26: Resampling methods (bootstrapping)

Ғылым және технология

Bootstrapping to estimate parameters (e.g., confidence intervals) for single samples. Balanced bootstrapping for inherent biased parameters.

Пікірлер: 36

  • @marciofernandes7091
    @marciofernandes70917 жыл бұрын

    the only good straight foward, video on bootstrapping out there. No book-canned stratified answer, as it is so often common in statistics. Thank you, this video is a piece of art.

  • @deepanshhh

    @deepanshhh

    4 жыл бұрын

    There's a very nice video which has come out recently regarding bootstrapping which clearly explains it. kzread.info/dash/bejne/m6d5xcmoc9DSf5M.html

  • @drpindoria
    @drpindoria4 жыл бұрын

    Matthew, this is very nice video with clear elucidation of bootstrapping. Thanks you for sharing.

  • @ltbd78
    @ltbd785 жыл бұрын

    I learned more in this 10 minute video than I did in my 3 hour lecture.

  • @yaweli2968
    @yaweli29683 жыл бұрын

    You do a good job at explaining this. I never thought of plotting the sample means from 1to 10000 or more in R.

  • @timmori2811
    @timmori28113 жыл бұрын

    Great and concise explanation, thank you! Just what I needed to understand what my prof. wanted me to do and why!

  • @merumomo
    @merumomo7 жыл бұрын

    Well explained in a simple way. Thank you!

  • @dunslax3
    @dunslax34 жыл бұрын

    You're a hero. This video taught me more about bootstrapping than several hours of lectures.

  • @davidbenkert3413
    @davidbenkert34135 жыл бұрын

    Thank you so much for this video.

  • @kingasuba709
    @kingasuba7095 жыл бұрын

    this is so helpful, thank you !

  • @ferdinandoinsalata3949
    @ferdinandoinsalata39497 жыл бұрын

    Thanks, nice video of a very useful series. Just a doubt : at the end you say that a way to correct the biased estimation of the variance is to add a quantity to each value. But this does not change the variance ... Could you elaborate on the last part of the video about balanced bootstrap?

  • @SNPolka56
    @SNPolka565 жыл бұрын

    Great presentation. I thought you were going to construct 95% CI for R2.

  • @andreneves6064
    @andreneves60646 жыл бұрын

    Please, some material about gibbs sampling? I need it so much.

  • @SPORTSCIENCEps
    @SPORTSCIENCEps3 жыл бұрын

    Thank you for the explanation!

  • @mcdonalds1499
    @mcdonalds14993 жыл бұрын

    wow you are a lifesaver

  • @jjoshua95
    @jjoshua956 жыл бұрын

    if we want the resampling mean value to be greater than then how to proceed

  • @aimeekeith4280
    @aimeekeith42807 жыл бұрын

    THANK YOU!!

  • @meribel7071
    @meribel70715 жыл бұрын

    how to do bootstrapping with gretl please?

  • @sassora
    @sassora4 жыл бұрын

    Great presentation. One thing that’s bothering me is that the 95% CI is constructed so that the CIs 95% of the time contain the true parameter value. As said on one slide. The next slide shows 95% of sample means not of CIs. I imagine this holds true but it is not addressed. Would be good to get confirmation.

  • @lemyul
    @lemyul4 жыл бұрын

    ty pham

  • @jovandjoe4082
    @jovandjoe40825 жыл бұрын

    what does resampling the data with replacement means??

  • @charliekrajewski3646
    @charliekrajewski36467 жыл бұрын

    First off, excellent vid. My question is - and I hope I state it clearly: Is balancing the bootstrap necessary? Can't it be assumed that an obvious outlier in a small data set is an anomaly, and the fact that the resampling doesn't pick it up as often means that it is "correcting" the data?

  • @vulnvuln

    @vulnvuln

    5 жыл бұрын

    It hurts me to start with it depends, but it depends. Maybe you're thinking of outliers in a normal distribution, like the one in the video, but that's not what always happens. If you check your data and you see that the bootstrapped standard deviation is the same as the one in the original data without considering outliers (which you know are data points that were incorrectly measured FOR SURE, for example) you can think of it as correcting the data. But you could just have data where some data points are more prone to be picked up than others like height for male and female, in a dataset with more males. There is a chance you'd have even more males, which means bigger values in a higher frequency, and that would bias your dispersion metrics.

  • @get1up2and3dance
    @get1up2and3dance5 жыл бұрын

    about the balancing part: we compute the bootstrap mean, then we subtract the difference between bootstrap mean and sample mean and get... sample mean. why not use sample mean from the beginning?

  • @jainicz

    @jainicz

    5 жыл бұрын

    I believe bootstrap method is primarily used to understand the spread or confidence interval of the data. Based on my limited experience, most data when you bootstrap it, the mean will eventually converge to the sample mean. So when it doesn't, it implies that our initial sample might be inherently biased, or we probably need to repeat the bootstrapping procedures more until the result stabilize. Either case, the presenter offers us one simple way to possibly correct for the bias.

  • @panagiotiskioulepoglou3635
    @panagiotiskioulepoglou36353 жыл бұрын

    100,000th viewer! Thank you

  • @xruan6582
    @xruan65823 жыл бұрын

    6:57 I think R² has a standard formula for 95% CI

  • @user-wi5sl2vg6c
    @user-wi5sl2vg6c2 жыл бұрын

    كيف اترجم الفديو للعربية؟

  • @daducky411
    @daducky4114 жыл бұрын

    re adjusing a BS parameter to counter bias , a question arises. Why BS if you are going to end up with same adjusted parameter value as the observed value by adding back the difference between the obs sample's paraemter g variance eg say var_obs =0.15 and the bs parameter eg variance var_bs=0.1. Adding back the difference will simply adjust the bs value to the sample parameter value.

  • @xico749

    @xico749

    2 жыл бұрын

    the added value is the sample parameter value (i.e. var_obs) + MEAN of var_bs. Mean of var_bs is not equal to var_bs

  • @rebecabuttner
    @rebecabuttner3 жыл бұрын

    Here you can play with the topic more visual seeing-theory.brown.edu/frequentist-inference/es.html#section3

  • @TooManyPBJs
    @TooManyPBJs3 жыл бұрын

    You never added why you would want to do balanced bootstrapping. It is to get better performance statistics.

  • @xico749

    @xico749

    2 жыл бұрын

    the previous slide showed an example in which the bootstrapped estimator for variance is biased. Balanced bootstrapping removes or at least decreases that bias.

  • @hanronghu4065
    @hanronghu40653 жыл бұрын

    honoured to be the 1000 one click like

  • @tarkatirtha
    @tarkatirtha4 жыл бұрын

    Sound quality is bad!!

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