Gaussian Mixture Models

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  • Опубликовано: 29 ноя 2024

Комментарии • 104

  • @trantrungnghia9642
    @trantrungnghia9642 7 месяцев назад +4

    after 2 years, finally I found someone that explains covariance the good way

  • @ppddeka5511
    @ppddeka5511 2 года назад +23

    Probably the most intuitive explanation of expectation maximization within gaussian mixture models . Cannot be more simple than this, just loved it

  • @sharathnatraj
    @sharathnatraj 3 года назад +11

    I wish every complicated model is explained with this kind of simplicity.. amazing skill. Thanks a lot

  • @maselyna313
    @maselyna313 2 года назад +11

    Being a visual learner, I'd say you are the best teacher ever! Thank you so much for this lesson it really helps a lot. Keep up the good work!

    • @dragon5038
      @dragon5038 2 года назад

      Machine Learning Mastery

  • @justin.c249
    @justin.c249 Год назад

    Best video in explaining GMM in a not-so techical way that I come across so far!

  • @minruihu
    @minruihu Год назад

    tbh I look up tons of videos.this is the only one I can understand. it is so simple, with no terminology and clear explanation with visualization.

  • @nishitskunder
    @nishitskunder 2 года назад

    After wasting time on all other videos I had lost hope to find a good video on this topic. Amazing use of visuals to support the explanation. You nailed it. Subscribed your channel too :)

  • @reverse_engineered
    @reverse_engineered 3 года назад +24

    Great video Luis. I think this is a very clear and concise explanation of Gaussian Mixture Models.
    One thing you could do to improve your videos is to focus on the audio quality. The volume levels varied considerably between parts, as did the sound of the vocals (echo, room tone), and the instrumental covered your voice for the first minute or so. Using a consistent recording setup with some curtains or sound absorbing foam will help to keep the reflections down and give a consistent sound. Using a compressor on your audio track and adjusting your levels both during recording and during mixing to get consistent audio levels will help to keep the volume consistent. A quick A/B listen of each part compared to each other will also help to tell if things are inconsistent and need to be adjusted.
    I think your illustrations are excellent and the explanations are very clear. You seem to achieve a great balance between giving simplified explanations while still providing correct and accurate explanations.
    Great job! I look forward to the next video. And I still plan to read over your grokking machine learning book too!

  • @donaastor
    @donaastor Год назад

    DAMN this is exactly what I needed for my project. One of the best RUclips's recommendations so far. Thank you.

  • @asdasvcxvwe5114
    @asdasvcxvwe5114 2 года назад

    Thank you VERY MUCH. i have been struggling with understanding the GMM for two whole days and no book or video could explain it very intuitively like you have done, i truly appreciate it

  • @AnirbanDasgupta
    @AnirbanDasgupta 3 года назад +1

    Never saw a better explanation of GMMs

  • @Ninjasharkcat
    @Ninjasharkcat 7 месяцев назад +1

    Wow excellent video, without any background on GMM I was able to understand the concept and logic behind it. Gracias!!

  • @mr_possible6197
    @mr_possible6197 10 месяцев назад

    This is the best channel for such ML stuff that I have come across by far! Thanks!!!

  • @land_sea
    @land_sea Год назад

    Best video I found on understanding the top level concept of Gaussian Mixture Models, thanks!

  • @lancezhang892
    @lancezhang892 6 месяцев назад

    Thank you,professor,you have saved my life.

  • @dhruvrnaik
    @dhruvrnaik 2 года назад

    Please keep making videos. I've never understood concepts better than when watching your videos

  • @eliebordron5857
    @eliebordron5857 2 года назад +1

    This is so clear, thank you. perfect for learning quickly and in detail how Gaussian mixture models work.

  • @pupsiklat1308
    @pupsiklat1308 3 года назад

    The best video about GMM by far! Thank you!

  • @ayushagarwal69
    @ayushagarwal69 Год назад

    Loved the visuals , the maths part is so confusing to visualize !! Thanks

  • @amrapalisamanta5085
    @amrapalisamanta5085 7 месяцев назад

    I just needed a beginner level understanding and this video was amazing.

