首页> 外文会议>Mexican International Conference on Artificial Intelligence; 20040426-20040430; Mexico City; MX >Function Approximation through Fuzzy Systems Using Taylor Series Expansion-Based Rules: Interpretability and Parameter Tuning
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Function Approximation through Fuzzy Systems Using Taylor Series Expansion-Based Rules: Interpretability and Parameter Tuning

机译:使用基于泰勒级数展开的规则的模糊系统函数逼近:可解释性和参数调整

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摘要

In this paper we present a new approach for the problem of approximating a function from a training set of I/O points using fuzzy logic and fuzzy systems. Such approach, as we will see, will provide us a number of advantages comparing to other more-limited systems. Among these advantages, we may highlight the considerable reduction in the number of rules needed to model the underlined function of this set of data and, from other point of view, the possibility of bringing interpretation to the rules of the system obtained, using the Taylor Series concept. This work is reinforced by an algorithm able to obtain the pseudo-optimal polynomial consequents of the rules. Finally the performance of our approach and that of the associated algorithm are shown through a significant example.
机译:在本文中,我们针对使用模糊逻辑和模糊系统从I / O点的训练集中逼近函数的问题,提出了一种新方法。正如我们将看到的,与其他更多受限制的系统相比,这种方法将为我们提供许多优势。在这些优点中,我们可能会突出显示对这组数据的下划线功能进行建模所需的规则数量已大大减少,并且从其他观点来看,可以使用泰勒对获得的系统规则进行解释系列的概念。通过能够获得规则的伪最优多项式的算法来加强这项工作。最后,通过一个重要的例子说明了我们的方法和相关算法的性能。

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