A Technique for Ranking and Visualization of Crowd-Powered Subjective Evaluations

Erika Gomi, Yuri Saito, T. Itoh, Mariko Hagita, M. Takatsuka
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引用次数: 1

Abstract

We previously presented a crowd-powered digital contents evaluation system. This system shows a lot of pictures to the answerers and ask them to input the evaluations. It preferentially selects pictures which are predicted to be highly or poorly evaluated to the answerers, based on our assumption that high or poor evaluations are more informative results comparing with moderate evaluations. We have applied an interactive genetic algorithm in our system to select such pictures. This paper presents a technique for ranking and visualization for the evaluation results collected by our system. The presented technique calculates scores of all contents and uses for the ranking. Here, it may happen that some pictures are shown to no answerers while using our evaluation system. Our technique presented in this paper estimates the evaluation of such pictures shown to no answerers, and finally complete the ranking of all the pictures. The paper also presents the visualization tool for the ranking of pictures, and our experiment to demonstrate the effectiveness of our technique.
群体主观评价的排序和可视化技术
我们之前提出了一个大众驱动的数字内容评估系统。该系统向答题者展示大量图片,并要求他们输入评价。根据我们的假设,与中等评价相比,高评价或差评价是更有信息量的结果,它会优先选择预测对答案评价较高或较差的图片。我们在系统中应用了交互式遗传算法来选择这样的图片。本文提出了一种对系统收集的评价结果进行排序和可视化的技术。所提出的技术计算所有内容和使用的分数,以进行排名。在这里,可能会发生一些图片显示没有答案,而使用我们的评估系统。我们在本文中提出的技术是对这些没有答案的图片进行评估,并最终完成所有图片的排名。本文还介绍了用于图片排序的可视化工具,并通过实验验证了该技术的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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