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arxiv: cs/0611073 · v2 · pith:EUL7I57Pnew · submitted 2006-11-15 · 💻 cs.IT · math.IT

Prefix Codes for Power Laws with Countable Support

classification 💻 cs.IT math.IT
keywords codesdistributionsprefixcodingcompressionconsiderknownnear-optimal
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In prefix coding over an infinite alphabet, methods that consider specific distributions generally consider those that decline more quickly than a power law (e.g., Golomb coding). Particular power-law distributions, however, model many random variables encountered in practice. For such random variables, compression performance is judged via estimates of expected bits per input symbol. This correspondence introduces a family of prefix codes with an eye towards near-optimal coding of known distributions. Compression performance is precisely estimated for well-known probability distributions using these codes and using previously known prefix codes. One application of these near-optimal codes is an improved representation of rational numbers.

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