Legendre Decomposition for Tensors
2018-02-13NeurIPS 2018Code Available0· sign in to hype
Mahito Sugiyama, Hiroyuki Nakahara, Koji Tsuda
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Abstract
We present a novel nonnegative tensor decomposition method, called Legendre decomposition, which factorizes an input tensor into a multiplicative combination of parameters. Thanks to the well-developed theory of information geometry, the reconstructed tensor is unique and always minimizes the KL divergence from an input tensor. We empirically show that Legendre decomposition can more accurately reconstruct tensors than other nonnegative tensor decomposition methods.