#43 Bayes Optimal Classifier with Example & Gibs Algorithm |ML|

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  • Опубликовано: 11 сен 2024
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Комментарии • 58

  • @chinthalaanilkumar2583
    @chinthalaanilkumar2583 2 года назад +12

    11:11 "ADHE"

  • @udaysai5034
    @udaysai5034 Год назад +7

    what you explained for optimal classifier is wrong,
    Probable classification of the new instance is obtained by combining the predictions of all hypotheses, weighted by their posterior probabilities is the concept for optimal classifier.
    So the formula you used and explained for Optimal classifier is the formula and explanation of Naive bayes

    • @SahdevSingh-io3qp
      @SahdevSingh-io3qp 5 месяцев назад +2

      all videos of this series have some type of mistakes and misguidance ( due to lack of knowledge) please don't watch this series whether you are watching for your University Exams or anything else,
      Try to read some standard books or follow some good knowledgeable person
      I am not criticising this teacher but the student should know that s/he is going wrong

    • @chandrashekar316
      @chandrashekar316 2 месяца назад

      exactly

  • @bhushandatre1508
    @bhushandatre1508 3 месяца назад

    Got the concept anf had to say your english fluency is amazing 😅 trying to catch up skills like you for my interviews !! Any tips

  • @bangtangirl6322
    @bangtangirl6322 4 месяца назад

    Mam pls cover this topics our exam is on 23 april
    Convergence and local maxima
    Representation power of feed forward networks
    Hypothesis space sreach and inductive bias
    Hidden layer representation
    Generalization
    Overfitting
    Stopping criterion
    And an example - face recognition

  • @sanathgattu1038
    @sanathgattu1038 3 года назад +10

    Make videos on Genetic algorithms also :)

  • @dipakaryal6056
    @dipakaryal6056 2 года назад +12

    while adding 0.031+0.08571 how it will be 0.27
    the result must be 0.117

  • @venkattramana3600
    @venkattramana3600 3 года назад +3

    Maam we have Compiler Design exam on 21st August (jntuh) badly need notes, Bharat Institute of engineering and technology

  • @kumarrishikesh3936
    @kumarrishikesh3936 3 года назад +25

    Ma'am ig this concept is Naive bayes classifier. Because Bayes optimal classifier has slightly different concept. Please re-check the topics =)

    • @rajkumar-uk6hk
      @rajkumar-uk6hk 2 года назад

      yes bro ur right

    • @atulyadav9712
      @atulyadav9712 2 года назад

      Yeah bro , it is naive Bayes classifier concept.

    • @bharathm5986
      @bharathm5986 Год назад

      yes bro

    • @SahdevSingh-io3qp
      @SahdevSingh-io3qp 5 месяцев назад

      all videos of this series have some type of mistakes and misguidance ( due to lack of knowledge) please don't watch this series whether you are watching for your University Exams or anything else,
      Try to read some standard books or follow some good knowledgeable person
      I am not criticising this teacher but the student should know that s/he is going wrong

  • @Karthik-il5yu
    @Karthik-il5yu 3 года назад +3

    Maam pls complete the syllabus as soon as possible we have ml exam on 23rd .JNTUH

  • @govardhanreddy1839
    @govardhanreddy1839 Месяц назад

    UNIT - III
    Bayesian learning - Introduction, Bayes theorem, Bayes theorem and concept learning, Maximum
    Likelihood and least squared error hypotheses, maximum likelihood hypotheses for predicting
    probabilities, minimum description length principle, Bayes optimal classifier, Gibs algorithm, Naïve
    Bayes classifier, an example: learning to classify text, Bayesian belief networks, the EM algorithm.
    Computational learning theory - Introduction, probably learning an approximately correct hypothesis,
    sample complexity for finite hypothesis space, sample complexity for infinite hypothesis spaces, the
    mistake bound model of learning.
    Instance-Based Learning- Introduction, k-nearest neighbour algorithm, locally weighted regression,
    radial basis functions, case-based reasoning, remarks on lazy and eager learning.

