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Regularization for linear regression
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2023-11-22 00:35:12
加上λ*theta平方和,可以使theta参数变小,减弱过拟合
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support vector machines
non linear decision boundary核函数
math
Multivariate Linear Regression
hypothesis function
cost function
gradient descent
Gradient Descent for Multiple Variables
Features and Polynomial Regression
Normal Equation
Octave
exercise1
Classification:logistics regression
advanced optimization
Decision Boundary
Cost function
Logistic regression cost function
Over fitting
Regularization for logistics regression
Regularization for linear regression
Gradient descent
Normal equation
exercise2
Neural network
Model Representation I
Model Representation II
Intuitions I
Intuitions II
Multiclass Classification
exercise3
Cost function
radom initialization 随机初始化
Unrolling Parameters
Gradient computation
Backpropagation Algorithm
Backward Propagation Intuition
what to do next
Prioritizing What to Work On
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