Extensive work has argued in favour of paying crowd workers a wage that is at least equivalent to the U.S. federal minimum wage. Meanwhile, research on collecting high quality annotations suggests using a qualification that requires workers to have previously completed a certain number of tasks. If most requesters who pay fairly require workers to have completed a large number of tasks already then workers need to complete a substantial amount of poorly paid work before they can earn a fair wage. Through analysis of worker discussions and guidance for researchers, we estimate that workers spend approximately 2.25 months of full time effort on poorly paid tasks in order to get the qualifications needed for better paid tasks. We discuss alternatives to this qualification and conduct a study of the correlation between qualifications and work quality on two NLP tasks. We find that it is possible to reduce the burden on workers while still collecting high quality data.
翻译:大量工作主张向人群工人支付至少相当于美国联邦最低工资的工资。 同时,关于收集高质量说明的研究表明,采用要求工人事先完成一定数量任务的资格要求。如果大部分支付公平工资的要求者要求工人完成大量任务,那么工人在获得公平工资之前需要完成大量低工资的工作。通过分析工人讨论和对研究人员的指导,我们估计工人花费大约2.25个月的全时精力从事低工资工作,以获得高工资工作所需的资格。我们讨论这一资格的替代办法,并对两项国家劳工计划任务的资格与工作质量之间的相互关系进行研究。我们发现,在收集高质量数据的同时,可以减轻工人的负担。