hello everyone, I have ran the SPSS syntax for parallel analysis developed by Brian O'Connor (https://people.ok.ubc.ca/brioconn/nfactors/parallel.sps) to check how many factors I should retain. I adjusted the number of cases and variables (n=1848, var#=66) to match my raw data file. The list of eigen values I received in the parallel analysis are very small, starting with .427 so I would need to retain 12 factors if I want to follow the rules of using the parallel analysis to determine factor retention. Since only 4 or five factors in my data are interpretable and make sense from the theoretical point of view, here is my question:
thanks so much,
bozena
From: SPSSX(r) Discussion <[hidden email]> on behalf of smalik <[hidden email]>
Sent: Monday, August 3, 2020 7:27 AM To: [hidden email] Subject: Re: Help write a syntax - specific question Dear Bruce
Thank you so much for your help. It worked. AGGREGATE /OUTFILE=* MODE=ADDVARIABLES OVERWRITE=YES /BREAK=StudentID /MinCode=MIN(Code) /MaxCode=Max(Code) /NumRecs=NU. IF MinCode EQ MaxCode Type = Code. IF MinCode NE MaxCode Type = "SOME". FREQUENCIES Type. DELETE VARIABLES MinCode MaxCode. -- Sent from: http://spssx-discussion.1045642.n5.nabble.com/
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I suggest (1) that you search the archives of this list for "parallel
analysis" and (2) start new thread since many people will not see this post which comes up a part of another thread. There are many considerations in Factor analysis. response scale of items, previous use of the same items in earlier research, etc. ----- Art Kendall Social Research Consultants -- Sent from: http://spssx-discussion.1045642.n5.nabble.com/ ===================== 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
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In reply to this post by Zdaniuk, Bozena-3
Presumably, you have considered some of the “factorability” statistics(e.g., MSA, initial communalities) for the information they provide. If you are interested in factor analysis and not PCA, be sure to specify kind=2 * Specify the desired kind of parallel analysis, where: 1 = principal components analysis 2 = principal axis/common factor analysis. compute kind = 2 . The eigenanalysis is based on eigenvalues of the reduced correlation matrix. Eigenvalues can be positive or negative. You might use an eigenvalue greater than 0 rule, but that can lead to too many factors retained. If based on raw data, you can do the bootstrap analysis supported in the routine. Note the magnitudes of the eigenvalues relative to the corresponding 90th percentile values based on random data. You can also produce “by hand” a scree plot and look for an “elbow.” These and other ideas are discussed in “Exploratory Factor Analysis” by Leandre Fabrigar and Duane Wegener. Tony Babinec |
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