Multiple imputation

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  • čas přidán 11. 09. 2024

Komentáře • 32

  • @arifmemovic3383
    @arifmemovic3383 Před rokem

    This is a gold standard tutorial! Thank you very much.

  • @ammaralghamri4901
    @ammaralghamri4901 Před 6 měsíci

    I like your videos soooo much. thank you!

  • @Janamejaya.Channegowda
    @Janamejaya.Channegowda Před 3 lety +1

    Thank you for the video.

  • @Lee-lu2vi
    @Lee-lu2vi Před rokem

    Hello, could you please tell me what was exactly the name of the course provided by Mr. Todd Little? was it 'Longitudinal Structural Equation Modeling' ? and where can I find it?

    • @mronkko
      @mronkko  Před rokem +1

      I took Todd's course in person in about 2009 in University of Turku in Finland. I do not remember the name of the course. (I think it was two one-week courses back to back). The materials that he used went to the Longitudinal SEM book and were available at quant.ku.edu, but that domain is no longer in use.

    • @Lee-lu2vi
      @Lee-lu2vi Před rokem

      @@mronkko Thank you anyways, I appreciate it

  • @user-ex3vb4it8e
    @user-ex3vb4it8e Před 2 měsíci

    Love U my teacher

    • @mronkko
      @mronkko  Před 2 měsíci

      Happy to hear that!

  • @manuelpopp1687
    @manuelpopp1687 Před 2 lety

    Did I understand correctly that multiple imputation is used for parameter estimation only and but cannot be used to calculate, e.g., an ANOVA or permANOVA on multiple imputed datasets? Or are there methods to calculate this?

    • @mronkko
      @mronkko  Před 2 lety +1

      ANOVA is an analysis technique that produces an F statistic. Are you asking if the F statistics can be pooled? The answer appears to be yes www.ncbi.nlm.nih.gov/pmc/articles/PMC4029775/ But if you want to compare means between groups, I would recommend thinking about the missing data mechanism (MAR, MCAR, MNAR) and then whether the mechanism that you think you have a) makes a difference for the ANOVA results and b) whether it is compatible with MI assumptions.

  • @anandhari5239
    @anandhari5239 Před rokem

    Suppose i have created 2 different dataset using any imputation techniques. Is it possible to compare these different datasets?. Also how can we compare and validate different imputation techniques that we used for imputation?

    • @mronkko
      @mronkko  Před rokem

      What would be the point of such comparison? (Except for teaching the weaknesses of single imputation techniques.) You could validate a technique by generating a large sample from a known population, introducing missing data, and testing how closely different techniques get to the answer. This is something that I do in one of the introductory videos on imputation: czcams.com/video/RhEuyHr2mWw/video.html&pp=ygUwU2ltcGxlIHRlY2huaXF1ZXMgZm9yIGRlYWxpbmcgd2l0aCBtaXNzaW5nIGRhdGEg

    • @anandhari5239
      @anandhari5239 Před rokem

      @@mronkko my point is I have a real time data with missing observations. I want to do some regression analysis. Initially I removed the missing observations then done the analysis. Later imputed the missing observation using any imputation technique. Done the same regression analysis. Is it meaningful to compare these two models.

    • @mronkko
      @mronkko  Před rokem

      @@anandhari5239 I do not think such comparison is useful except for teaching purposes.

  • @seongong9907
    @seongong9907 Před 2 lety

    Hello thank you for the video! i've got a question about scale-level imputation.Would the same principle apply to the scale-level imputation as item-level imputation? And can scale-level multiple imputation be implemented using SPSS? Thanks so much in advance.

    • @mronkko
      @mronkko  Před 2 lety

      I do not use SPSS myself but as far as I know, it has some multiple imputation capabilities. The software manual will tell you the capabilities. Multiple imputation can be used on item level and scale level. Imputation on the item level is better, but can be more difficult to implement.

  • @datascientist2958
    @datascientist2958 Před 3 lety

    Predictive mean matching is same as multiple imputation or any difference?

    • @datascientist2958
      @datascientist2958 Před 3 lety

      It is really informative. Thanks for it, how can we extract pooled imputed dataset with strategy pmm. Any resource

    • @datascientist2958
      @datascientist2958 Před 3 lety

      If we have five imputed datasets, how can we extract pool dataset. Suppose I have to implement machine algorithms on pooled imputed dataset so I can use that with various tools

    • @datascientist2958
      @datascientist2958 Před 3 lety

      Thanks a lot

  • @talzabidi1569
    @talzabidi1569 Před 4 lety

    is there any assumption that we have to check it such MACAR or MAR MCANR before we run the ML ? please support your answer with reference

    • @talzabidi1569
      @talzabidi1569 Před 4 lety

      @@mronkko thanks so much for your replying
      i want to know , what is the percentage of missing data that can be use MI to full up the missing ?
      this article present the assumptions of MI
      Sinharay, S., Stern, H. S., & Russell, D. (2001). The use of multiple imputation for the analysis of missing data. Psychological methods, 6(4), 317.
      However i refer to sources that u give to me i dont find any clear statement says MI has not any requirements.

  • @grasielaferreira3784
    @grasielaferreira3784 Před 11 měsíci

    thanks

    • @mronkko
      @mronkko  Před 11 měsíci

      You are welcome!

  • @engmohamedEldeery
    @engmohamedEldeery Před rokem

    please you not explain the equation and can you give simple examble

    • @mronkko
      @mronkko  Před rokem

      I am sorry, but I do not understand the question. By simple example, do you mean show the code and output for a statistical software?

    • @engmohamedEldeery
      @engmohamedEldeery Před rokem

      Small numerical example by matlab code
      With regards

    • @mronkko
      @mronkko  Před rokem

      @@engmohamedEldeery I do not use matlab so I cannot help you with that unfortunately.