BOMD: Building Optimization Models from Data (Neural Networks based Approach)

IF 3.2 Q1 BUSINESS, FINANCE Quantitative Finance and Economics Pub Date : 2019-09-19 DOI:10.3934/qfe.2019.4.608
V. Donskoy
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引用次数: 5

Abstract

This article aims to develop mathematical methods and algorithms that automatically build nonlinear models of planning and management of economic objects based on the use of empirical samples (observations). We call the relevant new information technology "Building Optimization Models from Data (BOMD)". The offered technology BOMD allows to obtain an objective control models that reflect the real economic processes. This is its main advantage over commonly employed subjective approach to management. To solve the problems posed in the article, the methods of artificial intelligence were used, in particular, the training of neural networks and construction of decision trees. If the learning sample contains simultaneously the values of the objective function and the values of characteristic function of constraints, it is proposed to use an approach based on the training of two neural networks: NN1 — for the synthesis of the objective function and NN2 — for the synthesis of the approximating characteristic function of constraints (instead of a neural network NN2, a decision tree can be used). The solution of the problem presented by such synthesized neural model may end up finding, generally speaking, a local conditional extremum. To find the global extremum of the multiextremal neural objective function, a heuristic algorithm based on a preliminary classification of the search area by using the decision tree is developed. Presented in the paper approach to an extraction of conditionally optimization model from the data for the case when there is no information on the points not belonging to the set of admissible solutions is fundamentally novel. In this case, a heuristic algorithm for approximating the region of admissible solutions based on the allocation of regular (non-random) empty segments of the search area is developed.
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BOMD:从数据中构建优化模型(基于神经网络的方法)
本文旨在开发数学方法和算法,基于经验样本(观察)自动建立经济对象规划和管理的非线性模型。我们将相关的新信息技术称为“从数据构建优化模型(BOMD)”。所提供的技术BOMD允许获得反映真实经济过程的客观控制模型。这是它相对于常用的主观管理方法的主要优势。为了解决本文中提出的问题,使用了人工智能的方法,特别是神经网络的训练和决策树的构建。如果学习样本同时包含约束的目标函数的值和特征函数的值,建议使用基于两个神经网络的训练的方法:NN1-用于目标函数的合成和NN2-用于约束的近似特征函数的合成(可以使用决策树来代替神经网络NN2)。由这种合成神经模型提出的问题的解可能最终找到,一般来说,局部条件极值。为了找到多极值神经目标函数的全局极值,提出了一种基于决策树对搜索区域进行初步分类的启发式算法。在没有关于不属于容许解集的点的信息的情况下,本文提出的从数据中提取条件优化模型的方法从根本上是新颖的。在这种情况下,基于搜索区域的规则(非随机)空段的分配,开发了一种用于近似可容许解的区域的启发式算法。
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来源期刊
CiteScore
0.30
自引率
1.90%
发文量
14
审稿时长
12 weeks
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