粗糙集和支持向量机在能力评估中的应用

Huizhen Liu, Shangping Dai, Hong Jiang
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引用次数: 2

摘要

粗糙集(RS)和支持向量机(SVM)已逐渐成为人工智能、机器学习和数据挖掘领域的研究热点。本文对RS和SVM理论进行了讨论,基于RS的属性约简和SVM的分类原理,提出了一种新的RS-SVM混合模型,分析了其在胜任力评价中的应用可能性,并在胜任力评价中得到了应用。首先,将RS的属性约简作为预处理,在不丢失有效信息的前提下删除冗余属性和冲突对象;然后,建立支持向量机分类模型进行预测。最后,将RS-SVM模型与神经网络模型或等级回归模型进行了比较。实证结果表明,RS-SVM模型获得了良好的分类性能,并且极大地降低了SVM分类过程的复杂度,在一定程度上防止了训练模型的过拟合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of Rough Set and Support Vector Machine in competency assessment
Rough Set (RS) and Support Vector Machine(SVM) have gradually been becoming hot spots in the territory of artificial intelligence, machine learning and data mining research. In this paper, RS and SVM theories have been discussed, a new hybrid RS-SVM model was proposed based on the attribute reduction of RS and the classification principles of SVM, which has been analyzed its possibility of application in competency assessment and has been applied in competency assessment. Firstly, the attribute reduction of RS has been applied as preprocessor to delete redundant attributes and conflicting objects without losing efficient information. Then, an SVM classification model is built to make a forecast. Finally, compared the RS-SVM model with neural network model or grade regression model. Empirical results shown that RS-SVM model obtains good classification performance, and it highly reduces the complexity in the process of SVM classification and prevents the over-fit of training model in a certain extent.
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