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Compression with Flows via Local Bits-Back Coding

About

Likelihood-based generative models are the backbones of lossless compression due to the guaranteed existence of codes with lengths close to negative log likelihood. However, there is no guaranteed existence of computationally efficient codes that achieve these lengths, and coding algorithms must be hand-tailored to specific types of generative models to ensure computational efficiency. Such coding algorithms are known for autoregressive models and variational autoencoders, but not for general types of flow models. To fill in this gap, we introduce local bits-back coding, a new compression technique for flow models. We present efficient algorithms that instantiate our technique for many popular types of flows, and we demonstrate that our algorithms closely achieve theoretical codelengths for state-of-the-art flow models on high-dimensional data.

Jonathan Ho, Evan Lohn, Pieter Abbeel• 2019

Related benchmarks

TaskDatasetResultRank
Lossless CompressionCIFAR10 (test)
Bits Per Dimension (BPD)3.12
30
Lossless CompressionImageNet64 (test)
BPD3.7
27
Lossless CompressionCIFAR10
BPD3.118
20
Lossless CompressionImageNet32 (test)
BPD3.88
20
Lossless Image CompressionImageNet64
BPD3.7
16
Image CompressionImageNet-32
BPD3.88
14
Image CompressionCIFAR10
BPD3.12
13
Lossless Image CompressionImageNet32
BPD3.88
13
Image CompressionImageNet 32x32 (test)
BPD3.875
13
Image CompressionImageNet 64
BPD3.7
13
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