面向众包平台通用任务的员工绩效预测模型

Qianli Xing, Weiliang Zhao, Jian Yang, Jia Wu, Qi Wang
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引用次数: 0

摘要

众包平台被广泛用于请求者为一般任务寻找工人。一般任务的答案通常是开放的,不受多项选择的限制。对于一般任务,工人绩效预测模型可以简化众包中的任务分配过程。工作人员性能预测受到三个角色的影响:工作人员、请求者和任务。现有的员工绩效预测模型主要考虑任务和员工的特征。然而,这些模型很少考虑请求者的特性。现有的多选题工作人员绩效预测模型是基于工作人员的选择准确性建立的,并不适用于一般任务。在这项工作中,我们通过考虑工人、任务和请求者的特征,提出了一个工人绩效预测模型,以帮助请求者在众包平台上为其一般任务选择工人。我们设计了一个关系学习模块来学习工作者、任务和请求者的低维关系表示。此外,我们设计了一个基于员工、任务和请求者的特征和关系表征的绩效学习模型来预测员工的绩效。针对猪八戒平台的真实数据集进行了一组实验。实验结果表明,该方法比现有的基线方法具有更好的预测效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
WorP: A Novel Worker Performance Prediction Model for General Tasks on Crowdsourcing Platforms
Crowdsourcing platforms are widely used for requesters to find workers for general tasks. The answers to general tasks are usually open and not constrained by multiple choices. For the general tasks, the worker performance prediction models can facilitate the task assignment process in crowdsourcing. Worker performance prediction is affected by the three roles: the worker, the requester, and the task. The existing worker performance prediction models mainly consider the features of tasks and workers. However, these models rarely consider the features of requesters. And the existing worker performance prediction models for multiple-choice tasks are not suitable for general tasks as they are built based on the workers' accuracy on choices. In this work, we propose a worker performance prediction model by taking account of features of workers, tasks, and requesters to help requesters select workers for their general tasks on crowdsourcing platforms. We design a relationship learning module to learn the low dimension relationship representations of workers, tasks, and requesters. Furthermore, we design a performance learning model to predict workers' performance based on the features and relationship representations of workers, tasks, and requesters. A set of experiments against the realworld dataset from the Zhubajie platform has been conducted. Experimental results show that the proposed approach has better prediction results than the existing baseline methods.
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