Introduction to the Central Limit Theorem

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  • Опубликовано: 27 дек 2012
  • I discuss the central limit theorem, a very important concept in the world of statistics. I illustrate the concept by sampling from two different distributions, and for both distributions plot the sampling distribution of the sample mean for various sample sizes. I also discuss why the central limit theorem is important in statistics, and work through a probability calculation. (For the most part this is a non-technical treatment, and simply illustrates the important implications of the central limit theorem.)
    For those using R, here is the R code to find the probability for the example in this video:
    Finding the (approximate) probability that the mean salary of 100 randomly selected employees exceeds $66,000:
    1-pnorm(66000,62000,32000/sqrt(100))
    [1] 0.1056498
    Or, standardizing:
    1-pnorm((66000-62000)/(32000/sqrt(100)))
    [1] 0.1056498
    1-pnorm(1.25)
    [1] 0.1056498

Комментарии • 469

  • @jbstatistics
    @jbstatistics  11 лет назад +163

    I'm a statistics professor in the Department of Mathematics and Statistics at the University of Guelph.

    • @5RiverFlow2020
      @5RiverFlow2020 4 года назад +9

      I wish you were my prof. Also can you do videos on Moment generating functions?

    • @JustMoseyinAround
      @JustMoseyinAround 3 года назад +1

      Many thanks from York University

    • @gardenmenuuu
      @gardenmenuuu 3 года назад

      @@sanchitakanta1018 LOL

    • @RSB_777
      @RSB_777 2 года назад

      Informative Video. Keep moving making new videos

    • @emmanuelekele6169
      @emmanuelekele6169 Год назад

      Hello sir

  • @yagayagaBabaYaga
    @yagayagaBabaYaga 3 года назад +10

    Watching in 2020 for my stats diploma. Just realized this is an 8 year old video. Jeremy Balka, your channel is a gold mine. You are amazing! I will always remember you. Thanks!

  • @ucheumolu4345
    @ucheumolu4345 8 лет назад +18

    I never really comment on videos but this was so helpful It would be an insult to not thank you. So, THANK YOU! You have saved me

  • @damiankonieczek5792
    @damiankonieczek5792 7 лет назад +55

    My teacher has spent hours trying to teach us this. You did this in 13 minutes and 13 seconds.
    Great job and thank you:)

    • @newbie8051
      @newbie8051 Год назад +2

      Hey just curious what are you pursuing now ? (as you were studying stats 5yrs ago)

    • @codeblueocean3520
      @codeblueocean3520 Год назад

      The world need to know😂

    • @thandolwethu3430
      @thandolwethu3430 Год назад

      😂here for this

  • @jbstatistics
    @jbstatistics  11 лет назад +12

    Thanks for the feedback. I'm a little overly restrained in this one, and possibly a touch boring, but I felt that the original was a little over the top and irritating in some spots. I'm glad you liked the normal distribution video! Stats is definitely something to get excited about!

  • @manutdsparta
    @manutdsparta 10 лет назад

    I have been watching many of your videos recently. Thank you for your (fast) videos as well as you explain them very clearly with your voice. Enjoyment to watch and learn!

  • @themathguy3149
    @themathguy3149 3 года назад

    Best video series about statistics in this whole youtube wildlife, thank you so much for existing and making everything better

  • @musclesmalone
    @musclesmalone 4 года назад +2

    Extremely, extremely helpful. I'm going through a data science masters and I'm finding myself increasingly turning to youtube and getting a primer/intuition of a concept before listening to my actual lectures. This week is CLT and law of large numbers and after this video I'm in a lot better shape to assimilate the material. Thank you!

  • @icathianrain2298
    @icathianrain2298 4 года назад

    tbh literally the best video on CLT I've ever watched, thank you so much, thank those statisticians so much

  • @sams5922
    @sams5922 3 года назад

    Thank you so much for these videos. Between the textbook and my professor, I could NOT figure this out till I watched your video. They have been so helpful, especially with everything being online/ remote now.

  • @jbstatistics
    @jbstatistics  10 лет назад +4

    There are different formats of standard normal table. I have videos outlining how to use a standard normal table for two main types of standard normal table (one that gives the area to the left of the value of z, and the other that gives the area between 0 and a positive value of z).

