使用主题模型预测IDE中未来开发人员的行为

Kostadin Damevski, Hui Chen, D. Shepherd, Nicholas A. Kraft, L. Pollock
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引用次数: 2

摘要

从开发人员在IDE中的日常点击和按键中收集的交互数据已经在实证研究和软件工程推荐系统中得到了应用。我们观察到这些数据有几个特征,这些特征在ide中很常见:1)指数分布——一些事件或命令在跟踪中占主导地位(例如,光标移动命令),而大多数其他命令出现的频率相对较低;2)噪声-跟踪包括虚假命令(或点击)或不相关的事件,这些事件可能对感兴趣的行为不重要;3)由重叠的事件和命令组成——特定的命令可以通过单独的机制调用,类似的事件可以由不同的来源触发。这些数据的特征与自然语言语料库中同义词和多义的特征相似。因此,本文(和演示文稿)为这类数据提出了一种新的建模方法,利用通常应用于自然语言文本流的主题模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
[Journal First] Predicting Future Developer Behavior in the IDE Using Topic Models
Interaction data, gathered from developers' daily clicks and key presses in the IDE, has found use in both empirical studies and in recommendation systems for software engineering. We observe that this data has several characteristics, common across IDEs: 1) exponentially distributed - some events or commands dominate the trace (e.g., cursor movement commands), while most other commands occur relatively infrequently; 2) noisy - the traces include spurious commands (or clicks), or unrelated events, that may not be important to the behavior of interest; 3) comprise of overlapping events and commands - specific commands can be invoked by separate mechanisms, and similar events can be triggered by different sources. These characteristics of this data are analogous to the characteristics of synonymy and polysemy in natural language corpora. Therefore, this paper (and presentation) presents a new modeling approach for this type of data, leveraging topic models typically applied to streams of natural language text.
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