Publication | Open Access
Soft-to-Hard Vector Quantization for End-to-End Learning Compressible Representations
262
Citations
29
References
2017
Year
Artificial IntelligenceConvolutional Neural NetworkEngineeringMachine LearningQuantization (Signal Processing)Model CompressionPattern RecognitionSparse Neural NetworkAutoencodersComputer ScienceSoft-to-hard Vector QuantizationDeep LearningNeural Architecture SearchDeep ArchitecturesCompressible RepresentationsNeural Network Compression
We present a new approach to learn compressible representations in deep architectures with an end-to-end training strategy. Our method is based on a soft (continuous) relaxation of quantization and entropy, which we anneal to their discrete counterparts throughout training. We showcase this method for two challenging applications: Image compression and neural network compression. While these tasks have typically been approached with different methods, our soft-to-hard quantization approach gives results competitive with the state-of-the-art for both.
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