Selecting a Rotation in a Factor Analysis using SPSS

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  • Опубликовано: 10 окт 2024

Комментарии • 46

  • @simplifiedrecipes100
    @simplifiedrecipes100 21 день назад

    I can't thank you enough for this video. You are such a savior for understanding and interpreting SPSS software. Thank you! Dr. Todd Grande.

  • @truegrit4752
    @truegrit4752 4 года назад +4

    I learn so much more from you than I learn in my graduate level classes. Thanks for sharing!

  • @wimamaa9273
    @wimamaa9273 6 лет назад +2

    This video, like many others on your channel, is a life-saver. Thank you!

  • @-yt5258
    @-yt5258 2 года назад

    We may not see each other but your lessons are very helpful.
    My sincere respect
    LOVE from Odisha, India

  • @barrieahmed3233
    @barrieahmed3233 4 года назад

    I'm lucky to get your video explanations on the rotation in factor analysis... thank you very much, Dr. Todd... this was very much helpful.

  • @thomasstarr6433
    @thomasstarr6433 8 лет назад +13

    Two questions: First where does the absolute of .32 come from regarding correlation values? Second, for the Oblique rotation you examined the Component Correlation table and for the Orthogonal Rotation you examined the Rotated Component Matrix table, so, why the different tables?

  • @stratpap637
    @stratpap637 Год назад

    Very nice explanation! Thank you Dr. Grande

  • @2736492821
    @2736492821 6 лет назад

    This is gold! I got some introduction on general PCA and it was missing in rotation. This tutorial helped me grasp the concept of rotation and I will be ready to apply it in my analyses, thanks!

  • @javisfernandes9468
    @javisfernandes9468 4 года назад +1

    THANK YOU SO MUCH FOR BEING SUCH A BEAUTIFUL HUMAN BEING!!! THIS REALLY HELPED ME!!!

  • @khoiandhannah4362
    @khoiandhannah4362 5 лет назад +1

    You are always the best! keep going Dr. Grande!

  • @Seanv12345
    @Seanv12345 4 года назад +1

    This is really well done. Thank you.

  • @SudarshanBaurai
    @SudarshanBaurai 2 года назад

    Thank you Prof. 🙏

  • @gideonvictor1490
    @gideonvictor1490 4 года назад +1

    Thank you!

  • @theresiabusagara7909
    @theresiabusagara7909 6 лет назад +1

    Thank you again for very educative clip.

    • @theresiabusagara7909
      @theresiabusagara7909 6 лет назад

      Please Can you provide reference used for the selection of the rotation method. I refer the .32 as the referred loading for the choice to be made.

  • @riksawibawa4630
    @riksawibawa4630 5 месяцев назад

    Hello Dr Grande. My name is Riksa. I'm PhD Student, and I'm working on PCA.
    Thank you for your explanation related to selecting rotation in factor analysis. I followed your steps, and I'm using direct oblimin methods to analyze because I believe that every items are correlated, but how about if the results in the rotated component matrix mentioned "only one component was extracted. The solution cannot be rotated."
    What should I do Dr. Grande?
    Please kindly your information.
    Thank you

  • @tonytaioftimestreamer2616
    @tonytaioftimestreamer2616 6 лет назад

    These videos are very helpful thank you!!

  • @leonardonevarez2522
    @leonardonevarez2522 3 года назад +1

    where did you get the basis of .32 when identifying if it's oblique or orthogonal?????

  • @dilrubabasser8724
    @dilrubabasser8724 4 года назад

    Thank you very much for this informative video! I had a question. I used an oblimin rotation. In output where can I see the rotated factor loadings? In Pattern Matrix Table or in Structure Matrix Table?

  • @aymanzein7
    @aymanzein7 4 года назад

    In depth video, thanks
    1- If the complex variables persist ( whenever I delete one , another one pops up ) can I keep them ?
    2- Can I use any Extraction method for Oblimin ?

    • @mahasarwar5513
      @mahasarwar5513 4 года назад

      Hey. Did you get your answer from anywhere?

    • @aymanzein7
      @aymanzein7 4 года назад

      @@mahasarwar5513 Yes , I recommend : Hair, Multivariate Data Analysis 7th edition Ch.4 Exploratory Factor Analysis

  • @MartinaHertl
    @MartinaHertl 7 лет назад

    Great video, very useful. Thank you.

