課程目錄:機器學習基礎 – 算法基礎培訓
4401 人關注
(78637/99817)
課程大綱:

          機器學習基礎 – 算法基礎培訓

 

 

 

第九講: Linear Regression
weight vector for linear hypotheses and squared error instantly calculated by analytic solution

第十講: Logistic Regression
gradient descent on cross-entropy error to get good logistic hypothesis

第十一講: Linear Models for Classification
binary classification via (logistic) regression; multiclass classification via OVA/OVO decomposition

第十二講: Nonlinear Transformation
nonlinear model via nonlinear feature transform+linear model with price of model complexity

第十三講: Hazard of Overfitting
overfitting happens with excessive power, stochastic/deterministic noise and limited data

第十四講: Regularization
minimize augmented error, where the added regularizer effectively limits model complexity

第十五講: Validation
(crossly) reserve validation data to simulate testing procedure for model selection

第十六講: Three Learning Principles
be aware of model complexity, data goodness and your professionalism

a日韩av网址