Rule Extraction From Neuro-fuzzy System for Classification Using Feature Weights: Neuro-Fuzzy System for Classification

Heisnam Rohen Singh, S. Biswas
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引用次数: 1

Abstract

Recent trends in data mining and machine learning focus on knowledge extraction and explanation, to make crucial decisions from data, but data is virtually enormous in size and mostly associated with noise. Neuro-fuzzy systems are most suitable for representing knowledge in a data-driven environment. Many neuro-fuzzy systems were proposed for feature selection and classification; however, they focus on quantitative (accuracy) than qualitative (transparency). Such neuro-fuzzy systems for feature selection and classification include Enhance Neuro-Fuzzy (ENF) and Adaptive Dynamic Clustering Neuro-Fuzzy (ADCNF). Here a neuro-fuzzy system is proposed for feature selection and classification with improved accuracy and transparency. The novelty of the proposed system lies in determining a significant number of linguistic features for each input and in suggesting a compelling order of classification rules using the importance of input feature and the certainty of the rules. The performance of the proposed system is tested with 8 benchmark datasets. 10-fold cross-validation is used to compare the accuracy of the systems. Other performance measures such as false positive rate, precision, recall, f-measure, Matthews correlation coefficient and Nauck's index are also used for comparing the systems. It is observed from the experimental results that the proposed system is superior to the existing neuro-fuzzy systems.
基于特征权值的神经模糊分类规则提取:神经模糊分类系统
数据挖掘和机器学习的最新趋势侧重于知识提取和解释,以便从数据中做出关键决策,但数据实际上是巨大的,而且大多与噪音有关。神经模糊系统最适合在数据驱动的环境中表示知识。许多神经模糊系统被提出用于特征选择和分类;然而,他们更注重定量(准确性)而不是定性(透明度)。用于特征选择和分类的神经模糊系统包括增强神经模糊系统(ENF)和自适应动态聚类神经模糊系统(ADCNF)。本文提出了一种神经模糊系统用于特征选择和分类,提高了准确性和透明度。该系统的新颖性在于为每个输入确定大量的语言特征,并利用输入特征的重要性和规则的确定性提出令人信服的分类规则顺序。用8个基准数据集测试了系统的性能。使用10倍交叉验证来比较系统的准确性。其他性能指标,如假阳性率,准确率,召回率,f-measure,马修斯相关系数和Nauck指数也用于比较系统。实验结果表明,该系统优于现有的神经模糊系统。
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