  • @sammendimasa784
    @sammendimasa784 7 лет назад +2

    Thank you so much for these videos. I am taking stat for engineers and I am literally teaching myself everything by watching your videos.

  • @karltorento3358
    @karltorento3358 8 лет назад +11

    I love you so much man! I'm studying for the CFAs and your video explained CLT perfectly :D

    • @jbstatistics
      @jbstatistics  8 лет назад +1

      Thanks! I'm glad I could be of help!

  • @whutismyname
    @whutismyname 6 лет назад

    Definitely the best video on explaining CLT! Thank you!

  • @senorfootball2460
    @senorfootball2460 7 лет назад +30

    Very well explained, and good examples! I find examples are extremely important to learn stats, so this helped.

    • @jbstatistics
      @jbstatistics  7 лет назад +3

      Thanks! I'm glad you found it helpful.

  • @jbstatistics
    @jbstatistics  11 лет назад

    Thanks for the compliment! I'm glad you liked it, and I'm very glad to be of help!

  • @Tiffany_3x
    @Tiffany_3x 4 года назад

    God Bless You! I am a little more confident about the final exam after watching your series of videos! Thank You!

  • @gialinhpham6303
    @gialinhpham6303 3 года назад

    Thank you very much for your admirable kindness. Your explanation is so comprehensive that I can save much time.

  • @anthonyvillarama6806
    @anthonyvillarama6806 Год назад

    Bravo. His teaching is beyond perfection. Amazing.

  • @diencai1812
    @diencai1812 4 года назад

    I have learnt so much watching your statistics videos. Thank you for sharing your insight on the subject

  • @malugaoaprilrose3946
    @malugaoaprilrose3946 3 года назад

    Thank you so much for this video, especially the word problem that you gave. It helped me pinpoint the main idea of this topic. You are such a blessing for learners during this quarantine. Thank you very much.

  • @rickgeng463
    @rickgeng463 5 лет назад +1

    I can’t tell you how thankful I am of this video!!!

  • @QuadDrums
    @QuadDrums 9 лет назад +3

    I really appreciate these videos, I hope to be a teacher who can help my students understand as well as you do.

  • @RahulBhasin
    @RahulBhasin 8 лет назад +3

    One of the best video for understanding CLT.. thanks a lot...!!!

  • @ratikeshsharma1624
    @ratikeshsharma1624 10 месяцев назад

    This is magic how you taught us this difficult concept easily.

  • @IIAndersII
    @IIAndersII 7 лет назад +2

    I use your videos as inspiration when I prepare for teaching my class - thank you for the perfect explanation

    • @jbstatistics
      @jbstatistics  7 лет назад

      I'm glad to hear that! Thanks so much for the compliment!

  • @raviteja5125
    @raviteja5125 6 лет назад

    I have been confused for years but not anymore. Excellent explanation! Thank you very very much.

  • @armanozcan7983
    @armanozcan7983 4 года назад +1

    This channel never disappoints.

  • @ajklein40
    @ajklein40 7 лет назад +1

    This was super helpful, thank you! I like how clearly into statistics you are. Really helps me to pay attention.

  • @deepeshnair4375
    @deepeshnair4375 3 года назад

    Clean sweep!! Clarity is wonderful!

  • @jbstatistics
    @jbstatistics  10 лет назад

    That's great Vinayak! I'm glad to hear it!

  • @parthbhatia2478
    @parthbhatia2478 3 месяца назад

    Amazing way of explaining CLT. Thank you so much!!

  • @charitharatnayake9147
    @charitharatnayake9147 7 лет назад +2

    WOAAAHH NICE BOY!!! This will exactly helps me to pass tomorrow's exam...

  • @xiwang4918
    @xiwang4918 8 лет назад

    Really clear explanation. Thank you a lot! I have understand this more!

  • @meraj786ful
    @meraj786ful Год назад

    Best Video explanation on CLT on the whole youtube. Thanks a lot

  • @sofianb86
    @sofianb86 4 года назад

    This was an amaizing explanation. It was very helpful, thank you!

