On smooth approximation of probabilistic criteria in stochastic programming problems

Q3 Mathematics SPIIRAS Proceedings Pub Date : 2020-02-07 DOI:10.15622/10.15622/sp.2020.19.1.7
V. Sobol, R. Torishnyi
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引用次数: 4

Abstract

In this paper we study one of the possible variants of smooth approximation of probability criteria in stochastic programming problems. The research is applied to the optimization problems of the probability function and the quantile function for the loss functional depending on the control vector and one-dimensional absolutely continuous random variable. In this paper we study one of the possible variants of smooth approximation of probability criteria in stochastic programming problems. The research is applied to the optimization problems of the probability function and the quantile function for the loss functional depending on the control vector and one-dimensional absolutely continuous random variable.  The main idea of the approximation is to replace the discontinuous Heaviside function in the integral representation of the probability function with a smooth function having such properties as continuity, smoothness, and easily computable derivatives. An example of such a function is the distribution function of a random variable distributed according to the logistic law with zero mean and finite dispersion, which is a sigmoid. The value inversely proportional to the root of the variance is a parameter that provides the proximity of the original function and its approximation. This replacement allows us to obtain a smooth approximation of the probability function, and for this approximation derivatives by the control vector and by other parameters of the problem can be easily found.  The article proves the convergence of the probability function approximation obtained by replacing the Heaviside function with the sigmoidal function to the original probability function, and the error estimate of such approximation is obtained. Next, approximate expressions for the derivatives of the probability function by the control vector and the parameter of the function are obtained, their convergence to the true derivatives is proved under a number of conditions for the loss functional. Using known relations between derivatives of probability functions and quantile functions, approximate expressions for derivatives of quantile function by control vector and by the level of probability are obtained. Examples are considered to demonstrate the possibility of applying the proposed estimates to the solution of stochastic programming problems with criteria in the form of a probability function and a quantile function, including in the case of a multidimensional random variable. 
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随机规划问题中概率准则的光滑逼近
本文研究了随机规划问题中概率准则光滑逼近的一种可能变体。研究了基于控制向量和一维绝对连续随机变量的损失泛函的概率函数和分位数函数的优化问题。本文研究了随机规划问题中概率准则光滑逼近的一种可能变体。研究了基于控制向量和一维绝对连续随机变量的损失泛函的概率函数和分位数函数的优化问题。近似的主要思想是将概率函数的积分表示中的不连续的Heaviside函数替换为具有连续性、光滑性和易于计算导数等性质的光滑函数。这种函数的一个例子是一个随机变量的分布函数,它按照logistic规律分布,具有零均值和有限色散,它是一个s型。与方差的根成反比的值是一个参数,它提供原始函数及其近似值的接近度。这种替换使我们能够获得概率函数的光滑近似值,并且对于这个近似值,可以很容易地找到由控制向量和由问题的其他参数的导数。本文证明了用s型函数代替Heaviside函数对原概率函数近似得到的概率函数近似的收敛性,并得到了该近似的误差估计。其次,得到了控制向量和函数参数对概率函数求导的近似表达式,证明了损失泛函在若干条件下收敛于真导数。利用已知的概率函数和分位数函数的导数关系,得到了分位数函数的导数按控制向量和按概率水平的近似表达式。本文考虑了一些例子,以证明将所提出的估计应用于具有概率函数和分位数函数形式的随机规划问题的解决的可能性,包括在多维随机变量的情况下。
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来源期刊
SPIIRAS Proceedings
SPIIRAS Proceedings Mathematics-Applied Mathematics
CiteScore
1.90
自引率
0.00%
发文量
0
审稿时长
14 weeks
期刊介绍: The SPIIRAS Proceedings journal publishes scientific, scientific-educational, scientific-popular papers relating to computer science, automation, applied mathematics, interdisciplinary research, as well as information technology, the theoretical foundations of computer science (such as mathematical and related to other scientific disciplines), information security and information protection, decision making and artificial intelligence, mathematical modeling, informatization.
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