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Sparse Deep Learning: A New Framework Immune to Local Traps and Miscalibration

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arxiv 2110.00653 v2 pith:V32JG4YE submitted 2021-10-01 stat.ML cs.LG

Sparse Deep Learning: A New Framework Immune to Local Traps and Miscalibration

classification stat.ML cs.LG
keywords deeplearningsparseframeworkneuralenablingissueslocal
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Deep learning has powered recent successes of artificial intelligence (AI). However, the deep neural network, as the basic model of deep learning, has suffered from issues such as local traps and miscalibration. In this paper, we provide a new framework for sparse deep learning, which has the above issues addressed in a coherent way. In particular, we lay down a theoretical foundation for sparse deep learning and propose prior annealing algorithms for learning sparse neural networks. The former has successfully tamed the sparse deep neural network into the framework of statistical modeling, enabling prediction uncertainty correctly quantified. The latter can be asymptotically guaranteed to converge to the global optimum, enabling the validity of the down-stream statistical inference. Numerical result indicates the superiority of the proposed method compared to the existing ones.

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