  • @amruthmanda6252
    @amruthmanda6252 Год назад +1

    your explanation is exceptional but please change that intro music . it feels like I am watching a cartoon. hope you don't mind thank you

  • @videos12318
    @videos12318 2 года назад +4

    Hlo mam.Are u from ANITS ??Becos u r explaining the exact order of our syllabus and question paper question.
    Really helped a lot . 🙏

    • @csit_coding4133
      @csit_coding4133 Год назад

      Ooo9o in order of our ii ii our ownooooooooooo op no oop our own our oo

  • @-ASravanibodla
    @-ASravanibodla 2 года назад +3

    we need more about gibs algorithm

  • @trending8237
    @trending8237 7 месяцев назад

    Mam we have CD exam on 20/2/24 plz make playlist 2,3,4,5 chapters plzz mam❤️❤️

  • @danielpauljcs
    @danielpauljcs 3 года назад +1

    👍👍👍👍

  • @TeriMusic1
    @TeriMusic1 10 месяцев назад +2

    Medam i need pdf of ml subject pdf send cheyyara please

  • @chandum8359
    @chandum8359 Год назад

    Thank you mam good explanation

  • @hell-o8470
    @hell-o8470 2 года назад +1

    THIS is NOT bayes optimal classifer, but is NAIVE BAYES classifier. I spent hours understand where I'm going wrong. Please check the formula before posting.

    • @KishorKumar-yc7kj
      @KishorKumar-yc7kj 2 года назад

      Yes, this is not Bayes Optimal Classifier.

    • @SahdevSingh-io3qp
      @SahdevSingh-io3qp 5 месяцев назад

      all videos of this series have some type of mistakes and misguidance ( due to lack of knowledge) please don't watch this series whether you are watching for your University Exams or anything else,
      Try to read some standard books or follow some good knowledgeable person
      I am not criticising this teacher but the student should know that s/he is going wrong

  • @bunnykovidh5706
    @bunnykovidh5706 3 года назад +1

    Thank you mam for helping us out 😊😊

  • @Karthik-il5yu
    @Karthik-il5yu 3 года назад +2

    🙏❤❤❤❤

  • @ramchander6719
    @ramchander6719 2 года назад +1

    Mam this is naives Bayes classier

  • @Chaitanya0220
    @Chaitanya0220 4 месяца назад

    Mam ur native language???

  • @rajalaxminayak7553
    @rajalaxminayak7553 Год назад

    Make video on t square likelihood ratio criterion with example

  • @sumanthachark
    @sumanthachark 2 года назад +2

    Gibs algorithm 10:13

  • @k.vamshi6862
    @k.vamshi6862 6 месяцев назад

    mam can i write this ans of bayes optimal and just this info of gibbs if it comes in the exam??

  • @chenamonijhansi8615
    @chenamonijhansi8615 3 года назад +2

    What if total is different in both cases

  • @duttebasa
    @duttebasa 3 года назад +2

    The total value you counted is wrong there .. 0.031+0.87= 0.11 something 😓

    • @duttebasa
      @duttebasa 3 года назад

      But apart from that great last minute explanations sis! Thank you!!

    • @Abhi007d
      @Abhi007d Год назад +1

      the value is 0.087

  • @DeepakKumar-sk4zg
    @DeepakKumar-sk4zg Год назад

    Ma'am can you please speak little bit slower its too fast 🙂

  • @afreen1319
    @afreen1319 3 года назад

    ML exam on 23-8-2021jntuh syllabus

  • @punyagonchikar7716
    @punyagonchikar7716 2 года назад

    Maam can you teach cryptography,
    Please do the needful
    Tq

  • @sculptandstyle_
    @sculptandstyle_ 2 года назад

    U just make videos theoretically
    Explain the concepts as well

  • @MOHIUDDIN-oz7vz
    @MOHIUDDIN-oz7vz 2 года назад

    Grib algorithm I didn’t get it

  • @ninjaasmoke
    @ninjaasmoke 2 года назад +2

    Please explain Gibbs algorithm properly

  • @sumathisenthil6501
    @sumathisenthil6501 2 года назад

    Madam, this is not bayes optimal classifier, don't miss guide students, please remove this video.

  • @Dileepkumar_Erra
    @Dileepkumar_Erra 2 года назад

    Gibbs algorithm detailed ga explain cheyyandi

  • @eduquest3169
    @eduquest3169 2 года назад

    please do not mislead, you are doing wrong things.

  • @mayanksharma2039
    @mayanksharma2039 5 месяцев назад

    wrong explanation, teacher is uneducated please read from books