2021
DOI: 10.48550/arxiv.2112.12433
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Sparse-softmax: A Simpler and Faster Alternative Softmax Transformation

Abstract: The softmax function is widely used in artificial neural networks for the multiclass classification problems, where the softmax transformation enforces the output to be positive and sum to one, and the corresponding loss function allows to use maximum likelihood principle to optimize the model. However, softmax leaves a large margin for loss function to conduct optimizing operation when it comes to high-dimensional classification, which results in low-performance to some extent. In this paper, we provide an em… Show more

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