SMOTE不同变体对Web服务反模式预测改进效果的实证研究

Sahithi Tummalapalli, L. Kumar, Lalita Bhanu Murthy Neti, S. K. Rath
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摘要

在当今世界,IT专业人员必须确保所有企业应用程序顺利运行并相互通信。面向服务的体系结构(SOA)为组织提供了一个框架,使信息技术系统的管理负担得起且易于管理。基于服务的系统(SBS)需要随着时间的推移进行自我调整,以适应新的客户机先决条件。这些结果削弱了软件系统的质量和计划,并可能导致称为反模式的糟糕解决方案的出现。反模式是导致不良结果的代码或设计的重复应用。研究发现,反模式的存在阻碍了软件系统的发展和维护。利用从源代码中提取的特征对这些反模式进行早期预测,有助于减少软件系统的维护,提高软件质量。本工作的思想是研究不同数据采样技术变体的经验和机器学习技术,朴素贝叶斯,在web服务中的反模式预测的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Empirical Study to investigate the Effectiveness of Different Variants of SMOTE for Improving Web Service Anti-Patterns Prediction
In today’s world, IT professionals must ensure that all enterprise applications are running smoothly and are communicating with each other. Service-Oriented Architecture(SOA) provides the organization with a framework that makes the management of information technology systems affordable and manageable. Service-Based Systems(SBS) need to adapt themselves over time to fit in the new client prerequisites. These outcomes in the weakening of the software systems quality and plan and may cause the emergence of poor solutions called Anti-patterns. An anti-pattern is a repeated application of code or design that leads to a bad outcome. The research uncovered that the presence of anti-patterns thwarts the software systems advancement and maintenance. The early prediction of these anti-pattern using extracted features from source code helps to reduce the software system’s maintenance and enhance the quality of the software. This present work’s ideology is to investigate the viability of different data sampling technique variants empirically and the machine learning technique, Naive Bayes, in the anti-patterns prediction in web services.
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