众包市场中意见多样性的相似性驱动模型和任务驱动模型

Chen Jason Zhang, Yunrui Liu, Pengcheng Zeng, Ting Wu, Lei Chen, Pan Hui, Fei Hao
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摘要

最近,众包的蓬勃发展为在数据分析领域利用人类智慧开辟了一条新途径。这种创新方法提供了一种强有力的手段,将在线工作者与那些由于成本限制而无法完全由机器或专业专家有效完成的任务联系起来。在社会科学领域,构建一个完善的人群需要具备四个要素--意见多样性、独立性、分散性和聚合性。然而,虽然其他三个要素已经在现有的众包平台中得到了研究和实施,但 "意见多样性 "尚未在功能上得以实现。从计算的角度来看,要构建一个明智的人群,就必须对多样性进行量化建模并将其考虑在内。在众包市场中,通常有两种工人选择模式:建立一个人群等待任务到来,以及为给定任务选择工人。我们为这两种模式提出了相似性驱动模型和任务驱动模型。此外,我们还开发了高效的算法,用于在这两种模式中招募数量有限且具有最佳多样性的工人。为了验证我们的解决方案,我们使用合成数据集和真实数据集进行了大量实验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Similarity-driven and task-driven models for diversity of opinion in crowdsourcing markets

The recent boom in crowdsourcing has opened up a new avenue for utilizing human intelligence in the realm of data analysis. This innovative approach provides a powerful means for connecting online workers to tasks that cannot effectively be done solely by machines or conducted by professional experts due to cost constraints. Within the field of social science, four elements are required to construct a sound crowd—Diversity of Opinion, Independence, Decentralization and Aggregation. However, while the other three components have already been investigated and implemented in existing crowdsourcing platforms, ‘Diversity of Opinion’ has not been functionally enabled yet. From a computational point of view, constructing a wise crowd necessitates quantitatively modeling and taking diversity into account. There are usually two paradigms in a crowdsourcing marketplace for worker selection: building a crowd to wait for tasks to come and selecting workers for a given task. We propose similarity-driven and task-driven models for both paradigms. Also, we develop efficient and effective algorithms for recruiting a limited number of workers with optimal diversity in both models. To validate our solutions, we conduct extensive experiments using both synthetic datasets and real data sets.

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