Optimization-Based Fuzzy Regression in Full Compliance with the Extension Principle

B. Stanojević, M. Stanojevic
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引用次数: 1

Abstract

Business Analytics – which unites Descriptive, Predictive and Prescriptive Analytics – represents an important component in the framework of Big Data. It aims to transform data into information, enabling improvements in making decisions. Within Big Data, optimization is mostly related to the prescriptive analysis, but in this paper, we present one of its applications to a predictive analysis based on regression in fuzzy environment. The tools offered by a regression analysis can be used either to identify the correlation of a dependency between the observed inputs and outputs; or to provide a convenient approximation to the output data set, thus enabling its simplified manipulation. In this paper we introduce a new approach to predict the outputs of a fuzzy in – fuzzy out system through a fuzzy regression analysis developed in full accordance to the extension principle. Within our approach, a couple of mathematical optimization problems are solve for each desired α−level. The optimization models derive the left and right endpoints of the α−cut of the predicted fuzzy output, as minimum and maximum of all crisp values that can be obtained as predicted outputs to at least one regression problem with observed crisp data in the α−cut ranges of the corresponding fuzzy observed data. Relevant examples from the literature are recalled and used to illustrate the theoretical findings.
基于优化的模糊回归完全符合可拓原则
商业分析——将描述性、预测性和规范性分析结合在一起——是大数据框架中的一个重要组成部分。它旨在将数据转化为信息,从而改进决策。在大数据中,优化主要与规定性分析相关,但在本文中,我们提出了它在模糊环境下基于回归的预测分析中的一个应用。回归分析提供的工具可以用来确定观察到的输入和输出之间的依赖关系;或者为输出数据集提供方便的近似值,从而简化操作。本文介绍了一种完全按照可拓原理发展的模糊回归分析方法来预测模糊输入-模糊输出系统的输出。在我们的方法中,为每个期望的α−水平解决了几个数学优化问题。优化模型推导出预测模糊输出的α - cut的左端点和右端点,作为至少一个回归问题的预测输出中所有脆度值的最小值和最大值,这些回归问题具有相应模糊观测数据的α - cut范围内的观测脆度数据。回顾了文献中的相关例子,并使用它们来说明理论发现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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