利用隐性团队合作知识提高众包过程的质量

Mohammad Allahbakhsh, Samira Samimi, H. M. Nezhad, B. Benatallah
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引用次数: 10

摘要

在线众包系统的工作人员有不同程度的专业知识、可信度、激励和动机。因此,招聘到足够数量的合适员工一直是一个挑战。现有的方法通常是通过公开招聘、建立友谊关系、将他们的个人资料与任务要求相匹配或招聘员工团队来招聘员工。但仍有挑战需要更多的调查,主要是所有现有的招聘方法都极易受到合作不当行为的影响,即勾结。这些团体极易受到串通攻击。在本文中,我们提出了一种考虑员工个人和社会属性的招聘方法来寻找合适的员工。该方法通过发现员工之间的间接协作,利用隐性团队知识,提高众包任务的产出质量,同时防止共谋攻击。采用基于Stack overflow的公共数据转储构建的模拟数据对所提出的方法进行了实现和测试。评价结果表明所得结果的准确性和本文方法相对于其他相关工作的优越性。
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Harnessing Implicit Teamwork Knowledge to Improve Quality in Crowdsourcing Processes
Workers in online crowd sourcing systems have different levels of expertise, trustworthiness, incentives and motivations. Therefore, recruiting sufficient number of well-suited workers is always a challenge. Existing methods usually recruit workers through open calls, friendships relations, matching their profiles with task requirements or recruiting teams of workers. But there are still challenges that need more investigations, mainly all existing recruitment methods are highly vulnerable to collaborating misbehaviour, i.e., Collusion. %These groups are highly vulnerable to collusion attacks. In this paper, we propose a recruitment method which takes into account individual and social attributes of workers to find suitable workers. The method discovers indirect collaborations between workers to harness implicit teamwork knowledge in order to increase the quality of crowd sourcing tasks' outcome and in the same time prevent collusion attacks. The proposed method is implemented and tested using the simulated data, build based on a public data dump from Stack overflow. The evaluation results show the accuracy of the obtained results and superiority of our proposed method over the other related work.
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