降低基于规则的精确回归TSK系统遗传学习的复杂性

Ismael Rodríguez-Fdez, M. Mucientes, Alberto Bugarín-Diz
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引用次数: 5

摘要

在许多实际问题中,回归模型必须是准确的,但也必须是可解释的,以便提供对系统的定性理解。在这个领域,模糊规则库系统,特别是TSK的使用得到了广泛的扩展。TSK规则将规则的可解释性和表达性与模糊逻辑表示不确定性的能力以及结果中多项式的精度相结合。本文提出了一种新的遗传模糊系统,用于自动学习准确、简单的语言TSK模糊规则库,从而准确地对回归问题进行建模。为了降低学习模型的复杂性,同时保持较高的准确率,我们提出了一种遗传模糊系统,该系统包括三个阶段:实例选择、输入变量的多粒度模糊离散化以及使用弹性网络正则化对规则库进行进化学习。使用28个真实数据集验证了该建议,并与三种最先进的遗传模糊系统进行了比较。结果表明,我们的方法得到了最简单的模型,同时达到了与最佳近似模型相似的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reducing the complexity in genetic learning of accurate regression TSK rule-based systems
In many real problems the regression models have to be accurate but, also, interpretable in order to provide qualitative understanding of the system. In this realm, the use of fuzzy rule base systems, particularly TSK, is widely extended. TSK rules combine the interpretability and expressiveness of rules with the ability of fuzzy logic for representing uncertainty, and the precision of the polynomials in the consequents. In this paper we present a new genetic fuzzy system to automatically learn accurate and simple linguistic TSK fuzzy rule bases that accurately model regression problems. In order to reduce the complexity of the learned models while keeping a high accuracy, we propose a Genetic Fuzzy System which consists of three stages: instance selection, multi-granularity fuzzy discretization of the input variables, and the evolutionary learning of the rule base using Elastic Net regularization. This proposal was validated using 28 real-world datasets and compared with three state of the art genetic fuzzy systems. Results show that our approach obtains the simplest models while achieving a similar accuracy to the best approximative models.
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