Classifying unstructured data into natural language text and technical information

T. Merten, Bastian Mager, Simone Bürsner, B. Paech
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引用次数: 6

Abstract

Software repository data, for example in issue tracking systems, include natural language text and technical information, which includes anything from log files via code snippets to stack traces. However, data mining is often only interested in one of the two types e.g. in natural language text when looking at text mining. Regardless of which type is being investigated, any techniques used have to deal with noise caused by fragments of the other type i.e. methods interested in natural language have to deal with technical fragments and vice versa. This paper proposes an approach to classify unstructured data, e.g. development documents, into natural language text and technical information using a mixture of text heuristics and agglomerative hierarchical clustering. The approach was evaluated using 225 manually annotated text passages from developer emails and issue tracker data. Using white space tokenization as a basis, the overall precision of the approach is 0.84 and the recall is 0.85.
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将非结构化数据分类为自然语言文本和技术信息
例如,在问题跟踪系统中,软件存储库数据包括自然语言文本和技术信息,其中包括从日志文件到代码片段到堆栈跟踪的任何内容。然而,数据挖掘通常只对两种类型中的一种感兴趣,例如,在寻找文本挖掘时,在自然语言文本中。无论研究的是哪一种类型,所使用的任何技术都必须处理由其他类型的片段引起的噪声,即对自然语言感兴趣的方法必须处理技术片段,反之亦然。本文提出了一种将非结构化数据(如开发文档)分类为自然语言文本和技术信息的方法,该方法混合使用文本启发式和凝聚层次聚类。该方法使用来自开发人员电子邮件和问题跟踪器数据的225个手动注释的文本段落进行评估。使用空白标记作为基础,该方法的总体精度为0.84,召回率为0.85。
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MSR '20: 17th International Conference on Mining Software Repositories, Seoul, Republic of Korea, 29-30 June, 2020 Who you gonna call?: analyzing web requests in Android applications Cena słońca w projektowaniu architektonicznym Multi-extract and Multi-level Dataset of Mozilla Issue Tracking History Interactive Exploration of Developer Interaction Traces using a Hidden Markov Model
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