  • @dhinas9444
    @dhinas9444 3 года назад +7

    I love the clear visualizations! Thank you for your great work. :)

  • @tashfiashamim
    @tashfiashamim 6 месяцев назад

    What an intuitive explanation! Kudos to you!

  • @konconsu4013
    @konconsu4013 Год назад

    thanks, this is the first time I understant how it works!

  • @mariellakhoury3127
    @mariellakhoury3127 Год назад

    Thank you for the video. It is extremely helpful for me as a visual learner.

  • @its_me7363
    @its_me7363 3 года назад +5

    Again a very informative video...Can You please make playlist explaining all machine learning algorithms and then deep learning? I know you are busy person...it's just that I and many people like myself really learn from your videos and if they are in order it's really easy to implement and become knowledgeable. Thanks for all your time and great videos.

    • @SerranoAcademy
      @SerranoAcademy  3 года назад +1

      Thank you! :)
      I have everything organized by topic here: serrano.academy , otherwise, you can also look at the channel page: ruclips.net/user/LuisSerrano, where a bunch of playlists appear more organized. I hope that helps. Happy learning!

    • @its_me7363
      @its_me7363 3 года назад

      @@SerranoAcademy yes but is not complete.

  • @blesucation4417
    @blesucation4417 11 месяцев назад +1

    Just want to leave a comment so that more people could learn from your amazing videos! Many thanks for the wonderful and fun creation!!!

  • @siyuancheng9575
    @siyuancheng9575 3 года назад +1

    Jumped from the Standford cs229 class to this one, love the visualization, totally beats the Standford class

  • @thomasrimer1611
    @thomasrimer1611 2 года назад

    Best video on GMMs. Thank you!

  • @hadjerbounazou5248
    @hadjerbounazou5248 3 года назад

    thank you for the best explanation of GMMs

  • @neox357
    @neox357 3 года назад +3

    Superb! Am glad I held this long to read abt GMMs, till your explanatory video came 😄
    Please do an Attention/Transformer video

    • @SerranoAcademy
      @SerranoAcademy  3 года назад +3

      Thank you, and thanks for the suggestion! Definitely been looking at attention/transformers. In the meantime, check out this material by a friend of mine jalammar.github.io/illustrated-transformer/

  • @saprativa
    @saprativa 10 месяцев назад

    best explanation on GMMs. Thank you.

  • @dipjoy5178
    @dipjoy5178 2 года назад

    Thank you sir. Learning GMM from you helped me a lot

  • @subhrajitbhowmik7540
    @subhrajitbhowmik7540 3 года назад +1

    Your videos are a great refresher brother. Really Appreciate your work.

  • @roshcoben8820
    @roshcoben8820 3 года назад +3

    Thank you so much!! I'd like to see how HMM-GMM are combined for applications such as acoustic modeling in speech recognition :) Muchas gracias!!

  • @sanjeevjangra84
    @sanjeevjangra84 7 месяцев назад

    Can't Thank you enough for this great explanation. You made it look so simple :)

  • @postnetworkacademy
    @postnetworkacademy Год назад

    As always, clear and concise explanation.

  • @yopedroaaron
    @yopedroaaron 3 года назад +1

    Luis, como siempre, ¡gracias!

  • @vaishnavejp9247
    @vaishnavejp9247 Год назад

    the best video on this topic

  • @sevsesi7866
    @sevsesi7866 3 года назад

    Thanks for your great explanation. This helps me understand GMM a lot!

  • @haroldsu
    @haroldsu 2 года назад

    Thank you, Sir. A great video on GMM.

  • @yulinsun8873
    @yulinsun8873 3 года назад +1

    Clearly explained thank you so much.

  • @yingqu6932
    @yingqu6932 3 года назад +1

    Great job on introducing a concept! Thank you 😊

  • @ZinzinsIA
    @ZinzinsIA 2 года назад

    Very clear and well illustrated, many thanks !

