基于答案编辑挖掘的堆栈溢出演化模式研究

Themistoklis G. Diamantopoulos, Maria-Ioanna Sifaki, A. Symeonidis
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引用次数: 6

摘要

当前的实践状态表明,为了解决构建软件时遇到的问题,开发人员会在在线平台上寻求帮助,例如Stack Overflow。在这种协作环境中,问题帖子的答案通常会经过多次编辑,以提供所述问题的最佳解决方案。在这项工作中,我们探索挖掘堆栈溢出回答编辑的潜力,以提取回复帖子时的常见模式。特别地,我们设计了一个相似性方案,该方案根据语义考虑了答案编辑和聚类编辑的文本和代码。在应用我们的方法时,我们提供了频繁的编辑模式,并指出如何使用它们来回答未来的研究问题。评估我们的方法表明,它可以有效地识别通常应用的编辑,从而说明从初始答案到最优解决方案的转换路径。
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Towards Mining Answer Edits to Extract Evolution Patterns in Stack Overflow
The current state of practice dictates that in order to solve a problem encountered when building software, developers ask for help in online platforms, such as Stack Overflow. In this context of collaboration, answers to question posts often undergo several edits to provide the best solution to the problem stated. In this work, we explore the potential of mining Stack Overflow answer edits to extract common patterns when answering a post. In particular, we design a similarity scheme that takes into account the text and code of answer edits and cluster edits according to their semantics. Upon applying our methodology, we provide frequent edit patterns and indicate how they could be used to answer future research questions. Assessing our approach indicates that it can be effective for identifying commonly applied edits, thus illustrating the transformation path from the initial answer to the optimal solution.
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