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A new Linear Time Bi-level 1,\ell_{1,\infty} projection ; Application to the sparsification of auto-encoders neural networks

Main:7 Pages
10 Figures
Bibliography:2 Pages
Abstract

The 1,\ell_{1,\infty} norm is an efficient-structured projection, but the complexity of the best algorithm is, unfortunately, O(nmlog(nm))\mathcal{O}\big(n m \log(n m)\big) for a matrix n×mn\times m.\\ In this paper, we propose a new bi-level projection method, for which we show that the time complexity for the 1,\ell_{1,\infty} norm is only O(nm)\mathcal{O}\big(n m \big) for a matrix n×mn\times m. Moreover, we provide a new 1,\ell_{1,\infty} identity with mathematical proof and experimental validation. Experiments show that our bi-level 1,\ell_{1,\infty} projection is 2.52.5 times faster than the actual fastest algorithm and provides the best sparsity while keeping the same accuracy in classification applications.

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