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HirePeer: Impartial Peer-Assessed Hiring at Scale in Expert Crowdsourcing Markets

机译:HiRepeer:专家众群市场的规模分摊招聘的公正同行评估

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Expert crowdsourcing (e.g., Upwork.com) provides promising benefits such as productivity improvements for employers, and flexible working arrangements for workers. Yet to realize these benefits, a key persistent challenge is effective hiring at scale. Current approaches, such as reputation systems and standardized competency tests, develop weaknesses such as score inflation over time, thus degrading market quality. This paper presents HirePeer, a novel alternative approach to hiring at scale that leverages peer assessment to elicit honest assessments of fellow workers' job application materials, which it then aggregates using an impartial ranking algorithm. This paper reports on three studies that investigate both the costs and the benefits to workers and employers of impartial peer-assessed hiring. We find, to solicit honest assessments, algorithms must be communicated in terms of their impartial effects. Second, in practice, peer assessment is highly accurate, and impartial rank aggregation algorithms incur a small accuracy cost for their impartiality guarantee. Third, workers report finding peer-assessed hiring useful for receiving targeted feedback on their job materials.
机译:专家众包(例如,Upwork.com)提供了有希望的福利,如雇主的生产力改进,以及对工人的灵活工作安排。然而,为了实现这些效益,一个关键的持续挑战是有效的招聘。目前的方法,如声誉系统和标准化的能力测试,发展劣势,如时间随着时间的推移,从而降低市场质量。本文介绍了招聘的新替代方法,以招聘规模,利用同行评估,以引发对同事的工作申请材料的诚实评估,然后使用公正排名算法汇总。本文报告了三项研究,调查了对工人和公正同行评估招聘的工人和雇主的福利。我们发现,征求诚实评估,必须在其公正效应方面进行沟通算法。其次,在实践中,同行评估是高度准确的,并且公正的等级聚集算法为其公正保证提供了小的准确性成本。第三,工人报告发现对同行评估招聘可用于接受其工作材料的目标反馈。

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