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Generating taxonomic terms for software bug classification by utilizing topic models based on Latent Dirichlet Allocation

机译:通过利用基于潜在Dirichlet分配的主题模型来生成软件错误分类的分类学术语

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Discovering categorical (taxonomic) terms in text classification is an important and complex problem. Development of a good text classifier depends on the method of identification and generation of proper taxonomic terms. Software bug indicates improper behavior of the functionalities given during the requirements. These bugs are tracked with the help of bug tracking systems (BTS) where the bug information is presented using several attributes out of which some important attributes are textual for example summary and description. For effective classification of the software bugs a good text classifying mechanism is required for which proper taxonomic terms are required to be identified. In this work a methodology is presented to find the taxonomic terms using Latent Dirichlet Allocation (LDA) for software bug classification.
机译:在文本分类中发现分类(分类学)术语是一个重要而复杂的问题。良好文本分类器的开发取决于识别和产生适当的分类术语的方法。软件错误表示在要求期间给出的功能的不当行为。在错误跟踪系统(BTS)的帮助下跟踪这些错误,其中使用多个属性呈现错误信息,其中一些属性是文本的一些重要属性,例如摘要和描述。有关软件的有效分类,错误需要识别哪个正确的分类学术语所需的良好文本分类机制。在这项工作中,提出了一种使用潜在Dirichlet分配(LDA)来查找分类术语的方法,用于软件错误分类。

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