Literature DB >> 34310675

Artificial Neural Variability for Deep Learning: On Overfitting, Noise Memorization, and Catastrophic Forgetting.

Zeke Xie1, Fengxiang He2, Shaopeng Fu3, Issei Sato4, Dacheng Tao5, Masashi Sugiyama6.   

Abstract

Deep learning is often criticized by two serious issues that rarely exist in natural nervous systems: overfitting and catastrophic forgetting. It can even memorize randomly labeled data, which has little knowledge behind the instance-label pairs. When a deep network continually learns over time by accommodating new tasks, it usually quickly overwrites the knowledge learned from previous tasks. Referred to as the neural variability, it is well known in neuroscience that human brain reactions exhibit substantial variability even in response to the same stimulus. This mechanism balances accuracy and plasticity/flexibility in the motor learning of natural nervous systems. Thus, it motivates us to design a similar mechanism, named artificial neural variability (ANV), that helps artificial neural networks learn some advantages from "natural" neural networks. We rigorously prove that ANV plays as an implicit regularizer of the mutual information between the training data and the learned model. This result theoretically guarantees ANV a strictly improved generalizability, robustness to label noise, and robustness to catastrophic forgetting. We then devise a neural variable risk minimization (NVRM) framework and neural variable optimizers to achieve ANV for conventional network architectures in practice. The empirical studies demonstrate that NVRM can effectively relieve overfitting, label noise memorization, and catastrophic forgetting at negligible costs.
© 2021 Massachusetts Institute of Technology.

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Year:  2021        PMID: 34310675     DOI: 10.1162/neco_a_01403

Source DB:  PubMed          Journal:  Neural Comput        ISSN: 0899-7667            Impact factor:   2.026


  1 in total

1.  Integrating pathomics with radiomics and genomics for cancer prognosis: A brief review.

Authors:  Cheng Lu; Rakesh Shiradkar; Zaiyi Liu
Journal:  Chin J Cancer Res       Date:  2021-10-31       Impact factor: 4.026

  1 in total

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