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基于SVM的软件可靠性评估 被引量:3

Software Reliability Evaluation Based on Support Vector Machine
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摘要 软件可靠性评估是软件可靠性工程研究的一个重要方向。本文运用聚类思想对软件可靠性进行评估,在对软件可靠性因素进行编码的基础上,采用SVM(支持向量机)对其进行聚类研究,实现了软件可靠性的自动化评估。最后通过仿真测试,证明了此方法的有效性和可行性。 Software Reliability Evaluation is a important part of software reliability engineering. Software reliability evaluation has been an emphasis in the research of software reliability. In this paper, the used of clustering analysis as a tool for software reliability evaluation.On the base of software reliability factor data coded, used Support Vector Machine as a tool for clustering analysis, Used some data sets to demonstrate the approach's accuracy and efficiency.
出处 《微计算机信息》 北大核心 2006年第03X期209-211,共3页 Control & Automation
基金 国防基础研究基金支持
关键词 软件可靠性评估 支持向量机 聚类 Software Reliability Evaluation Support Vector Machine Clustering
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