Crowdsourcing, in which human intelligence and productivity is dynamically mobilized to tackle tasks too complex for automation alone to handle, has grown to be an important research topic and inspired new businesses (e.g., Uber, Airbnb). Over the years, crowdsourcing has morphed from providing a platform where workers and tasks can be matched up manually into one which leverages data-driven algorithmic management approaches powered by artificial intelligence (AI) to achieve increasingly sophisticated optimization objectives. In this paper, we provide a survey presenting a unique systematic overview on how AI can empower crowdsourcing - which we refer to as AI-Empowered Crowdsourcing(AIEC). We propose a taxonomy which divides algorithmic crowdsourcing into three major areas: 1) task delegation, 2) motivating workers, and 3) quality control, focusing on the major objectives which need to be accomplished. We discuss the limitations and insights, and curate the challenges of doing research in each of these areas to highlight promising future research directions.
翻译:多年来,众包从提供一个平台,使工人和任务可以人工匹配到一个平台,从而利用人工智能(AI)所推动的数据驱动算法管理方法来实现日益复杂的优化目标。 本文提供了一份调查,对大赦国际如何增强众包能力(我们称之为AI-Emowered Crowdform(AIEC))进行了独特的系统化概述。 我们建议了一种分类法,将众包分为三个主要领域:1)任务授权,2)激励工人,3)质量控制,侧重于需要实现的主要目标。我们讨论了在每一个领域开展研究的局限性和洞察力,并解决了研究的挑战,以突出有希望的未来研究方向。