  • @adhoc3018
    @adhoc3018 3 года назад +1

    Hey man, I've been watching some of your videos and they have really helped me to understand better statistics. In the past it seemed so difficult to me, but thanks to you I'm making good progress. I hope you are doing fine :)

  • @samad.chouihat4222
    @samad.chouihat4222 3 года назад

    the number of views in this channel does not match the number of subscriptions . This guy should have more than a million subscritptions . i come here whenever i get confused about something , thanks dude and greetings from Algerian Sahara

  • @atikahauliaputri6677
    @atikahauliaputri6677 7 лет назад

    Thank you so much for the beautiful explanation! It helps me a lot, I'm not kidding.

  • @jbstatistics
    @jbstatistics  11 лет назад

    You are very welcome, and I'm glad to be of help!

  • @jbstatistics
    @jbstatistics  11 лет назад +2

    You're welcome, and thanks for the compliment!

  • @aaronforester82
    @aaronforester82 10 лет назад +95

    Best video on Central Limit Theorem. Do you have a virtual tip jar I can throw some virtual dollars in?

    • @jbstatistics
      @jbstatistics  10 лет назад +92

      Thanks for the compliment. I'm just glad I can be of help. Cheers.

    • @Dennaton
      @Dennaton 4 года назад +39

      @@jbstatistics what a legend

    • @regularviewer1682
      @regularviewer1682 3 года назад +1

      @@jbstatistics I think I can speak for everyone when I say that we collectively refuse. Please give us a tip jar 😂

    • @sanchitakanta1018
      @sanchitakanta1018 3 года назад

      @@jbstatistics In the last example while we are calculating the probability of the average being greater than 1.25 sigma.
      The average is always in the middle of the normal distribution right?
      Z value =0.
      Then how can it be greater than 1.25 Sigma?
      Can you please explain.

    • @jbstatistics
      @jbstatistics  3 года назад +1

      @@sanchitakanta1018 You're mixing up the true (theoretical) mean, and the sample mean. The normal distribution is centred at the true mean. The question asks for a probability involving the sample mean.

  • @jbstatistics
    @jbstatistics  10 лет назад

    Thanks! I'm glad to hear it helped.

  • @jbstatistics
    @jbstatistics  10 лет назад

    When we draw a single sample, the sample mean will take on a single value. But if we were to draw a different sample, the sample mean would take on a different value. Before we draw our sample, we can think of the sample mean as a random variable with a probability distribution. The CLT tells us something about that probability distribution. You might want to watch my video "Sampling Distributions: Introduction to the Concept", which discusses this notion in greater detail. Cheers.

  • @betsegawlemmaamersho1638
    @betsegawlemmaamersho1638 7 лет назад

    All your videos I watched are concise and simple. I do not think any of the concepts can be explained more simpler. You are amazing teacher

  • @mathhack8647
    @mathhack8647 2 года назад

    Woke up, checked this Vidéo before even have my coffee, I knew C.L.T longtime ago but now I go it much better. now I can explain it to my daughter in a btter bay . Thanks you .

  • @apowers7783
    @apowers7783 3 года назад

    For what it’s worth, I would just like to let you know that your hard work does not go unappreciated!

  • @Emmzillla
    @Emmzillla 10 лет назад

    Great video! I mised the lecuture on CLT in math class due to jury duty. This video helped so much!

  • @jbstatistics
    @jbstatistics  10 лет назад

    You are very welcome Tobias! I hope your studies are going well!

  • @jaekl3337
    @jaekl3337 7 лет назад

    You sir deserve a medal for explaining this stuff in a 13 minute video!! I was so confused.. thanks !!!!!!

  • @annasarahkramerfazendeiro8030
    @annasarahkramerfazendeiro8030 5 лет назад

    Thank you so much! This was very well explained!

  • @jamesfullwood7788
    @jamesfullwood7788 4 года назад

    This video was excellent. Thank you for this!!!!

  • @biswajitnandi4304
    @biswajitnandi4304 7 лет назад +2

    WOW ! nice explanation ! easy, understandable and well described !

  • @hashmarker4994
    @hashmarker4994 3 года назад

    Thank You!Its been Years since the Video has been Uploaded,But still Thanks!!

