Linearization method for solving quantile optimization problems with loss function depending on a vector of small random parameters

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作者
S. N. Vasil’eva
Yu. S. Kan
机构
[1] Moscow Aviation Institute (National Research University),
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关键词
quantile optimization; linearization method; vector of small random parameters; kernel of a probability measure;
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摘要
We propose a method for solving quantile optimization problems with a loss function that depends on a vector of small random parameters. This method is based on using a model linearized with respect to the random vector instead of the original nonlinear loss function. We show that in first approximation, the quantile optimization problem reduces to a minimax problem where the uncertainty set is a kernel of a probability measure.
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页码:1251 / 1263
页数:12
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