Publication | Open Access
Literature Review of Deep Network Compression
35
Citations
50
References
2021
Year
Data CompressionConvolutional Neural NetworkDeep Neural NetworksImage AnalysisMachine LearningData ScienceEngineeringPattern RecognitionQuantization MethodsAutoencodersSparse Neural NetworkModel CompressionNeural Architecture SearchComputer ScienceDeep NetworksDeep LearningDeep Network CompressionLossless Compression
Deep networks often possess a vast number of parameters, and their significant redundancy in parameterization has become a widely-recognized property. This presents significant challenges and restricts many deep learning applications, making the focus on reducing the complexity of models while maintaining their powerful performance. In this paper, we present an overview of popular methods and review recent works on compressing and accelerating deep neural networks. We consider not only pruning methods but also quantization methods, and low-rank factorization methods. This review also intends to clarify these major concepts, and highlights their characteristics, advantages, and shortcomings.
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