  • @fisslimen
    @fisslimen 7 лет назад

    Great example! Helped me understand why CLT is used

  • @JimbobFaz
    @JimbobFaz 4 года назад +1

    This is all finally making sense! 😀 After many years of sort of getting this I understand it now so much better. So basically Xbar is a random variable all of it's own, with it's own mean and s.d ect, and varies depending on which sample we randomly pick from the population right? When I think about it like this it makes a lot more sense. Thanks for these brilliant videos.

  • @roadkil899
    @roadkil899 9 лет назад +2

    I have an stat exam tommorow.. You saved me... Thank you so much Sir :)

  • @stefanofedele4820
    @stefanofedele4820 6 лет назад

    Thank you so much for clarifying me such an important concept of statistics!

  • @anuragsahu2893
    @anuragsahu2893 3 года назад

    This is amazingly beautiful. How am I going to tell my mentor "please watch this video" :) Thanks for crystal clear explanation with robust example.

  • @afmmarques
    @afmmarques 11 лет назад

    Another great explanation, thanks! Greetings from Portugal

  • @LinLin009
    @LinLin009 11 лет назад

    great exploration with nice illustration!
    Thanks,

  • @AnneAnimanga
    @AnneAnimanga 5 лет назад

    love this !
    im like binge watching all your vids .

  • @ravimishra339
    @ravimishra339 6 лет назад

    Amazing, great explanation!!

  • @elvinjafarli6257
    @elvinjafarli6257 6 лет назад

    Great explanation, which means you know very well what you are teaching. Thanks!

  • @gautamhathiwala7267
    @gautamhathiwala7267 3 года назад

    So beautifully explained....
    Thank you so much, Sir....

  • @grantx3026
    @grantx3026 9 лет назад +1

    Crystal Clear now. GJ!

  • @BinethTharupama
    @BinethTharupama 8 лет назад +6

    Thank you very much,
    Understood every single thing..!! (Y)

  • @dulanjanaliyanagama3823
    @dulanjanaliyanagama3823 7 лет назад

    The best and clearest explanation I have ever found!!!!!!!!
    Keep the good job #######

    • @jbstatistics
      @jbstatistics  7 лет назад

      Thanks so much for the kind words!

  • @naved591
    @naved591 3 года назад

    Thank you so much professor. Finally I grasp it

  • @PassengerT_
    @PassengerT_ 8 лет назад +5

    Really explicit explanation! good job!

    • @jbstatistics
      @jbstatistics  8 лет назад +1

      +Weiji Hong Thanks!

    • @John-lf3xf
      @John-lf3xf 6 лет назад

      Weiji Hong I don't think you know what explicitly means

  • @jbstatistics
    @jbstatistics  10 лет назад

    You are very welcome Dineo!

  • @shuaibx360
    @shuaibx360 8 лет назад

    good explanation, appreciate the work!!

  • @abhinavsharma1976
    @abhinavsharma1976 2 года назад

    Best explanation so far!

  • @nadiar.syaripul
    @nadiar.syaripul 8 лет назад

    thanks, I enjoyed your explanation, really clear in my head. :))

  • @FHO72
    @FHO72 11 лет назад

    i love how this is just straight to the point. I hate when videos and BOOKS always start with an example. just give me the god damn definition already! so thanks.

  • @emadharazi5044
    @emadharazi5044 3 года назад

    You make the best videos. You may not touch on all the topics that others do, but the fact that you have one of the lowest number of subscribers on RUclips is criminal. I hope that changes because your focus to simplify and emphasise certain points within a topic is second to none. Thank you and please keep them coming.

  • @jbstatistics
    @jbstatistics  10 лет назад

    Hi Karthik. It is the number of observations used to calculate the mean that is important. In practice we typically draw only a single sample. If that sample has 5000 observations, say, and our sample mean is thus the mean of 5000 observations, then the sampling distribution of the sample mean will be approximately normal in that situation.

  • @jbstatistics
    @jbstatistics  10 лет назад

    That's good to hear!

  • @gilgil5602
    @gilgil5602 6 лет назад +6

    Very good video! It tells us why CLT is such important. I was wondering whether you could make another video explaining the CLT intuitively? Why the limiting distribution is normal instead of exponential, gamma, or any other distributions? What is the essence of the CLT?

