在堆栈溢出预测可接受答案时评估简单和复杂模型的性能

Osayande P. Omondiagbe, Sherlock A. Licorish, Stephen G. MacDonell
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引用次数: 0

摘要

堆栈溢出用于解决软件开发过程中的编程问题。研究工作旨在确定该平台上的相关内容。特别是,研究人员提出了各种建模技术来预测可接受的堆栈溢出答案。然而,较少的兴趣被用于检查关于模型和特征复杂性的典型建模方法的性能和质量。这样的见解对于许多为Stack Overflow开发模型的实践者来说可能具有实际意义。本研究考察了两种不同复杂程度的建模方法的性能和质量,用于预测Java和JavaScript在堆栈溢出上的可接受答案。我们的数据集包括2014-2016年的249588个帖子。结果显示,给定的特征类型和模型的复杂性,模型的性能和质量存在显著差异。研究人员检查模型的性能、质量和特征复杂性,可以利用这些发现来选择合适的建模方法进行问答预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluating Simple and Complex Models’ Performance When Predicting Accepted Answers on Stack Overflow
Stack Overflow is used to solve programming issues during software development. Research efforts have looked to identify relevant content on this platform. In particular, researchers have proposed various modelling techniques to predict acceptable Stack Overflow answers. Less interest, however, has been dedicated to examining the performance and quality of typically used modelling methods with respect to the model and feature complexity. Such insights could be of practical significance to the many practitioners who develop models for Stack Overflow. This study examines the performance and quality of two modelling methods, of varying degree of complexity, used for predicting Java and JavaScript acceptable answers on Stack Overflow. Our dataset comprised 249,588 posts drawn from years 2014-2016. Outcomes reveal significant differences in models’ performances and quality given the type of features and complexity of models used. Researchers examining model performance and quality and feature complexity may leverage these findings in selecting suitable modelling approaches for Q&A prediction.
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