  • @duoyizhang4665
    @duoyizhang4665 2 года назад

    Thanks! Nice figures you made in the slide!

  • @grosmanph
    @grosmanph 2 года назад

    Thanks for sharing with us. Nicely done!

  • @8eck
    @8eck 3 года назад

    Very informative and very helpful. Best explanation so far. Thank you!

  • @oxfordsculler8013
    @oxfordsculler8013 3 года назад

    Your description is well explained, with clear visuals and with a good intuitive explanation of the subject. I encourage you to spend a little money on production values, better consistent sound quality, a better less intrusive intro music and these will move you into be there with Statquest and even ThreeBlueOneBrown. Good luck.

  • @anacarolinabarreto3712
    @anacarolinabarreto3712 2 года назад

    Very clear explanation!
    Great video

  • @aashwinsharma1859
    @aashwinsharma1859 2 года назад

    Great explanation. Wonderful video

  • @MH_HD
    @MH_HD 2 года назад

    Bravo, hope to see more videos like that. That was very nice explaining. Wish to see more especially Reinforcement Learning!

    • @SerranoAcademy
      @SerranoAcademy  2 года назад

      Thanks, glad you liked it!
      Check this video out, it’s one I made on reinforcement learning! ruclips.net/video/SgC6AZss478/видео.html

  • @abhishekarora4007
    @abhishekarora4007 3 года назад

    Thank you for such an intuitive explanation! One of the best out there :)

  • @cheerioz83
    @cheerioz83 Год назад

    Fantastic explanation.

  • @ushasr2821
    @ushasr2821 3 года назад +1

    Really awesome work sir.
    Thank youuu sooo much sir. 🙂

  • @danielchacreton2401
    @danielchacreton2401 2 года назад +2

    Your videos are great, but the music is a bit loud and can be distracting.

  • @Mahmoud_Gabr
    @Mahmoud_Gabr 2 года назад

    Thank you. Very helpful video!

  • @nikihooshmand2987
    @nikihooshmand2987 Год назад

    Thank you for your great work! I really enjoy watching your videos:)

  • @tanphan3970
    @tanphan3970 3 года назад

    Thank you so much!! But how to know the new Gaussian is not converging?

  • @think9824
    @think9824 3 года назад

    very good explanation. Thank You !

  • @vgreddysaragada
    @vgreddysaragada Год назад

    very well explained

  • @haneulkim4902
    @haneulkim4902 2 года назад

    Thanks Luis, when is SVD not a good choice for reducing dimensionality?

  • @shravan6457
    @shravan6457 8 месяцев назад

    Thanks Luis 🙏

    • @SerranoAcademy
      @SerranoAcademy  7 месяцев назад

      @shravan6457, thank you so much for your really kind contribution, I really appreciate it! :)

  • @homayoungerami4176
    @homayoungerami4176 3 года назад

    thanks, it was very well explained

  • @AbdulRahman-zp5bp
    @AbdulRahman-zp5bp Год назад

    I want to see the code implementation of GMM model

  • @kumarvis01
    @kumarvis01 5 месяцев назад

    Questions: How to use fraction point to create new Gaussians, Example lets say we are in 2D with x1=2, y=8 and we find this point belongs to a Gaussian with 60% next how to use What should I do x1 = 2 * .6, y1 = 8 * .6 sort of ?? Please provide clarity on Hypothesis.

  • @yzaazou97
    @yzaazou97 2 года назад

    Thank you!

  • @tomfreeman6741
    @tomfreeman6741 Год назад

    you are doing great

  • @yashkapoor9511
    @yashkapoor9511 3 года назад

    Excellent!

  • @siyuancheng9575
    @siyuancheng9575 3 года назад

    Oh, btw, there is a typo for the normal distribution pdf, the denominator should be sqrt(2*pi) * sigma

  • @lekanadenusi462
    @lekanadenusi462 3 года назад

    Awesome content

  • @nazrulhassan6310
    @nazrulhassan6310 2 года назад

    fabulous explanation. Most of the authors try explaining the subject in machine learning mathematically using jargon and symbols which become too hard to understand.

