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arxiv: cs/0609096 · v2 · submitted 2006-09-18 · 💻 cs.CC · cs.IT· math.IT

Finite-State Dimension and Lossy Decompressors

classification 💻 cs.CC cs.ITmath.IT
keywords finite-statedecompressionachievabledecompressorsdifficultydimensionlossyoptimal
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This paper examines information-theoretic questions regarding the difficulty of compressing data versus the difficulty of decompressing data and the role that information loss plays in this interaction. Finite-state compression and decompression are shown to be of equivalent difficulty, even when the decompressors are allowed to be lossy. Inspired by Kolmogorov complexity, this paper defines the optimal *decompression *ratio achievable on an infinite sequence by finite-state decompressors (that is, finite-state transducers outputting the sequence in question). It is shown that the optimal compression ratio achievable on a sequence S by any *information lossless* finite state compressor, known as the finite-state dimension of S, is equal to the optimal decompression ratio achievable on S by any finite-state decompressor. This result implies a new decompression characterization of finite-state dimension in terms of lossy finite-state transducers.

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