Ranking a set of samples based on subjectivity, such as the experience quality of streaming video or the happiness of images, has been a typical crowdsourcing task. Numerous studies have employed paired comparison analysis to solve challenges since it reduces the workload for participants by allowing them to select a single solution. Nonetheless, to thoroughly compare all target combinations, the number of tasks increases quadratically. This paper presents ``CrowDC'', a divide-and-conquer algorithm for paired comparisons. Simulation results show that when ranking more than 100 items, CrowDC can reduce 40-50% in the number of tasks while maintaining 90-95% accuracy compared to the baseline approach.
翻译:根据主观性对一组样本进行分级,如流视频的经验质量或图像的快乐,这一直是典型的众包任务。许多研究采用配对比较分析来解决挑战,因为它通过让参与者选择单一解决方案而减少了他们的工作量。然而,为了彻底比较所有目标组合,任务的数量就增加了四分法。本文展示了“CrowDC' ”, 一种配对比较的分化算法。模拟结果表明,在排位超过100个项目时,CrowDC可以减少任务数量的40-50%,同时比基线方法保持90-95%的准确性。