Bias and MSE

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  • Опубликовано: 7 сен 2024

Комментарии • 48

  • @davidbalakirev5963
    @davidbalakirev5963 3 года назад +42

    Finally, a video where instead of just reciting the definitions we see many examples. In less than 8 minutes. Wonderful!

  • @Maha_s1999
    @Maha_s1999 5 лет назад +20

    I have never seen MSE explained better! Thanks so much for the video - subbed 😀

  • @theuser810
    @theuser810 2 года назад +2

    This video is a lifesaver!

  • @heidiclayton9612
    @heidiclayton9612 7 лет назад +10

    Clear with good examples. Thank you!

  • @PeachyGamingg
    @PeachyGamingg 4 года назад +3

    Thank you for this wonderful video!

  • @gustavoborba8112
    @gustavoborba8112 3 года назад +2

    Awesome vid

  • @muhammadaliimran2331
    @muhammadaliimran2331 5 лет назад +4

    Short and to the point. Thank you

  • @j83lin
    @j83lin 5 лет назад +5

    Very informative video! Thank you so much!

  • @Mahlodi_Makobe
    @Mahlodi_Makobe Год назад +1

    Short and sweet. I loved this video. may we please get more content like this?

  • @julioarciga7196
    @julioarciga7196 3 года назад +3

    Am I the only one that wishes their professor would just make it this simple in lecture?

  • @PedroRibeiro-zs5go
    @PedroRibeiro-zs5go 4 года назад +3

    Thanks for the video! It was pretty good!!

  • @amitpadgaonkar8830
    @amitpadgaonkar8830 4 года назад +2

    Amazing explanation. Thank you

  • @zgbjnnw9306
    @zgbjnnw9306 3 года назад +2

    THis is so much helpful! Thank you for sharing :) subbed

  • @noahrubin375
    @noahrubin375 3 года назад +1

    This was premium content. New sub :)

  • @maxwinmax
    @maxwinmax 6 лет назад +6

    Thank you, this video was very clear and short!

  • @cratersonmoon5399
    @cratersonmoon5399 2 года назад +1

    Thanks ,you explained it very well

  • @the_milkyway6494
    @the_milkyway6494 3 года назад +1

    Thanks a milion!

  • @MasterPsyi
    @MasterPsyi 2 года назад +1

    This is gold!

  • @sadrafattouh
    @sadrafattouh Год назад

    thank you so much!!

  • @DenisG631
    @DenisG631 7 лет назад +5

    Simply golden! Thank you!

    • @ActuaryEducation
      @ActuaryEducation  7 лет назад +1

      I'm so pleased you found it helpful in your studies.

  • @Lovelifeplease
    @Lovelifeplease 8 лет назад +11

    A very good video

  • @madwichery
    @madwichery 3 года назад +1

    Thank you!

  • @priyak2303
    @priyak2303 5 лет назад +3

    Thanks a lot❤

  • @roottwo5459
    @roottwo5459 5 лет назад +3

    great stuff

  • @boyawei15
    @boyawei15 3 года назад +2

    save my life!!

  • @mohammedkhan8753
    @mohammedkhan8753 6 лет назад +1

    for the last example the variance of a Bin(n,p) is v(x)=np(1-p)
    so MSE = p(1-p)/n

  • @mesydiahariani9570
    @mesydiahariani9570 2 года назад

    great, it is easy to understand

  • @ayesigasteven8058
    @ayesigasteven8058 2 года назад

    A real professor

  • @Test-ri2kr
    @Test-ri2kr 3 года назад +1

    At 2:02 can someone please explain why Xbar is = mu/n? I know in the next example why as P=X/n but in this example it doesn’t looo like X=mu/n

  • @alexanderjavadpeygambarian9878
    @alexanderjavadpeygambarian9878 7 лет назад +4

    why do you square 1/n to make it 1/n^2 after taking it outside the Variance

    • @ActuaryEducation
      @ActuaryEducation  7 лет назад +2

      It would be 1/n if it was standard deviation as that has the same
      dimensions as the data. However, variance is a squared measure.

    • @pengtian9924
      @pengtian9924 7 лет назад +6

      According to the definition of variance, we have this formula: Var(aX)=a^2Var(X), where a is any constant.

  • @plttji2615
    @plttji2615 2 года назад +1

    Thank you for the video, can you help me how to prove that is unbiased in this question? Question: Compare the average height of employees in Google with the average height in the United States, do you think it is an unbiased estimate? If not, how to prove it is not mathced?

  • @swaggy745
    @swaggy745 9 месяцев назад

    if we are given a pdf of 4 values of x with their probabilities in terms of theta, then we find an estimator for the mean theta-hat and then we find the mean square error in terms of theta (should it be in terms of theta?), how can we find if it it mean square consistent. I am unsure because n=4 for my questions so I can't see how it makes sense to consider the limit as n goes to infinity. Please could someone shed some light. Thank you

  • @MIKE-cs3dk
    @MIKE-cs3dk Год назад

    Why do we square the 1/n outside of the variance?

  • @janetchela7585
    @janetchela7585 4 года назад +1

    Where is the example for the biased estimators?

  • @morakano3355
    @morakano3355 Год назад

    What is q in npq at the end of the lecture?

  • @inigohohmeyer1791
    @inigohohmeyer1791 Год назад

    At 5:58 why is the n squared?

  • @Kyaint
    @Kyaint Год назад

    You would think he'd show a biased and unbiased example instead of just unbiased but nothing makes sense with teachers these days.

  • @rohitarora3814
    @rohitarora3814 3 года назад +1

    The way explained is very difficult to understand

  • @dyyddson
    @dyyddson 4 года назад +4

    Thank you, an excellent video of the subject!