu/garp/ [hidden email] |
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