WSNet: Compact and Efficient Networks Through Weight Sampling

ICML 2018 Xiaojie JinYingzhen YangNing XuJianchao YangNebojsa JojicJiashi FengShuicheng Yan

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... (read more)

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