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CC · 2023年10月01日

M6 Supervised 正则化

* 问题详情,请 查看题干

NO.PZ201512020300000502

问题如下:

Assuming regularization is utilized in the machine learning technique used for executing Step 1, which of the following ML models would be least appropriate:

选项:

A.

Regression tree with pruning.

B.

LASSO with lambda (λ) equal to 0.

C.

LASSO with lambda (λ) between 0.5 and 1.

解释:

B is correct. It is least appropriate because with LASSO, when λ = 0 the penalty (i.e., regularization) term reduces to zero, so there is no regularization and the regression is equivalent to an ordinary least squares (OLS) regression.
A is incorrect. With Cla
ssification and Regression Trees (CART), one way that regularization can be implemented is via pruning which will reduce the size of the regression tree—sections that provide little explanatory power are pruned (i.e., removed).
C is incorrect. With LASSO, when λ is between 0.5 and 1 the relatively large penalty (i.e., regularization) term requires that a feature makes a
sufficient contribution to model fit to offset the penalty from including it in the model.

老师,这个Lasso是Penalized方法里的,而pruning是CART方法的后剪枝,我想问它处于两个不同方法啊?也可以用是么?

1 个答案

星星_品职助教 · 2023年10月01日

同学你好,

都可以用。无论是LASSO还是Pruning,虽然对应的算法不同,但都属于“regularization”这个大类。