使用非参数先行词和相对数据密度简化模糊规则系统

P. Angelov, R. Yager
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引用次数: 82

摘要

本文提出了一种定义基于模糊规则(FRB)系统的前提部分的新方法。它消除了使用人工参数函数(如三角函数、高斯函数等)定义每个变量的隶属函数的需要。相反,它严格遵循真实的数据分布,在这个意义上类似于粒子过滤器。此外,它是矢量形式,因此不需要使用and /OR等逻辑连接来聚合标量变量。最后,它使用以无参数(柯西型)核形式表示的相对数据密度来推导每个规则的激活级别;然后对这些进行模糊加权以产生总体输出。这种新的简化型快速射电暴可以看作是继Zadeh-Mamdani和Takagi-Sugeno两种流行的快速射电暴系统类型之后的下一种形式。这种新型快速射电暴的先行部分大大简化,先行部分是利用数据云形成的。数据云是数据空间中的数据样本集,与集群有很大的不同(它们没有特定的形状、边界和参数)。由相对密度决定的激活水平的一个重要特点是,它直接考虑到到所有先前数据样本的距离,而不像其他方法那样只考虑平均值或原型。所提出的简化FRB类型系统可以应用于离线、在线以及进化(具有自适应系统结构)版本的FRB和相关的神经模糊系统。它们还可以应用于预测、分类和控制问题。在本文中,将给出一个不断发展的FRB预测器和一个每类类型一个规则的分类器的例子,并将其与主要旨在概念证明的传统方法进行比较。对这种创新技术提供的丰富可能性的更彻底的调查将在平行出版物中提出。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Simplified fuzzy rule-based systems using non-parametric antecedents and relative data density
In this paper a new method for definition of the antecedent/premise part of the fuzzy rule-based (FRB) systems is proposed. It removes the need to define the membership functions per variable using often artificial parametric functions such as triangular, Gaussian etc. Instead, it strictly follows the real data distribution and in this sense resembles particle filters. In addition, it is in a vector form and thus removes the need to use logical connectives such as AND/OR to aggregate the scalar variables. Finally, it uses the relative data density expressed in a form of a parameter-free (Cauchy type) kernel to derive the activation level of each rule; these are then fuzzily weighted to produce the overall output. This new simplified type of FRB can be seen as the next form after the two popular FRB system types, namely the Zadeh-Mamdani and Takagi-Sugeno. The new type of FRB has a much simplified antecedent part which is formed using data clouds. Data clouds are sets of data samples in the data space and differ from clusters significantly (they have no specific shape, boundaries, and parameters). An important specific of the activation level determined by relative density is that it takes directly into account the distance to all previous data samples, not just the mean or prototype as other methods do. The proposed simplified FRB types of systems can be applied to off-line, on-line as well as evolving (with adaptive system structure) versions of FRB and related neuro-fuzzy systems. They can also be applied to prediction, classification, and control problems. In this paper examples will be presented of an evolving FRB predictor and of a classifier of one rule per class type which will be compared with the traditional approaches primarily aiming proof of concept. More thorough investigation of the rich possibilities which this innovative technique offers will be presented in parallel publications.
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