AB Testing 101 | Fmr. Google Data Scientist Explains How to Calculate the Sample Size

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  • Опубликовано: 29 июн 2024
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    ====== ✅ Details ======
    🤔 Ever wondered how to calculate the sample size in an AB test?
    A former data scientist at Google how to calculate the sample size step-by-step. The lesson covers the formulas, parameters and exercises that should give you the intuition on how the sample size is calculated.
    Dan, the host, was a data scientist formerly at Google and PayPal. He launched datainterview.com/ to help candidates like you eliminate frustrations about the data science interview process and increase your success.
    As an interview coach, Dan helped several clients land their dream jobs as IC and managerial DS roles at top companies such as Google, Meta, Amazon and such. Message him at Dan@DataInterview.com for help!
    👍 Make sure to hit the like, and check out datainterview.com/
    ====== ⏱️ Timestamps ======
    0:00 Sample Size Formula
    2:16 Significance Level (Alpha)
    7:15 Statistical Power (1 - Beta)
    12:43 Variance
    17:41 Demonstration
    ====== 📚 Other Useful Contents ======
    1. Principles and Frameworks of Product Metrics | RUclips Case Study
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Комментарии • 33

  • @Aidan_Au
    @Aidan_Au Год назад +4

    Dan is back with another jam-packed useful AB Testing course!

  • @kiwidamien
    @kiwidamien 7 месяцев назад +5

    The power is not the probability of detecting the effect if it exists. The way the power is calculated is the probability of detecting an effect if the effect size is exactly equal to stated Minimum Effect Size.
    To get “the probability of detecting an effect if one exists” you need to integrate over a prior of the different effect sizes.

  • @chineduezeofor2481
    @chineduezeofor2481 7 месяцев назад +1

    This is so detailed. Thank you for this!

  • @jaylambert4700
    @jaylambert4700 Год назад +2

    I thought this was an outstanding tutorial, thank you so much

  • @twtw5201
    @twtw5201 2 месяца назад

    This is the only video one would needs to demystify the power analysis. Thank you.

  • @SiddhantSethi02
    @SiddhantSethi02 Год назад

    loved the explanation man. This is the first video I have seen that is explaining where is sigma and delta coming from. I have had such a hard time in reasoning where are the parameters coming from when we have not even started the test. Thanks for the good work. :)

  • @Iol4up
    @Iol4up 7 месяцев назад +1

    This is GOLD!!

  • @stella123www
    @stella123www 9 месяцев назад

    This is a fantastic video, it helps me clear up the confusion I had with power analysis. Though I know the famous formula of 16 sigma square/delta , I had no idea the pooled variance = 2* control sample variance. Thanks for the detailed video!

  • @csousa3608
    @csousa3608 Год назад

    Great video, thank you for sharing. In the case of A/B/n testing, the formula that you shared in the video could be adapted and used?

  • @hayzelyeom7245
    @hayzelyeom7245 Год назад +2

    Thank you for the amazing AB test lecture! I have one question. How can I project the effect of this AB test from the entire product's view (e.g. calculating sitewide impact of the observed significant list)?

  • @askanimohankrishnaiitb
    @askanimohankrishnaiitb 8 месяцев назад +3

    Hey Hi, I think the definition you gave for the type II error (beta) at around 8:05min is for power. Could you clarify that ?

    • @mayankanand507
      @mayankanand507 4 месяца назад

      What he mentioned is that probability of rejecting null hypothesis when alternative hypothesis is true, and that is the area under curve of alternate hypothesis for all Z

  • @lfengstone
    @lfengstone 4 месяца назад

    great lecture and thanks for sharing. But why is the two-sample pooled variance for proportion is the sum of the two samples's variance? should it be the 2*variance 1, because of the similar reason to it's mean counterpart?

  • @juancruzguillen8288
    @juancruzguillen8288 6 дней назад

    How would you do if you want to perform an A/B/C test?

