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Equivalent conditions of complete convergence for weighted sums of sequences of i. i. d. random variables under sublinear expectations

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 Added by Mingzhou Xu
 Publication date 2021
  fields
and research's language is English




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The complete convergence for weighted sums of sequences of independent, identically distributed random variables under sublinear expectations space was studied. By moment inequality and truncation methods, we establish the equivalent conditions of complete convergence for weighted sums of sequences of independent, identically distributed random variables under sublinear expectations space. The results extend the corresponding results obtained by Guo (2012) to those for sequences of independent, identically distributed random variables under sublinear expectations space.

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98 - Mingzhou Xu , Kun Cheng 2021
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169 - Shige Peng 2008
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78 - Shui Feng 2021
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