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arxiv: 1604.06971 · v1 · pith:K7FNJ75Lnew · submitted 2016-04-24 · 💻 cs.IT · math.IT· math.PR

On principles of large deviation and selected data compression

classification 💻 cs.IT math.ITmath.PR
keywords alphabetdeviationlargeldotsmathcalprincipleprobabilisticrate
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The Shannon Noiseless coding theorem (the data-compression principle) asserts that for an information source with an alphabet $\mathcal X=\{0,\ldots ,\ell -1\}$ and an asymptotic equipartition property, one can reduce the number of stored strings $(x_0,\ldots ,x_{n-1})\in {\mathcal X}^n$ to $\ell^{nh}$ with an arbitrary small error-probability. Here $h$ is the entropy rate of the source (calculated to the base $\ell$). We consider further reduction based on the concept of utility of a string measured in terms of a rate of a weight function. The novelty of the work is that the distribution of memory is analyzed from a probabilistic point of view. A convenient tool for assessing the degree of reduction is a probabilistic large deviation principle. Assuming a Markov-type setting, we discuss some relevant formulas, including the case of a general alphabet.

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