On impact of statistical estimates on precision of stochastic optimization

IF 0.5 Q4 ECONOMICS
P. Volf
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引用次数: 0

Abstract

This paper studies the consequences of imperfect information for the precision of stochastic optimization. In particular, it is assumed that the stochastic characteristics of an optimization problem depend on unknown parameters estimated from available data. First, a theoretical result is presented, showing that consistent parameters estimation leads to consistent optimization. Further, a type of the studied models is specified; it is assumed that the random variables present in the optimization problem are influenced by covariates. This influence is expressed via a parametric regression model, whose parameters have to be estimated and used instead of the unknown correct parameters values. The objective is then to explore, with the aid of simulations, the imprecision of the optimization based on these estimates. Several types of regression models are recalled, the variability of estimates and the related precision of sub-optimal solutions is studied in detail on an example dealing with optimal maintenance. The impact of random right-censoring on the deterioration of precision is studied as well.
统计估计对随机优化精度的影响
本文研究了不完全信息对随机优化精度的影响。特别地,假设优化问题的随机特性取决于从可用数据估计的未知参数。首先,给出了一个理论结果,表明一致参数估计导致一致优化。此外,还指定了所研究模型的一种类型;假设优化问题中存在的随机变量受到协变量的影响。这种影响通过参数回归模型来表达,该模型的参数必须被估计和使用,而不是未知的正确参数值。然后,目标是在模拟的帮助下,探索基于这些估计的优化的不精确性。回顾了几种类型的回归模型,并以一个处理最优维护的例子详细研究了估计的可变性和次优解的相关精度。研究了随机右删失对精度下降的影响。
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来源期刊
CiteScore
1.40
自引率
0.00%
发文量
5
审稿时长
22 weeks
期刊介绍: Croatian Operational Research Review (CRORR) is the journal which publishes original scientific papers from the area of operational research. The purpose is to publish papers from various aspects of operational research (OR) with the aim of presenting scientific ideas that will contribute both to theoretical development and practical application of OR. The scope of the journal covers the following subject areas: linear and non-linear programming, integer programing, combinatorial and discrete optimization, multi-objective programming, stohastic models and optimization, scheduling, macroeconomics, economic theory, game theory, statistics and econometrics, marketing and data analysis, information and decision support systems, banking, finance, insurance, environment, energy, health, neural networks and fuzzy systems, control theory, simulation, practical OR and applications. The audience includes both researchers and practitioners from the area of operations research, applied mathematics, statistics, econometrics, intelligent methods, simulation, and other areas included in the above list of topics. The journal has an international board of editors, consisting of more than 30 editors – university professors from Croatia, Slovenia, USA, Italy, Germany, Austria and other coutries.
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