Missing Data Assumptions (MCAR, MAR, MNAR)

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  • Опубликовано: 22 авг 2024

Комментарии • 61

  • @alexgoffeda5737
    @alexgoffeda5737 3 года назад +12

    This visual explanation is simply genius - please dont stop making those kind of videos! Great voice btw

  • @RicardoVladimirWong
    @RicardoVladimirWong Год назад +6

    Amazing work, our entire quants team loved your explanations. Keep posting!

  • @Sathynne
    @Sathynne Год назад +4

    I'm so glad I found this channel

  • @shreyashree.d69
    @shreyashree.d69 Месяц назад

    Such a sweet and fun way to explain missingness! I was struggling to understand these and here you are, Savior!! Many thanks to You!! 😁♥

  • @prathameshwarude7642
    @prathameshwarude7642 16 часов назад

    Your voice is so soothing... Therapeutic...

  • @ANKITBANERJEERA
    @ANKITBANERJEERA 3 года назад +2

    What a clear and calm explanation!!! Love your voice too.

  • @christianz2401
    @christianz2401 2 года назад +1

    Was looking for a good explanation of missing data. Fell in love with your voice 💘.

  • @boredeggyolk7969
    @boredeggyolk7969 2 года назад +1

    First of all, thank you for existing. i really amazed by how calm and beautiful your voice is. second, please keep going T_T i really love your explanation. Instant subscribe!

  • @tin_sn-o2q
    @tin_sn-o2q Год назад +1

    this helped me prepare for my data science quiz, thank you very much

  • @trackstr1
    @trackstr1 6 месяцев назад

    your explanation and illustration are a perfect duo for clearing up this concept

  • @aleksandarristoski2777
    @aleksandarristoski2777 2 года назад +1

    One of the best videos i have ever watched. Keep going !

  • @tryingtothinkofsomethingcool
    @tryingtothinkofsomethingcool Год назад +1

    This is brilliant teaching. Thank You.

  • @sharvaridange207
    @sharvaridange207 3 года назад +6

    You have such a sweet voice :)

  • @ibrahimogunbiyi4296
    @ibrahimogunbiyi4296 2 года назад +1

    Thank you Mia for this tutorial. I found it Insigthful.

    • @ibrahimogunbiyi4296
      @ibrahimogunbiyi4296 2 года назад

      Please you should definitely work on more videos. You are creating an impact with your teaching. Your approach is awesome and I love your voice. Thank you

  • @ankanabhattacharya1176
    @ankanabhattacharya1176 2 года назад +1

    Mia you're a genius at explaining. Why do you not have more followers :(

  • @shivam7304
    @shivam7304 2 года назад +1

    Nice Explaination !!! Keep the good work ...

  • @anumzahra3537
    @anumzahra3537 2 года назад +1

    Love cats and love statistics! So obviously I subscribed 🥰

  • @drarpitsaha9697
    @drarpitsaha9697 2 года назад +1

    Hello ,Mia ..its a great video , thanks a lot

  • @sam_thinks7591
    @sam_thinks7591 Год назад +1

    Loved your voice TBH

  • @abhishekranjan2617
    @abhishekranjan2617 3 года назад +2

    awesome video.... I like this video...!!!!!!!!!!!

  • @shahnazmalik6553
    @shahnazmalik6553 3 года назад +1

    your teaching is priceless

  • @shashankgupta3549
    @shashankgupta3549 Год назад +1

    Great explanation; please make more such videos!

  • @vinc6966
    @vinc6966 Месяц назад

    Great explanation, thanks!

  • @akhilghosh6384
    @akhilghosh6384 Год назад +1

    great video! I was struggling with this concept but this video helped greatly!

  • @anis3702
    @anis3702 10 месяцев назад

    Perfect explanation!

  • @StatURCIP
    @StatURCIP 13 дней назад

    Excellent!

  • @chonnipvpsk627
    @chonnipvpsk627 Год назад +1

    Big thanks!

  • @tawhidshahrior8804
    @tawhidshahrior8804 2 года назад +1

    Hey Mia! Thanks for the beautiful explanation. :D

  • @newbie8051
    @newbie8051 Год назад +1

    Great examples, thank you !!!

  • @hcv1648
    @hcv1648 3 года назад +1

    subscribed for such a sweet way of explanation :)

  • @larissacury7714
    @larissacury7714 Год назад +1

    Wow!!! thank you SO SO MUCH! SO clear! In case NAs are missing due to the fact that participants didn't show up (for no specific reason, they simply didn't show up) on the test day, it would be a MCar case, right?

