ESE Ph.D. Thesis Defense: “Neural Compression: Estimating and Achieving the Fundamental Limits”
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Amy Gutmann Hall, Room 515
3317 Chestnut Street, Philadelphia, United States
Neural compression, which pertains to compression schemes that are learned from data using neural networks, has emerged as a powerful approach for compressing real-world data. Neural compressors often outperform classical schemes, especially in settings where reconstructions that are perceptually similar to the source are desired. Despite their empirical success, the fundamental principles governing how neural […]


