利用人为因素增强众包系统的查询应答能力

Dalila Koulougli, A. Hadjali, Idir Rassoul
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引用次数: 2

摘要

近年来,众包在广泛的Web应用程序中变得至关重要。在基于众包的解决任务中,人为因素在获得高质量答案方面起着关键作用。最主要的因素是工人对解决手头任务的反应不确定。另一方面,工人可能具有不同水平的专业知识和技能。因此,在汇总工人回答集时,考虑不确定性和专业知识的程度是很重要的。在本文中,我们研究了一些先进的众包聚合方法,通过统一的方式利用工人的专业知识和不确定性来找到正确的答案。工人的不确定性以可能性的方式表示,同时引入了解释技能程度的细粒度尺度。最后,我们给出了一些综合实验来验证我们的建议的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Leveraging human factors to enhance query answering in crowdsourcing systems
In recent years, crowdsourcing has become essential in a wide range of Web applications. Human factors play a key role in achieving high quality answers in crowdsourcing-based solving tasks. The most major factor is pertained to the uncertainty of workers about the responses that they provide to resolve the task at hand. On the other hand, workers may have diverse levels of expertise and skill. It is then important to take into account both the degrees of uncertainty and expertise when aggregating the set of worker answers. In this paper, we investigate some advanced crowdsourcing aggregation methods to find the correct answers by leveraging both expertise and uncertainty of workers in a unified way. Workers' uncertainty is represented in a possibilistic way, while a fine-grained scale for interpreting the degrees of skill is introduced. Finally, we present some comprehensive experiments to validate the effectiveness of our proposal.
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