Machine learning - Maximum likelihood and linear regression

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  • čas přidán 10. 09. 2024

Komentáře • 27

  • @tonimigliato2350
    @tonimigliato2350 Před 5 lety +20

    I feel bad for people trying to learn Machine Learning and don't were lucky to find this class as I was. Thanks Prof. Freitas!

  • @nickiexu7259
    @nickiexu7259 Před 7 lety +27

    This whole set of videos on machine learning is so well done and everything was explained in molecular details. Great teacher with exceptional teaching ability! I feel truly blessed.

  • @crestz1
    @crestz1 Před 5 měsíci

    beautifully linked the idea of maximising likelihood by illustrating the 'green line' @ 51:41

  • @cakobe8
    @cakobe8 Před 8 lety +4

    I truly appreciate these lectures. Thank you very much professor, great pacing, great structure, great content!

  • @saidalfaraby
    @saidalfaraby Před 11 lety +5

    I wish i watch this video earlier before the midterm.. Cool, your explanation is always amazing.. Thank you..

  • @havalsadiq3655
    @havalsadiq3655 Před 11 lety

    Very very clear explanation, I have spent a lot of time about learning probability, just now everything became clear.
    really very smart professor!

  • @jiongwang7645
    @jiongwang7645 Před 5 lety +1

    God bless you, professor Freitas!

  • @joeleepee
    @joeleepee Před 11 lety +5

    Smart professor!

  • @gruppenzwangimweb20
    @gruppenzwangimweb20 Před 8 lety +1

    great intuition for MLE

  • @DivakarHebbar
    @DivakarHebbar Před 6 lety +2

    +1 for your sense of humor! :) Great lecture.

  • @marcuswallenberg4492
    @marcuswallenberg4492 Před 10 lety +2

    Great stuff, although I wonder, should the normalisation constant for the multivariate normal pdf at 19:00 contain a factor (2*pi)^(-n/2) (since it's stated as a general multivariate Gaussian)? If it's still supposed to be the bivariate example, I missed that...

    • @jonpit4342
      @jonpit4342 Před 3 lety

      Exactly, as you pointed out it should have negative n over 2 since it talks about n random variables

  • @yy8848
    @yy8848 Před 11 lety

    The lecture is great! It is really helpful. Thank you.

  • @AlqGo
    @AlqGo Před 7 lety

    Thank you. This lecture alone has consolidated many fragments of knowledge that I have about linear regression! It's like almost everything clicked for me. I do still have a big question. Why is the standard deviation also estimated by minimizing the log-likelihood? What makes it an appropriate estimate of the standard deviation of the same normal distribution that has the mean (x^T)*theta_ML?

  • @Gouda_travels
    @Gouda_travels Před 2 lety

    This is when got really interesting 22:02 typically, I'm given points and I am trying to learn the mu's and the sigma's

  • @funfun_sci
    @funfun_sci Před 4 lety

    awesome lecture

  • @jhonathanpedroso7103
    @jhonathanpedroso7103 Před 10 lety

    Great lesson!

  • @ahme0307
    @ahme0307 Před 11 lety

    at 1:12:38 is a bit confusing. I think it should be the information that the unfair coin toss reveals to us is less than one heads-or-tails. am I missing some thing?

    • @user-qh8zx7zo2u
      @user-qh8zx7zo2u Před 5 lety

      i'm not sure about this, but the way I undertand entropy is as a measure of randomness, thus when you have a fair coin, you have the highest entropy since all events in state space are equally likely. If you have an unfair coin you gain more information about what the value will be next time coin is flipped. If you take limiting cases you have max info gain and min entropy since every throw will result in 0 or 1. In later lectures when he talks about decision trees and information gain he explains this.

  • @SNPolka56
    @SNPolka56 Před 9 lety

    Excellent lecture ....

  • @mrf145
    @mrf145 Před 10 lety

    Superb!

  • @tdoge
    @tdoge Před 5 lety +1

    39:00 - Maximum likelihood
    45:20 - Linear regression

  • @KrishnaDN
    @KrishnaDN Před 8 lety

    Perfecto

  • @Lets_MakeItSimple
    @Lets_MakeItSimple Před 5 lety +2

    Thanks Internet for making this accessible in india.

  • @karimb.
    @karimb. Před 4 lety

    Machine learning... Linear regression