A Multiobjective Genetic Fuzzy System with Imprecise Probability Fitness for Vague Data

L. Sánchez, Inés Couso, Jorge Casillas
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引用次数: 19

Abstract

When questionnaires are designed, each factor under study can be assigned a set of different items. The answers to these questions must be merged in order to obtain the level of that input. Therefore, it is typical for data acquired from questionnaires that each of the inputs and outputs are not numbers, but sets of values. In this paper, we represent the information contained in such a set of values by means of a fuzzy number. A fuzzy statistics-based interpretation of the semantic of a fuzzy set is used for this purpose, as we consider that this fuzzy number is a nested family of confidence intervals for the value of the variable. The accuracy of the model is expressed by means of an interval-valued function, derived from a definition of the variance of a fuzzy random variable. A multicriteria genetic learning algorithm, able to optimize this interval-valued function, is proposed. As an example of the application of this algorithm, a practical problem of modeling in marketing is solved
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模糊数据不精确概率适应度的多目标遗传模糊系统
在设计问卷时,每个被研究的因素可以被分配一组不同的项目。这些问题的答案必须合并,以获得输入的水平。因此,对于从问卷中获得的数据来说,每个输入和输出都不是数字,而是一组值,这是典型的。在本文中,我们用模糊数来表示包含在这样一组值中的信息。基于模糊统计的模糊集语义解释用于此目的,因为我们认为该模糊数是变量值的嵌套置信区间族。模型的精度是通过一个区间值函数来表示的,这个区间值函数是由一个模糊随机变量的方差定义得来的。提出了一种多准则遗传学习算法来优化该区间值函数。作为该算法的应用实例,解决了市场营销中的一个实际建模问题
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