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Probabilistic Multigraph Modeling for Improving the Quality of Crowdsourced Affective Data

机译:提高众包情感数据质量的概率多金属造型

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We proposed a probabilistic approach to joint modeling of participants' reliability and humans' regularity in crowdsourced affective studies. Reliability measures how likely a subject will respond to a question seriously; and regularity measures how often a human will agree with other seriously-entered responses coming from a targeted population. Crowdsourcing-based studies or experiments, which rely on human self-reported affect, pose additional challenges as compared with typical crowdsourcing studies that attempt to acquire concrete non-affective labels of objects. The reliability of participants has been massively pursued for typical non-affective crowdsourcing studies, whereas the regularity of humans in an affective experiment in its own right has not been thoroughly considered. It has been often observed that different individuals exhibit different feelings on the same test question, which does not have a sole correct response in the first place. High reliability of responses from one individual thus cannot conclusively result in high consensus across individuals. Instead, globally testing consensus of a population is of interest to investigators. Built upon the agreement multigraph among tasks and workers, our probabilistic model differentiates subject regularity from population reliability. We demonstrate the method's effectiveness for in-depth robust analysis of large-scale crowdsourced affective data, including emotion and aesthetic assessments collected by presenting visual stimuli to human subjects.
机译:我们提出了一种概率的方法,可以在众群情感研究中联合建模的参与者的可靠性和人类规律性。可靠性衡量主题有多可能对问题进行回应;和规律性测量人类将如何与来自目标人口的其他严重的答复一致。与典型的众包的研究相比,众所周境的研究或实验依赖于人类自我报告的影响,造成额外的挑战,这些群体试图获取物体的混凝土不情感标签。参与者的可靠性已经大量追求典型的非情感众群研究,而自身权利中的情感实验中的人类的规律性尚未得到彻底考虑。经常观察到,不同的个体在相同的测试问题上表现出不同的感受,这在第一位置没有唯一的正确响应。因此,来自一个人的响应的高可靠性不能得出跨越个人的高共识。相反,全球人口的全球测试达成了调查人员感兴趣。我们构建在任务和工人之间的协议中,我们的概率模型将主题规律与人口可靠性区分开来。我们展示了对大规模众群情感数据的深入稳健分析的方法的有效性,包括通过向人类受试者提出视觉刺激而收集的情感和美学评估。

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