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Applying Text Classification Algorithms in Web Services Robustness Testing

机译:文本分类算法在Web服务健壮性测试中的应用

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Testing web services for robustness is an effective way of disclosing software bugs. However, when executing robustness tests, a very large amount of service responses has to be manually classified to distinguish regular responses from responses that indicate robustness problems. Besides requiring a large amount of time and effort, this complex classification process can easily lead to errors resulting from the human intervention in such a laborious task. Text classification algorithms have been applied successfully in many contexts (e.g., spam identification, text categorization, etc) and are considered a powerful tool for the successful automation of several classification-based tasks. In this paper we present a study on the applicability of five widely used text classification algorithms in the context of web services robustness testing. In practice, we assess the effectiveness of Support Vector Machines, Naïve Bayes, Large Linear Classification, K-nearest neighbor (Ibk), and Hyperpipes in classifying web services responses. Results indicate that these algorithms can be effectively used to automate the identification of robustness issues while reducing human intervention. However, in all mechanisms there are cases of misclassified responses, which means that there is space for improvement.
机译:测试Web服务的健壮性是揭示软件错误的有效方法。但是,执行健壮性测试时,必须手动分类大量服务响应,以将常规响应与表明健壮性问题的响应区分开。除了需要大量的时间和精力之外,这种复杂的分类过程还容易导致由于人工干预这种繁琐的工作而导致的错误。文本分类算法已成功应用于许多情况下(例如,垃圾邮件识别,文本分类等),并且被认为是成功完成多个基于分类任务的自动化的强大工具。在本文中,我们对Web服务健壮性测试中五种广泛使用的文本分类算法的适用性进行了研究。在实践中,我们评估了支持向量机,朴素贝叶斯,大型线性分类,K近邻(Ibk)和Hyperpipes在对Web服务响应进行分类中的有效性。结果表明,这些算法可以有效地用于自动识别健壮性问题,同时减少人工干预。但是,在所有机制中,都存在对响应进行错误分类的情况,这意味着存在改进的空间。

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