English

WSNet: Compact and Efficient Networks Through Weight Sampling

Computer Vision and Pattern Recognition 2018-05-23 v3 Neural and Evolutionary Computing Sound Audio and Speech Processing

Abstract

We present a new approach and a novel architecture, termed WSNet, for learning compact and efficient deep neural networks. Existing approaches conventionally learn full model parameters independently and then compress them via ad hoc processing such as model pruning or filter factorization. Alternatively, WSNet proposes learning model parameters by sampling from a compact set of learnable parameters, which naturally enforces {parameter sharing} throughout the learning process. We demonstrate that such a novel weight sampling approach (and induced WSNet) promotes both weights and computation sharing favorably. By employing this method, we can more efficiently learn much smaller networks with competitive performance compared to baseline networks with equal numbers of convolution filters. Specifically, we consider learning compact and efficient 1D convolutional neural networks for audio classification. Extensive experiments on multiple audio classification datasets verify the effectiveness of WSNet. Combined with weight quantization, the resulted models are up to 180 times smaller and theoretically up to 16 times faster than the well-established baselines, without noticeable performance drop.

Keywords

Cite

@article{arxiv.1711.10067,
  title  = {WSNet: Compact and Efficient Networks Through Weight Sampling},
  author = {Xiaojie Jin and Yingzhen Yang and Ning Xu and Jianchao Yang and Nebojsa Jojic and Jiashi Feng and Shuicheng Yan},
  journal= {arXiv preprint arXiv:1711.10067},
  year   = {2018}
}

Comments

To appear at ICML 2018

R2 v1 2026-06-22T22:58:50.499Z