  • @bryanbischof4351
    @bryanbischof4351 3 года назад

    This was very good.

  • @dtr_cpg
    @dtr_cpg 2 года назад

    Cool video!

  • @lukeshchettri9945
    @lukeshchettri9945 3 года назад

    Thanks Luis! very good explanation. Here you assumed that you have two clusters to being with. In many real-life cases (for example: biological datasets), we do not know how many clusters are there. In those cases, I guess we have the number of clusters itself as a parameter, and we have to play with it till we get the right number of clusters, right? If yes then how can we be sure that we got the right number of clusters if we do not know the ground truth? Do we have to employ some kind of nonparametric model for such a case? What's the justification for assuming that each cluster can be modeled by Gaussian distribution?

    • @SerranoAcademy
      @SerranoAcademy  3 года назад

      Thanks Lukesh, great question! There are several methods that can be used to figure out the ideal number of clusters, although most are heuristical methods. A very common one is the elbow method. It is explained here: ruclips.net/video/QXOkPvFM6NU/видео.html

  • @ridhamshah290
    @ridhamshah290 3 года назад

    How do you decide how many gaussian needed ?

  • @jinorohit2921
    @jinorohit2921 3 года назад

    amazingggggg video!

  • @reee896
    @reee896 7 месяцев назад

    Awesome 🎉🎉

  • @arshad1781
    @arshad1781 2 года назад

    Thanks 👍

  • @thepythonprogrammer4338
    @thepythonprogrammer4338 2 года назад

    bruh thank you so much

  • @youngzproduction7498
    @youngzproduction7498 3 года назад

    That’s a good video.

  • @mauriciosalazar2733
    @mauriciosalazar2733 3 года назад

    Luis, thanks for the video it is the same a expectation maximisation?

    • @MrMannyCalavera
      @MrMannyCalavera 3 года назад

      I would say yes: it is the application of the general EM algorithm to this concrete problem, is it right?

    • @mauriciosalazar2733
      @mauriciosalazar2733 3 года назад

      @@MrMannyCalavera Gracias por la aclaración profe

    • @MrMannyCalavera
      @MrMannyCalavera 3 года назад

      @@mauriciosalazar2733 It is just my guess, I'm waiting for the explanation of the boss :-) amazing channel!

  • @cernejr
    @cernejr 3 года назад +30

    FYI: I had to skip past the portion with music - I am not able to follow math while listening to music.

    • @ThinAirElon
      @ThinAirElon Год назад +1

      fyi... i liked music which motivates me

  • @drdr3496
    @drdr3496 3 года назад +2

    Kill the music, my man :) Otherwise great video.

  • @spark2584
    @spark2584 Год назад

    can u turn the music up even higher? We can almost hear u

  • @amritakaul87
    @amritakaul87 2 года назад

    great video sir but it would be better without the background instrumental music

  • @DerKurier6
    @DerKurier6 2 года назад +1

    Please in the next Time, make the muisc quiter. The first chapter of the Video was very difficult to understand you

  • @NoOneIsHereRightNow
    @NoOneIsHereRightNow 2 года назад +1

    turn the volume of the music down pleaseeeeeee

  • @oxfordsculler8013
    @oxfordsculler8013 3 года назад +3

    Please remove the music

  • @AbdulrahmanAlNimari
    @AbdulrahmanAlNimari 3 года назад

    I like watching your videos but music is very noisy and distracting.

  • @VijayAV-c8q
    @VijayAV-c8q Год назад +2

    Horrible background music… please upload without music

  • @jacobbarats1493
    @jacobbarats1493 2 года назад

    69

  • @javlontursunov6527
    @javlontursunov6527 2 года назад +1

    Please remove the background music

  • @miroslavdyer-wd1ei
    @miroslavdyer-wd1ei 11 месяцев назад +1

    lose the piano music. then you're good to go