中文

Cross-Domain Lossy Compression via Constrained Minimum Entropy Coupling

信息论 2026-05-12 v1 机器学习 math.IT

摘要

This paper studies cross-domain lossy compression through the lens of minimum entropy coupling (MEC) with rate and classification constraints. In this setting, an encoder observes samples from a degraded source domain, while the decoder is required to generate outputs following a prescribed target distribution and to preserve information relevant to a downstream classification task. Motivated by logarithmic-loss distortion, we adopt an information-based objective that maximizes the coupling strength between the source and reconstruction, rather than minimizing a sample-wise distortion. Under common randomness, we formulate a rate-constrained MEC problem (MEC-B) and show that the intermediate representation can be removed without loss of optimality, yielding an equivalent deterministic coupling formulation. For Bernoulli sources, closed-form expressions are derived with and without classification constraints. In addition, we implement a neural restoration framework using quantization, entropy modeling, distribution matching, and classification regularization. Experiments on MNIST super-resolution and SVHN denoising show that increasing the available rate improves classification accuracy and yields more informative reconstructions.

关键词

引用

@article{arxiv.2605.09833,
  title  = {Cross-Domain Lossy Compression via Constrained Minimum Entropy Coupling},
  author = {Nam Nguyen and Hassan Tavakoli and An Vuong and Thinh Nguyen and Bella Bose},
  journal= {arXiv preprint arXiv:2605.09833},
  year   = {2026}
}