可扩展的自动概念挖掘从执行轨迹

Soumaya Medini
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引用次数: 1

摘要

概念识别是将概念(例如,领域概念)定位和识别到代码区域,或者更一般地说,到工件块中的任务。概念识别是程序理解、软件维护和发展的基础。不同的静态、动态和混合的概念识别方法存在于文献中。静态和动态技术都有各自的优点和局限性。事实上,它们可以被认为是相互补充的。事实上,最近的工作集中在混合技术上,以提高概念定位过程的时间和准确性(即精度和召回率)。此外,有时只有一个执行跟踪是可用的,然而,据我们所知,只有少数工作试图在单个执行跟踪中自动识别概念。我们提出了一种基于动态规划算法的方法,将执行跟踪拆分为可能表示概念的段。相对于当前可用的技术,该方法提高了性能和可伸缩性。我们还计划使用来自潜在狄利克雷分配(LDA)的技术来自动分配段的含义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Scalable Automatic Concept Mining from Execution Traces
Concept identification is the task of locating and identifying concepts (e.g., domain concepts) into code region or, more generally, into artifact chunks. Concept identification is fundamental to program comprehension, software maintenance, and evolution. Different static, dynamic, and hybrid approaches for concept identification exist in the literature. Both static and dynamic techniques have advantages and limitations. In fact, they can be considered to complement each other. Indeed, recent works focused on hybrid techniques to improve the performance in time as well as accuracy (i.e., precision and recall) of the concept location process. Furthermore, sometimes only a single execution trace is available, however, to the best of our knowledge, only few works attempt to automatically identify concepts in a single execution trace. We propose an approach built upon a dynamic-programming algorithm to split an execution trace into segments likely representing concepts. The approach improves performance and scalability with respect to currently available techniques. We also plan to use techniques derived from Latent Dirichlet Allocation (LDA)to automatically assign meanings to segments.
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