使用隐马尔可夫模型的开发人员交互痕迹的交互式探索

Kostadin Damevski, Hui Chen, D. Shepherd, L. Pollock
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引用次数: 16

摘要

使用IDE使用数据来分析软件开发人员在现场的行为,在他们的日常工作过程中,可以为开发人员的实验室研究提供支持(或争议)。本文描述了一种利用隐马尔可夫模型(hmm)从该领域许多开发人员的低级IDE交互痕迹中挖掘高级开发人员行为的技术。hmm使用双随机过程利用可观察的事件输入序列来模拟更高级别的隐藏行为。我们提出了一种挖掘可解释HMM的交互式方法,该方法基于指导人类专家以迭代的、每次一种状态的方式构建高质量HMM。最终的结果是一个既能代表字段数据又能捕获感兴趣的字段现象的模型。我们使用从ABB公司近200名开发人员收集的大型IDE交互数据集,应用HMM构建方法来研究调试行为。我们的结果突出了开发人员在我们的数据集中展示的调试中的不同模式和组成动作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Interactive Exploration of Developer Interaction Traces using a Hidden Markov Model
Using IDE usage data to analyze the behavior of software developers in the field, during the course of their daily work, can lend support to (or dispute) laboratory studies of devel- opers. This paper describes a technique that leverages Hidden Markov Models (HMMs) as a means of mining high-level developer behavior from low-level IDE interaction traces of many developers in the field. HMMs use dual stochastic processes to model higher-level hidden behavior using observable input sequences of events. We propose an interactive approach of mining interpretable HMMs, based on guiding a human expert in building a high quality HMM in an iterative, one state at a time, manner. The final result is a model that is both representative of the field data and captures the field phenomena of interest. We apply our HMM construction approach to study debugging behavior, using a large IDE interaction dataset collected from nearly 200 developers at ABB, Inc. Our results highlight the different modes and constituent actions in debugging, exhibited by the developers in our dataset.
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