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Persistence probability of random weyl polynomial

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 Added by Van Hao Can
 Publication date 2017
  fields
and research's language is English
 Authors Van Hao Can




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In this paper, using the method proposed by Dembo and Mukherjee [5], we obtain the persistence exponents of random Weyl polynomials in both cases: half nonnegative axis and the whole real axis. Our result is a confirmation to the predictions of Schehr and Majumdar [22].



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