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Task Relevance and Diversity as Worker Motivation in Crowdsourcing

机译:作为众包中工人动机的任务相关性和多样性

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Task assignment is a central component in crowd-sourcing. Organizational studies have shown that worker motivation in completing tasks has a direct impact on the quality of individual contributions. In this work, we examine motivation-aware task assignment in the presence of a set of workers. We propose to model motivation as a balance between task relevance and task diversity and argue that an adaptive approach to task assignment can best capture the evolving nature of motivation. Worker motivation is observed and task assignment is revisited appropriately across iterations. We prove the problem to be NP-hard as well as MaxSNP-Hard and develop efficient approximation algorithms with provable guarantees. Our experiments with synthetic data examine the scalability of our algorithms, and our live real data experiments show that capturing motivation using relevance and diversity leads to high crowdwork quality.
机译:任务分配是人群采购中的核心组成部分。组织研究表明,完成任务的工人动机直接影响个人贡献的质量。在这项工作中,我们在存在一组工人的情况下检查动机感知任务分配。我们建议将动力模拟作为任务相关性和任务多样性之间的平衡,并争辩说,任务任务的自适应方法可以最好地捕捉动机的不断变化的性质。观察工作动机,并在迭代中适当地重新审判任务分配。我们证明了NP - 硬的问题以及MaxSnp-Hard和MaxSnp-Hard和Chable高近似算法,具有可证明的保证。我们的综合数据的实验检查了我们算法的可扩展性,我们的实时数据实验表明,使用相关性和多样性捕获动机导致高人群质量。

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