    • @statswithmia
      @statswithmia  Год назад +1

      Hi Larissa, sorry for missing this comment/question earlier. I now have a video for a test for MCAR, which might be helpful for you: ruclips.net/video/h9CzBtLpt_8/видео.html

  • @prrnik1465
    @prrnik1465 3 года назад +1

    Thanks so much :) very helpful explanation and cute cat 😺

  • @zazakh7804
    @zazakh7804 Месяц назад

    Thank you so much you explained it great

  • @ryndm
    @ryndm Год назад

    Amazing explanation!! Thank you!!

  • @alishamahajan9463
    @alishamahajan9463 3 года назад +1

    how to assume whether data is MCAR or MAR or MNAR? is there any method of using it or we simply assume in mind at our own will....is there any method where we select this assumption??? or do we hypothesis it???

    • @statswithmia
      @statswithmia  Год назад +1

      Apologies for missing this comment/question earlier. You can use Little's MCAR test to conduct a hypothesis test for the MCAR assumption. I now have a video on this topic in case it's still useful:
      ruclips.net/video/h9CzBtLpt_8/видео.html
      You cannot run any tests to determine whether data are MAR or MNAR; you can only make assumptions based on what you think is plausible. You can additionally sensitivity analyses for the assumptions.

  • @Hvv91
    @Hvv91 3 года назад +1

    Great explanation. Thank you.

  • @TheZaddyzad
    @TheZaddyzad 3 года назад +2

    Hi Mia, I enjoyed your video, well done. I was wondering when you might release the video on the statistical/sensitivity tests for different assumptions.

    • @statswithmia
      @statswithmia  3 года назад +3

      Thanks Amir. I now have a video on approaches to handling missing data: ruclips.net/video/ACN29i_fqkk/видео.html
      I hope to make a video on exploring the validity of different assumptions soon.

  • @MahtabAlam-uf8db
    @MahtabAlam-uf8db 2 года назад +1

    How do I deal with MNAR? Can I assume MCAR even if Little's MCAR test is significant? The reason Little's MCAR is significant, I believe, is because a lot of data is missing.

    • @statswithmia
      @statswithmia  Год назад

      Apologies for missing this comment/question earlier. I now have a video on Little's MCAR test, in case it's still useful:
      ruclips.net/video/h9CzBtLpt_8/видео.html

  • @yuchen4889
    @yuchen4889 3 года назад +1

    really helpful and easy to understand!!

  • @leowatson1589
    @leowatson1589 2 года назад +1

    Great video!
    I was wondering for the MAR case, how do we know for sure that the two groups can be separated into outside/inside pieces? If we didn't know beforehand Mr. Pickles removed more outside pieces than inside pieces, in theory there could have been another unknown property responsible for the differing probabilities of missingness correct? Would this still be considered MAR? E.g. Mr. Pickles only removed pieces that had dirt on them (and they just happened to be mostly outside pieces). Thanks!

    • @statswithmia
      @statswithmia  2 года назад +2

      Thank you for your question. You can't be sure that the MAR assumption holds, so it's important to explore potential departures from the MAR assumptions and see what impact it has on results through sensitivity analyses (something I didn't explore much in the video)

    • @bassamalsheakhly1889
      @bassamalsheakhly1889 Год назад

      @@statswithmia
      hi ,,, excuse me, can you offer me some help with my (survey data) ?????
      thank you

  • @karolinawilczek2374
    @karolinawilczek2374 3 года назад +1

    Hiya! What should I do if my data is MNAR? My t tests from Little's MCAR test are showing significant results and I'm not unsure as to what to do with this data set.
    Please help

    • @statswithmia
      @statswithmia  3 года назад +1

      Hi Karolina, sorry for my delayed reply! If your missing data mechanism is not MCAR, what you could do is an analysis with multiple imputation under the MAR assumption and do sensitivity analysis to see how robust the results are to departures from the MAR assumption.

  • @user-xn8wg6yw7g
    @user-xn8wg6yw7g 26 дней назад

    Cute, but not helpful. The notation is poorly explained and leads to great confusion.
    Without explaining and demonstrating Rubin's difficult notation through clear and simple cases, everything else just goes to waste.
    For instance 'Missingness depends only on observed data' seems improperly defined or even like an instance of circular reasoning: Missingness means that the data is not observed, so which data you 'depend only on' itself depends on the missingness. That's not a clear definition.
    If you really want to help us, please focus on clear and thorough explanation, not on acting cute.