Information Potential Auto-Encoders

14 Jun 2017 Yan Zhang Mete Ozay Zhun Sun Takayuki Okatani

In this paper, we suggest a framework to make use of mutual information as a regularization criterion to train Auto-Encoders (AEs). In the proposed framework, AEs are regularized by minimization of the mutual information between input and encoding variables of AEs during the training phase... (read more)

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