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Using rough sets for practical feature selection in a rough setseural network framework for knowledge discovery

机译:在粗糙集/神经网络框架中使用粗糙集进行实际特征选择以进行知识发现

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摘要

An important task in knowledge discovery is feature selection. This paper describes a practical approach to feature subset selection proposed as part of a hybrid rough setseural network framework for knowledge discovery for decision support. In this framework neural networks and rough sets are combined and used cooperatively during the system life cycle. The reason for combining rough sets with neural networks in the proposed framework is twofold. Firstly, rough sets based systems provide domain knowledge expressed in the form of If-then rules as well as tools for data analysis. Secondly, rough sets are used in this framework in the task of feature selection for neural network models. This paper examines the feature selection aspect of the framework. An empirical study that tested the approach on artificial datasets and real-world datasets was carried out. Experimental results indicate that the proposed approach can improve the performance of neural network models. The framework was also applied in the development of a real-world decision support system. The experience with this application has shown that the approach can support the users in the task of feature selection.
机译:知识发现中的重要任务是特征选择。本文描述了一种实用的特征子集选择方法,该方法被提议作为用于决策支持的知识发现的混合粗糙集/神经网络框架的一部分。在这个框架中,神经网络和粗糙集在系统生命周期中被组合使用。在提出的框架中将粗糙集与神经网络结合的原因是双重的。首先,基于粗糙集的系统提供以If-then规则和数据分析工具形式表示的领域知识。其次,在该框架中使用粗集进行神经网络模型的特征选择。本文研究了框架的特征选择方面。进行了一项对人造数据集和真实数据集测试该方法的实证研究。实验结果表明,该方法可以提高神经网络模型的性能。该框架还被用于开发现实世界的决策支持系统。此应用程序的经验表明,该方法可以支持用户进行功能选择任务。

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