A Meta-cognitive Interval Type-2 fuzzy inference system classifier and its projection based learning algorithm

K. Subramanian, R. Savitha, S. Sundaram
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引用次数: 28

Abstract

In this paper, we present a Meta-cognitive Interval Type-2 neuro-Fuzzy Inference System (McIT2FIS) classifier and its projection based learning algorithm. McIT2FIS consists of two components, namely, a cognitive component and a meta-cognitive component. The cognitive component is an Interval Type-2 neuro-Fuzzy Inference System (IT2FIS) represented as a six layered adaptive network realizing Takagi-Sugeno-Kang type inference mechanism. IT2FIS begins with zero rules, and rules are added and updated depending on the relative knowledge represented by the sample in comparison to that represented by the cognitive component. The knowledge representation ability of IT2FIS is controlled by a self-regulatory learning mechanism that forms the meta-cognitive component. As each sample is presented to the network, the meta-cognitive component monitors the hinge-loss error and class-specific spherical potential of the current sample to decide what-to-learn, when-to-learn and how-to-learn them, efficiently. When a new rule is added or when an existing rule is updated, a Projection Based Learning (PBL) algorithm uses class specific criterion and sample overlap criterion to estimate the network parameters corresponding to the minimum energy point of the error function. The performance of McIT2FIS is evaluated on a set of benchmark classification problems from UCI machine learning repository. The statistical performance comparison with other algorithms available in the literature indicates improved performance of McIT2FIS.
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一种元认知区间2型模糊推理系统分类器及其投影学习算法
本文提出了一种元认知区间2型神经模糊推理系统(McIT2FIS)分类器及其基于投影的学习算法。McIT2FIS由两个组件组成,即认知组件和元认知组件。认知组件是一个区间型2神经模糊推理系统(IT2FIS),表示为六层自适应网络,实现Takagi-Sugeno-Kang型推理机制。IT2FIS从零规则开始,根据样本所表示的相对知识与认知组件所表示的相对知识进行比较,添加和更新规则。IT2FIS的知识表示能力受自我调节学习机制控制,该机制形成元认知成分。当每个样本呈现给网络时,元认知组件监测当前样本的铰链损失误差和类别特定的球形势,以决定学习什么,何时学习以及如何有效地学习它们。当添加新规则或更新现有规则时,PBL算法使用类特定准则和样本重叠准则来估计误差函数最小能量点对应的网络参数。在UCI机器学习存储库的一组基准分类问题上对McIT2FIS的性能进行了评估。与文献中其他算法的统计性能比较表明,McIT2FIS的性能有所提高。
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