Optimizing Open-Ended Crowdsourcing: The Next Frontier in Crowdsourced Data Management.

Aditya Parameswaran, Akash Das Sarma, Vipul Venkataraman
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Abstract

Crowdsourcing is the primary means to generate training data at scale, and when combined with sophisticated machine learning algorithms, crowdsourcing is an enabler for a variety of emergent automated applications impacting all spheres of our lives. This paper surveys the emerging field of formally reasoning about and optimizing open-ended crowdsourcing, a popular and crucially important, but severely understudied class of crowdsourcing-the next frontier in crowdsourced data management. The underlying challenges include distilling the right answer when none of the workers agree with each other, teasing apart the various perspectives adopted by workers when answering tasks, and effectively selecting between the many open-ended operators appropriate for a problem. We describe the approaches that we've found to be effective for open-ended crowdsourcing, drawing from our experiences in this space.

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优化开放式众包:众包数据管理的下一个前沿。
众包是大规模生成训练数据的主要手段,当与复杂的机器学习算法相结合时,众包是影响我们生活各个领域的各种新兴自动化应用程序的推动者。本文调查了关于开放式众包的正式推理和优化的新兴领域,这是一个流行的、至关重要的、但严重缺乏研究的众包类别——众包数据管理的下一个前沿。潜在的挑战包括在员工意见不一致的情况下提炼出正确的答案,梳理员工在回答任务时采用的不同观点,以及有效地在许多适合某个问题的开放式操作符之间进行选择。根据我们在这个领域的经验,我们描述了我们发现的对开放式众包有效的方法。
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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