Distribution, correlation and prediction of response times in Stack Overflow

Preeti Arunapuram, Jacob W. Bartel, P. Dewan
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引用次数: 9

Abstract

The sending of a message raises two important questions about its response: When will the first response arrive? When will the first acceptable response arrive? These questions can be partly or completely answered by identifying distributions of response times, correlating features with response times, and/or predicting the actual response times. We address distribution, correlation and prediction of response times in Stack Overflow. We analyzed response times of over two million question-answer threads. We found no strong correlation between response times and features studied in other messaging domains: (a) use of various kinds of pronouns and punctuations, and (b) the time of day, and day of week when messages were sent. We found that title lengths show a quadratic relationship with median response time and that mean response times vary according to the tags used in a post. We explored a large design space of prediction algorithms based on the distributions of response times. These approaches predicted ranges of time that were automatically determined using a clustering algorithm. The best results were given by an approach that combines, using an index-base weighted-average algorithm introduced here, the most frequent time-ranges in the distributions for the tags in the posts.
堆栈溢出中响应时间的分布、相关性和预测
消息的发送会引起关于其响应的两个重要问题:第一个响应何时到达?第一个可接受的响应何时到达?通过识别响应时间的分布、将特性与响应时间关联起来,以及/或预测实际响应时间,可以部分或完全回答这些问题。我们在Stack Overflow中讨论响应时间的分布、相关性和预测。我们分析了超过200万个问答线程的响应时间。我们发现响应时间与其他消息传递领域研究的特征之间没有很强的相关性:(a)使用各种代词和标点符号,以及(b)发送消息的时间和星期几。我们发现标题长度与中位数响应时间呈二次关系,平均响应时间根据帖子中使用的标签而变化。我们探索了基于响应时间分布的预测算法的大设计空间。这些方法预测的时间范围是使用聚类算法自动确定的。使用本文介绍的基于索引的加权平均算法,结合帖子中标签分布中最频繁的时间范围的方法可以获得最佳结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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