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Information Compression in the AI Era: Recent...
Journal article

Information Compression in the AI Era: Recent Advances and Future Challenges

Abstract

This survey article focuses on the emerging connections between machine learning and data compression. While the fundamental limits of classical (lossy) data compression are well-established through rate-distortion theory, recent advancements have uncovered new theoretical analyses and application areas inspired by machine learning. We review recent works on task-based and goal-oriented compression, rate-distortion-perception theory, and compression for estimation and inference. Deep learning-based approaches have provided natural, data-driven methods for compression. Accordingly, we survey recent efforts in applying deep learning techniques to task-based or goal-oriented compression, as well as image/video compression and transmission. Additionally, we discuss the potential use of large language models for text compression. Finally, we outline future research directions in this promising field.

Authors

Chen J; Fang Y; Khisti A; Özgür A; Shlezinger N

Journal

IEEE Journal on Selected Areas in Communications, Vol. 43, No. 7, pp. 2333–2348

Publisher

Institute of Electrical and Electronics Engineers (IEEE)

Publication Date

July 1, 2025

DOI

10.1109/jsac.2025.3560359

ISSN

0733-8716

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