面向众包软件开发人员的个性化队友推荐

Luting Ye, Hailong Sun, Xu Wang, Jiaruijue Wang
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引用次数: 17

摘要

大多数众包软件开发平台都采用竞赛模式来征求社区的贡献。为了在复杂的任务中获得竞争力,众包软件开发人员经常选择与他人合作。然而,现有的众包平台普遍要求开发者独立贡献,不能为团队组建提供有效的支持。之前关于团队推荐的研究旨在通过推荐最合适的团队来优化任务结果,而不是为特定的人寻找合适的合作者。在这项工作中,我们关注众包开发人员的队友推荐。首先,本文给出了Kaggle的实证研究结果,该结果表明,开发者的个人队友偏好主要受三个因素的影响。其次,我们给出了一个协作意愿模型来表征开发人员的队友偏好,并将队友推荐问题表述为一个优化问题。然后,我们设计了一个近似算法来为开发人员找到合适的团队成员。最后,我们在Kaggle数据集上进行了一组实验,以评估我们方法的有效性。
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Personalized Teammate Recommendation for Crowdsourced Software Developers
Most crowdsourced software development platforms adopt contest paradigm to solicit contributions from the community. To attain competitiveness in complex tasks, crowdsourced software developers often choose to work with others collaboratively. However, existing crowdsourcing platforms generally assume independent contributions from developers and do not provide effective support for team formation. Prior studies on team recommendation aim at optimizing task outcomes by recommending the most suitable team for a task instead of finding appropriate collaborators for a specific person. In this work, we are concerned with teammate recommendation for crowdsourcing developers. First, we present the results of an empirical study of Kaggle, which shows that developers' personal teammate preferences are mainly affected by three factors. Second, we give a collaboration willingness model to characterize developers' teammate preferences and formulate the teammate recommendation problem as an optimization problem. Then we design an approximation algorithm to find suitable teammates for a developer. Finally, we have conducted a set of experiments on a Kaggle dataset to evaluate the effectiveness of our approach.
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