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A rough-fuzzy hybrid approach on a Neuro-Fuzzy classifier for high dimensional data

机译:针对高维数据的神经模糊分类器上的粗糙模糊混合方法

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A new Rough-Neuro-Fuzzy (RNF) classifier is proposed in this paper for pattern classification scheme on high dimensional data as an extension of the previous work. The rough set theory is utilized to reduce the given knowledge into a compact form and to obtain a minimal set of decision rules. The proposed Rough-Neuro-Fuzzy classifier is constructed based on the structure of ANFIS (Adaptive-Network-Based Fuzzy Inference System), except its connections determined by the reduced data and the generated decision rules obtained by the rough sets-based approach. This provides the compact and minimal number of configurations for the network to adjust itself towards a faster learning. The learning scheme for the proposed approach is adopted from the one in ANFIS. The TS-type fuzzy inference model is employed to perform the decision making process. The proposed system is applied on a number of data sets for pattern classification tasks using 10-fold cross validation. The number of attributes is reduced significantly and the minimal rules are generated effectively by the rough set-based approach in the proposed system. Experimental results showed that results produced by the proposed rough-neuro-fuzzy classifier may be competitive compared to the previous work and the other existing approaches.
机译:本文提出了一种新的粗糙神经模糊分类器(RNF),用于对高维数据进行模式分类,作为对先前工作的扩展。粗糙集理论用于将给定的知识简化为紧凑形式,并获得最少的决策规则集。所提出的粗糙神经模糊分类器是基于ANFIS(基于自适应网络的模糊推理系统)的结构构建的,除了它的连接是由约简数据确定的,而且是通过基于粗糙集的方法获得的决策规则确定的。这为网络提供了紧凑且数量最少的配置,以使其自身适应更快的学习速度。从ANFIS中采用了一种针对该方法的学习方案。 TS型模糊推理模型用于执行决策过程。所提出的系统应用于使用10倍交叉验证的模式分类任务的许多数据集。在提议的系统中,通过基于粗糙集的方法,属性的数量显着减少,最小规则得以有效生成。实验结果表明,与先前的工作和其他现有方法相比,所提出的粗糙神经模糊分类器所产生的结果可能具有竞争力。

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