Assessment of a Multi-Strategy Classifier for an Embedded Software System

T. Khoshgoftaar, Kehan Gao
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引用次数: 9

Abstract

In this paper, a new classification model, RB2CBL, is proposed. Its structure and methodology are described. By cascading a rule-based (RB) model with two case-based learning (CBL) models, RB2CBL possesses the merits of both RB model and CBL model and restrains their drawbacks. In the RB2CBL model, the parameter optimization of the CBL models is essential, and the embedded genetic algorithm optimizer is used. In our case study, a dataset collected from initial releases of two large, Windowscopy-based embedded system applications, which were used primarily for customizing the configuration of wireless telecommunications products, is processed to investigate and evaluate the models. The results show that, by suitably choosing accuracy settings of the RB model, RB2CBL model outperforms the RB model alone without overfitting. In practice, the RB2CBL model effectively reduced the misclassification rates and improved prediction accuracy for the embedded software system
嵌入式软件系统多策略分类器的评估
本文提出了一种新的分类模型RB2CBL。介绍了它的结构和方法。RB2CBL通过将基于规则的(RB)模型与两个基于案例的学习(CBL)模型级联,既具有基于规则的(RB)模型的优点,又抑制了基于案例的(CBL)模型的缺点。在RB2CBL模型中,CBL模型的参数优化是关键,采用了嵌入式遗传算法优化器。在我们的案例研究中,从两个大型的基于windowscope的嵌入式系统应用程序的初始版本收集的数据集(主要用于定制无线电信产品的配置)被处理以调查和评估模型。结果表明,通过适当选择RB模型的精度设置,RB2CBL模型在没有过拟合的情况下优于单独的RB模型。在实际应用中,RB2CBL模型有效地降低了嵌入式软件系统的误分类率,提高了预测精度
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