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Are there any machine learning algorithms, prediction models that can help me compress exponentially distributed data? I have already encoded the file using golomb codes, which definitely saves tons of space, but this is not enough -- I need compression. PAQ8L does not compress it enough.

Please ask for the file if needed.

Exponentially distributed --

{a,b,b,a,a,b,c,c,a,a,b,a,a,b,a,c,b,a,b,d}

  • A variant of Huffmann-coding maybe? – biziclop Jan 14 '11 at 18:38
  • "PAQ8L does not compress it enough." What are your expectations ? What is the size of the data and what kind of compression ratio is "enough" ? Your expectations may be too high as "unreachable". Maybe you could try cmix though (you need a lot of memory): byronknoll.com/cmix.html. – flanglet Jun 19 '16 at 23:11
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I don't think it's theoretically possible. The Golomb code is already optimal for geometrically distributed data.

  • Not true; google paq8l; it compresses the golomb coded string I am interested by at least 50%. Yes, it is definitely possible. – user562688 Jan 14 '11 at 20:18
  • As mentioned in other posts, PAQ* algorithms use a context mixing algorithm. This means, you know more about data than just "exponentially distributed". @user562688 – justin.yqyang Jun 19 '16 at 14:42
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As mentioned in other posts, PAQ* algorithms use a context mixing algorithm. This means, you know more about data than just "exponentially distributed". I think the Golomb code is still optimal if only the exponential distribution is known about the data.

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