微任务众包中自我纠正效应的实证研究

Masaki Kobayashi, H. Morita, Masaki Matsubara, N. Shimizu, Atsuyuki Morishima
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引用次数: 1

摘要

众包任务的自我纠正是一个两阶段设置,允许众包工作者审查其他工作者的任务结果;然后,工作人员有机会根据审查更新他们的结果。自我校正被提出作为统计算法的补充方法,其中工作人员独立执行相同的任务。它可以以较低的额外成本提供更高质量的结果。然而,到目前为止,这些影响只在模拟中得到证明,需要进行经验评价。此外,由于自我纠正为员工提供了反馈,一个有趣的问题出现了:在自我纠正任务中是否观察到感知学习。本文报告了我们在现实世界众包服务中自我修正的实验结果。我们发现:(1)自我纠正对员工重新考虑自己的判断是有效的,(2)在第二阶段向员工展示高质量员工的任务结果时,自我纠正的效果更强,(3)在某些情况下观察到感知学习效应。自我纠正可以提供反馈,向员工展示如何在未来的任务中提供高质量的答案。(4)观察到感知学习效应,特别是在第二阶段适度改变答案的员工。这表明我们可以衡量员工的学习潜力。这些发现意味着请求者/众包服务可以通过自我纠正方法构建一个积极的循环,以改善任务结果。然而,(5)在两种不同情境下,自我纠正任务的长期效应并未转移到其他类似任务中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Empirical Study on Effects of Self-Correction in Crowdsourced Microtasks
Self-correction for crowdsourced tasks is a two-stage setting that allows a crowd worker to review the task results of other workers; the worker is then given a chance to update their results according to the review.Self-correction was proposed as a complementary approach to statistical algorithms, in which workers independently perform the same task.It can provide higher-quality results with low additional costs. However, thus far, the effects have only been demonstrated in simulations, and empirical evaluations are required.In addition, as self-correction provides feedback to workers, an interesting question arises: whether perceptual learning is observed in self-correction tasks.This paper reports our experimental results on self-corrections with a real-world crowdsourcing service.We found that:(1) Self-correction is effective for making workers reconsider their judgments.(2) Self-correction is effective more if workers are shown the task results of higher-quality workers during the second stage.(3) A perceptual learning effect is observed in some cases. Self-correction can provide feedback that shows workers how to provide high-quality answers in future tasks.(4) A Perceptual learning effect is observed, particularly with workers who moderately change answers in the second stage. This suggests that we can measure the learning potential of workers.These findings imply that requesters/crowdsourcing services can construct a positive loop for improved task results by the self-correction approach.However, (5) no long-term effects of the self-correction task were transferred to other similar tasks in two different settings.
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