  • @garthenar
    @garthenar 8 лет назад

    clear, concise and professional. perfect lecture.

  • @brunoassumpcao
    @brunoassumpcao 3 года назад

    My former statistics professor (great dude) used to say that without central limit theorem, we wouldn't be here. I laughted then, I cried over my tests, then I eventually learned... and everything makes sense once we realize the awesomeness of this mathematical theorem. Now I do the same for my colleagues :)

  • @armandpirgu3709
    @armandpirgu3709 5 лет назад

    Very well explained, i would recommend this to everyone that is banging their head on the wall, trying to figure out. Thank you

  • @Maya_s1999
    @Maya_s1999 8 лет назад

    I just keep coming here despite all the textbooks I keep buying! Thanks so much again for being on Yotube.

  • @wenguanshen7275
    @wenguanshen7275 7 лет назад

    Man, you are just so genius !

  • @uclalse
    @uclalse 6 лет назад

    Best video this far on the CLT! I have watched around 10. This one did it.

    • @jbstatistics
      @jbstatistics  6 лет назад

      I'm glad to be of help. Thanks for the compliment!

  • @hounamao7140
    @hounamao7140 8 лет назад +30

    you're a fucking god of explanation!

  • @Zerpentile93
    @Zerpentile93 10 лет назад +1

    Your videos are as good as Khan Academy. Thanks for helping us with the maths!

  • @arjetaallamani5930
    @arjetaallamani5930 4 года назад

    You are the greatest!Thanks a lot!

  • @sarthakraheja13
    @sarthakraheja13 2 года назад

    Awesome explanation. Thanks.

  • @ethenhumbert9905
    @ethenhumbert9905 7 лет назад +1

    I learn more in 13:13 with your explanations than three hours in class each week plus tutoring.

  • @Omy0my
    @Omy0my 10 лет назад +1

    you are an amazing teacher! thank you very much!!

    • @jbstatistics
      @jbstatistics  10 лет назад

      You are very welcome Omy0my! Thank you for the compliment!

  • @seb6302
    @seb6302 3 года назад

    Loved this!

  • @jbstatistics
    @jbstatistics  11 лет назад

    I just tried the video, and it plays all the way through for me. You're the first person to bring up a possible problem, so there's a good chance it's a problem on your end. Perhaps try it in a different browser, or after rebooting, or on another computer. I'd like to know if there's a problem, so let me know if you can't sort it out.
    How can you find more of my videos? You can search my channel, or look through the playlists. I don't have them organized on a website just yet.

  • @jbstatistics
    @jbstatistics  10 лет назад

    Hi Vinayak. The very last example involves the average salary of 100 employees. The distribution of individual salaries is probably not normal, but the central limit theorem tells us that the distribution of the mean salary of 100 employees will be approximately normal. That's what allows us to calculate an approximate probability based on the normal distribution. We're drawing a single sample, as we typically do, but it's a single sample of 100 employees.

  • @arkadipbasu2348
    @arkadipbasu2348 2 года назад

    Wonderful Explanation, thanks a lot

  • @saptarc
    @saptarc 7 лет назад

    Thanks. Awesome tutorial and example.

    • @jbstatistics
      @jbstatistics  7 лет назад

      You are very welcome. Thanks for the compliment!

  • @proce1193
    @proce1193 11 лет назад

    examples help a lot, thank you so much!!!!!

  • @dineomakhata5530
    @dineomakhata5530 10 лет назад

    This was very helpful.. Thanx alot.. Please keep on doing such a good job.. Once again, thanx

  • @jbstatistics
    @jbstatistics  11 лет назад

    You're welcome! I hope your exam went well.

  • @jbstatistics
    @jbstatistics  10 лет назад

    Hi Vinayak. In its simplest form, the CLT applies to the mean of independent and identically distributed random variables. If we are sampling from a finite population, then if the sampling is done without replacement the observations are not independent. So to perfectly satisfy the conditions of the CLT, we'd need to be sampling with replacement. But if we are sampling only a small fraction of a large finite population, then there isn't much of a difference between with and without replacement.