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Asymptotically normal estimators for Zipf's law
Published 5 Jun 2017 in math.ST and stat.TH | (1706.01419v2)
Abstract: Zipf's law states that sequential frequencies of words in a text correspond to a power function. Its probabilistic model is an infinite urn scheme with asymptotically power distribution. The exponent of this distribution must be estimated. We use the number of different words in a text and similar statistics to construct asymptotically normal estimators of the exponent.
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