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arxiv: 0909.4071 · v1 · pith:EQWT2ECNnew · submitted 2009-09-22 · 🧮 math.PR

On the first k moments of the random count of a pattern in a multi-states sequence generated by a Markov source

classification 🧮 math.PR
keywords markovallowingapproximationscountfirstgeneratedmomentsmulti-states
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In this paper, we develop an explicit formula allowing to compute the first k moments of the random count of a pattern in a multi-states sequence generated by a Markov source. We derive efficient algorithms allowing to deal both with low or high complexity patterns and either homogeneous or heterogenous Markov models. We then apply these results to the distribution of DNA patterns in genomic sequences where we show that moment-based developments (namely: Edgeworth's expansion and Gram-Charlier type B series) allow to improve the reliability of common asymptotic approximations like Gaussian or Poisson approximations.

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