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A hybrid recommender system for finding relevant users in open source forums

机译:用于在开源论坛中查找相关用户的混合推荐系统

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Open source projects rely heavily on online forums as a key input to the requirements process. These forums are valuable sources for information about the users and their needs. Part of the success of open source projects depends on the collaboration and synergy of community members as they engage in active and productive discussions through posting comments, questions, and advice to online forums. However, the lack of feedback which occurs when initial posts go unanswered can negatively affect the users' perception of the project, and can subsequently impede adoption, create frustration, and lead to loss of opportunities from not understanding and satisfying the users' needs. This problem is quite common in open source forums. Our recent analysis of seven open source projects found that anywhere from 14% to 37% of user posts never get a reply. This paper directly addresses the problem of unanswered posts by presenting a hybrid recommender system that can be used to identify potential users who might be capable of responding to unanswered posts. The proposed system was evaluated using a statistical cross validation, and results show that it significantly outperformed a benchmark random recommender in terms of precision and recall. In addition, an informal analysis of the relationships between the users and the threads is presented to provide further evidence for the potential of recommender systems in this area.
机译:开源项目严重依赖在线论坛作为需求流程的关键输入。这些论坛是有关用户及其需求信息的宝贵资源。开源项目成功的部分原因在于社区成员通过在在线论坛上发表评论,问题和建议来进行积极而富有成效的讨论,而他们的协作与协同作用。但是,当最初的帖子没有得到答复时,缺乏反馈会负面影响用户对项目的感知,并可能随后阻碍采用,造成挫败感,并由于无法理解和满足用户的需求而导致失去机会。这个问题在开源论坛中很常见。我们最近对七个开源项目的分析发现,从14%到37%的用户帖子中任何地方都不会得到答复。本文通过提出一种混合推荐系统来直接解决未答复帖子的问题,该系统可用于识别可能能够响应未答复帖子的潜在用户。使用统计交叉验证对提议的系统进行了评估,结果表明,就准确性和召回率而言,该系统明显优于基准随机推荐器。此外,还对用户和线程之间的关系进行了非正式分析,以提供进一步的证据,证明推荐系统在该领域的潜力。

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