happyPydog / NCTU-ML2020

2020 NCTU Machine Learning (交大機器學習-簡仁宗)

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NCTU 2020 Machine Learning Course

HomeWork

HW 1

  • Bayesian Linear Regression (手寫)
  • Linear Regression

HW 2

  • Sequence Bayesian Regression
  • Logistic Regression

HW 3

  • Gaussian Process
  • Support Vector Machine
  • Gaussian Minxtures Model

Midterm and Final Exam

考試規則: 可以帶一張 A4 大抄 (雙面皆可使用)

準備重點: 字抄小一點 (PS.帶放大鏡?)

Midterm

  1. Information Theory

    • 證明 Convex function 的性質 (tips: Jensen's Inequality) (text book P.57)
    • 說明為什麼 KL-divergence 恆大於 0
    • Kullback-Leibler divergence between the joint distribution (text book P.57)
  2. 習題 1.31 (text book P.65) (PS.這題不確定)

  3. 習題 2.5 (text book P.128)

  4. Exponential family and sufficient statistics

    • 用指數族特性找出 Bernoulli 和 Gaussian 的充份統計量
    • Maximum likelihood and sufficient statistics (text book P.116)
  5. The Evidence Approximation

    • Evaluation of the evidence function (text book P.166、167)
    • Maximizing the evidence function (text book P.168、169)
  6. Probabilistic Generative Models Maximum likelihood solution (text book P.200、201)

Final

因為期末考卷沒有發回來,下面列出我有印象的考題:

  1. Nadaraya-Waston Model

  2. Support Vector Machine

    • Soft-Margin 、 Hard-Margin 兩者有何差異
  3. EM Algorithm

    • EM Algorithm in General(text book 9.4)

======= 以上配分 75 % =======

  1. Logistic Regression (手寫code) 25%

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2020 NCTU Machine Learning (交大機器學習-簡仁宗)


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