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Optimal allocation of information granularity in system modeling through the maximization of information specificity: A development of granular input space

机译:通过最大化信息专一性在系统建模中优化信息粒度:精细输入空间的发展

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摘要

In this study, we introduce a concept of a granular input space in system modeling, in particular in fuzzy rule-based modeling. The underlying problem can be succinctly formulated in the following way: given is a numeric model, develop an efficient way of forming granular input variables so that the corresponding granular outputs of the model achieve the highest level of specificity. The rationale behind the formulation of the problem is offered along with several illustrative examples. In conjunction with the underlying idea, developed is an algorithmic framework supporting an optimization of the specificity of the model exposed to granular inputs (data). It is dwelled upon one of the principles of Granular Computing, namely an optimal allocation of information granularity. For illustrative purposes, the study is focused on information granules formalized in terms of intervals (however the proposed approach becomes equally relevant for other formalism of information granules). Some comparative analysis with the existing idea of global sensitivity analysis is also carried out by contrasting the essential differences among the two approaches and analyzing the results of computational experiments. (C) 2016 Elsevier B.V. All rights reserved.
机译:在这项研究中,我们在系统建模中,特别是在基于模糊规则的建模中,引入了粒状输入空间的概念。可以通过以下方式简洁地阐述基本问题:给定一个数值模型,开发一种形成粒状输入变量的有效方法,以使模型的相应粒状输出达到最高的特异性。提供了解决问题的基本原理以及几个说明性示例。结合基本思想,开发了一种算法框架,支持对暴露于粒状输入(数据)的模型的特异性进行优化。它基于粒度计算的原理之一,即信息粒度的最佳分配。为了说明的目的,该研究集中于按照时间间隔形式化的信息颗粒(但是,所提出的方法与其他形式的信息颗粒同样相关)。通过对比两种方法之间的本质差异并分析计算实验的结果,还与现有的全局灵敏度分析思想进行了一些比较分析。 (C)2016 Elsevier B.V.保留所有权利。

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