  • @elinatugaeva6884
    @elinatugaeva6884 9 месяцев назад

    Thank you for the explanation! I have a question on the chicken& egg problem: if we cannot calculate the variance of the difference of 2 means, how can we calculate the pooled var for proportions? We also do not know the success rate of the 2nd sample as we have not yet run an experiment

  • @ashisranjanlahiri
    @ashisranjanlahiri Год назад +2

    Video is good. It is better to explain what is beta before jumping into the power

  • @PhiNguyen-iz9go
    @PhiNguyen-iz9go Год назад

    8:49
    Does the distribution of test-statistic under alternative hypothesis have the same shape with the distribution of test-statistic under null hypothesis?

  • @hokage5619
    @hokage5619 Год назад +1

    in case of single tail test will Z(1- a/2) change to Z(1 - a) ?

  • @christiansetzkorn6241
    @christiansetzkorn6241 25 дней назад

    should the variance not be multiplied by 2?

  • @yeqinzhang
    @yeqinzhang 9 месяцев назад

    how to answer this interview question? what if we cannot collect that much sample, what should we do?

  • @user-ew3oe6wl3v
    @user-ew3oe6wl3v 7 месяцев назад

    17:34 Why is (15.68 * sample variance) / delta squared ≈ (16 & population variance) / delta squared? Is it because sample variance is almost equal to population variance?

  • @PureMoss
    @PureMoss 2 месяца назад

    Am I mistaken, or is the description of the Type II error at 8:05 incorrect? He says Beta is the "the probability of rejecting a null hypothesis when the alternative hypothesis is true." But isn't Beta/Type II error the probability of *not* rejecting a null hypothesis when the alternative is true? Genuinely trying to clarify to make sure I have proper understanding.

  • @farsikogama6114
    @farsikogama6114 8 месяцев назад

    14:37 and 17:25 are the answer we are looking for 😄

  • @ChangKaiHua300
    @ChangKaiHua300 Год назад

    Hi sir, In the example i see you use MDE=20%, I am confused shouldn't it is normally be like 80% to 90%. is using 10%, 20% practical in real world?

    • @lucasbraga461
      @lucasbraga461 5 дней назад

      Hi @ChangKaiHua300, I think you're confusing MDE with statistical power. MDE is the minimum detectable effect, that's the lift between control and treatment and 10% is already usually good enough, 20% is quite reasonable. However the statistical power's default in the industry is 80%, because we want to keep a type II error of maximum 20% (that's beta).

  • @e.i.l.9584
    @e.i.l.9584 Год назад +1

    Hey, been loving your channel! I also have a similar background in college as you! I was wondering; Would you recommend a master in AI or statistics & data sciencr in order to become a data scientist and/or machine learning engineer?
    Stats would give me an European Master of Statistics (EMOS) and R knowledge.
    AI is more focused on python.
    What would give better opertunities down the road? honestly the stats would be easier to get higher grades than AI since its a killer master where I study it.
    My background is; double bachelor neuroscience and psychology, with a specialization in stats after which i knew it was what I really liked. Did a minor in data science and AI and studied mathematics on an exchange and did comp science and (discrete) math courses extracurricular.
    My goal is to work at a big tech firm but im unsure what gives better opertunities

    • @DataInterview
      @DataInterview  Год назад +1

      Hey, thanks for the post! Honestly, it really boils down to what you are interested in. Seems to me that you are mostly interested in developing and application of AI - in which case, computational neuroscience I think would be a perfect track. A combination of neuroscience, stats, and computer science may help you in the near term and long-term. Any internships you could snatch would be great in building a portfolio. Invest heavily on learning how to code, the math, and application of the latest algos like transformers, ChatGPT and so forth.

    • @e.i.l.9584
      @e.i.l.9584 Год назад

      @@DataInterview thank you!

    • @e.i.l.9584
      @e.i.l.9584 Год назад

      @@DataInterview I actually really want to go more towards machine learning engineering or data science. Would computational still be best then?

  • @harsharangapatil2423
    @harsharangapatil2423 2 месяца назад +1

    Why does every one just start writing the equation? Where is the deeper intuition?

  • @zhaoyanzhi741
    @zhaoyanzhi741 5 месяцев назад +1

    Very good and helpful explanation, but why pooled variance is to multiply by 2 instead of directly use the variance itself according to the link en.wikipedia.org/wiki/Pooled_variance