    • @DrGrande
      @DrGrande  7 лет назад

      You're welcome, thanks for watching -

  • @svetlanabesklubova6362
    @svetlanabesklubova6362 5 лет назад

    Dr. Todd Grande, thank you for the video, very good explanation! I conducted the varimax rotation. In some cases, I got complex variables with loading 0.466 and 0.455 (example) to different groups. What I should do in this case? Should I leave this item in a group with loading 0.466?

  • @iPsychlops
    @iPsychlops 9 месяцев назад

    Does it matter that this is PCA? I'm doing PAF; would I look at the factor correlation matrix? Is the value |.32| to determine if I'm running oblique vs. orthogonal?

  • @halilemrekocalar6537
    @halilemrekocalar6537 7 лет назад

    thank you for explanation which is so useful for me!

    • @DrGrande
      @DrGrande  7 лет назад

      You're welcome, thanks for watching -

  • @newgeneration8390
    @newgeneration8390 5 лет назад

    you hit the bull's eye... awesome

  • @MsStinaB
    @MsStinaB 6 лет назад +2

    Do you have any good references on which rotation method to use and where does the absolute of .32 come from regarding correlation values? Need this for a publication.

    • @sebi1988777
      @sebi1988777 5 лет назад +5

      Tabachnick and Fiddell (2007, p. 646) argue that “Perhaps the best way to decide between
      orthogonal and oblique rotation is to request oblique rotation [e.g., direct oblimin or promax from
      SPSS] with the desired number of factors [see Brown, 2009b] and look at the correlations among
      factors…if factor correlations are not driven by the data, the solution remains nearly orthogonal. Look
      at the factor correlation matrix for correlations around .32 and above. If correlations exceed .32, then
      there is 10% (or more) overlap in variance among factors, enough variance to warrant oblique rotation
      unless there are compelling reasons for orthogonal rotation.”

  • @DrHanjabamBarunSharma
    @DrHanjabamBarunSharma 4 года назад +1

    references for significant loading, zero loading, complex items etc..plz

  • @mohammadmasroorzafar9728
    @mohammadmasroorzafar9728 3 года назад +1

    How we decide from 0.32?
    What is the basis? Can you share the name ot book Or research paper
    Please

  • @youthf7c343
    @youthf7c343 8 лет назад +1

    What is rotation? I want to visualize that concept. What components on the axis are rotated?
    And under what conditions do we choose varimax or quartimax, equimax . thanks :)

    • @abyarthagoswami7663
      @abyarthagoswami7663 8 лет назад

      How are factors formed in factor analysis

    • @khalilsaleh2984
      @khalilsaleh2984 6 лет назад

      rotate the items to form the factor
      select type of rotation depend on the correlation status if it is above .32 or less than it ,, insignificant differences among subcategory rotation

    • @2736492821
      @2736492821 6 лет назад

      www.theanalysisfactor.com/rotations-factor-analysis/ I reckon this help in visualizing the concept of rotation, cheers

  • @neuroscience5994
    @neuroscience5994 6 лет назад

    Why correlations of specifically 0.32 for direct oblimin to be useful? Is there a reference for this?

    • @cintiacampos3454
      @cintiacampos3454 6 лет назад

      Did Todd Grande answer your question? I also could not understand where is from de the magic number 0.32

    • @sebi1988777
      @sebi1988777 5 лет назад +5

      Tabachnick and Fiddell (2007, p. 646) argue that “Perhaps the best way to decide between
      orthogonal and oblique rotation is to request oblique rotation [e.g., direct oblimin or promax from
      SPSS] with the desired number of factors [see Brown, 2009b] and look at the correlations among
      factors…if factor correlations are not driven by the data, the solution remains nearly orthogonal. Look
      at the factor correlation matrix for correlations around .32 and above. If correlations exceed .32, then
      there is 10% (or more) overlap in variance among factors, enough variance to warrant oblique rotation
      unless there are compelling reasons for orthogonal rotation.”

  • @naveens806
    @naveens806 4 года назад

    How to write hypothesis for above problem

  • @patrickdi910
    @patrickdi910 7 лет назад +1

    lol the questions here are dumb as hell. thx for the video it was quite helpful

  • @biniambekele7267
    @biniambekele7267 4 года назад

    your explanations are fantastic but the videos are not good. they all lack visibility!