Weight Decay
Weight decay, commonly known as regularization, is a widely used technique for regularizing parametric machine learning models. Instead of directly manipulating the number of parameters, weight decay operates by restricting the values that the parameters can take. The technique is motivated by the intuition that the simplest function is , and the complexity of a linear function, such as , can be measured by the distance of its parameters from zero.
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Dive into Deep Learning @ D2L
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Which of these techniques are useful for reducing variance (reducing overfitting)?
ElasticNet Regression
If your Neural Network model seems to have high variance, what of the following would be promising things to try?
Regularization in ML and DL
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Dropout in Deep Learning
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Tangent Distance Algorithm
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Appropriate Regularization/ Representation
Weight Decay
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