在CrowdRE中使用视觉视频的潜力:视频评论作为反馈来源

Oliver Karras, Eklekta Kristo, J. Klünder
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引用次数: 7

摘要

视觉视频的建立是为了在需求工程(RE)实践中征求反馈和刺激讨论,比如焦点小组。不同的研究人员通过在社交媒体平台上使用视觉视频,将这些好处转移到基于人群的RE (CrowdRE)中。然而,到目前为止,很少有研究详细探讨了在CrowdRE中使用视觉视频的潜力。在本文中,我们分析和评估了这种潜力,特别关注视频评论作为反馈的来源。在一个案例研究中,我们分析了YouTube上一个视觉视频的4505条评论。我们发现,该视频在四天内吸引了2660名观众的2770条评论。这是该视频四年来收到的所有评论的50%以上。尽管这些评论中只有一部分与RE相关,但相关的评论涉及用户反馈的典型意图和主题,例如功能请求或问题报告。除了典型的用户反馈类别外,我们还发现了300多条关于安全主题的评论,这些评论在以前的用户反馈分析中没有出现。在自动分析中,我们比较了三种机器学习算法在分类视频评论方面的性能。尽管存在一定的差异,但算法对视频评论进行了很好的分类。基于这些发现,我们得出结论,在CrowdRE中使用视觉视频具有很大的潜力。尽管案例研究处于初步阶段,但我们乐观地认为,视觉视频可以激励利益相关者积极参与人群,并征求大量视频评论作为宝贵的反馈来源。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Potential of Using Vision Videos for CrowdRE: Video Comments as a Source of Feedback
Vision videos are established for soliciting feedback and stimulating discussions in requirements engineering (RE) practices such as focus groups. Different researchers motivated the transfer of these benefits into crowd-based RE (CrowdRE) by using vision videos on social media platforms. So far, however, little research explored the potential of using vision videos for CrowdRE in detail. In this paper, we analyze and assess this potential, in particular, focusing on video comments as a source of feedback. In a case study, we analyzed 4505 comments on a vision video from YouTube. We found that the video solicited 2770 comments from 2660 viewers in four days. This is more than 50% of all comments the video received in four years. Even though only a certain fraction of these comments are relevant to RE, the relevant comments address typical intentions and topics of user feedback, such as feature request or problem report. Besides the typical user feedback categories, we found more than 300 comments that address the topic safety which has not appeared in previous analyses of user feedback. In an automated analysis, we compared the performance of three machine learning algorithms on classifying the video comments. Despite certain differences, the algorithms classified the video comments well. Based on these findings, we conclude that the use of vision videos for CrowdRE has a large potential. Despite the preliminary nature of the case study, we are optimistic that vision videos can motivate stakeholders to actively participate in a crowd and solicit numerous of video comments as a valuable source of feedback.
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