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Exploiting the Deep-Link Commentsphere to Support Non-Linear Video Access

机译:利用深度链接评论圈来支持非线性视频访问

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摘要

In this paper, we investigate the usefulness of deep links for improving video search results. Deep links are time-coded comments with which viewers express their reactions to the content at specific time-points of a video that they find noteworthy. The rationale underlying our work is that deep links can open up an interesting new perspective on the relevance of a video, namely focusing on individual video segments, in addition to the existing ones that typically concern a video as a whole. In this perspective, deep-link comments provide non-linear access to videos via their time-codes, which can match alternate dimensions of user needs that extend beyond topical and affective relevance. We explore the different types of deep-link comments and develop a viewer expressive reaction variety (VERV) typology that captures how viewers deep-link on YouTube. We validate this typology through a user study on Amazon Mechanical Turk to show that it is a typology human annotators can agree upon. We then demonstrate, through experiments, that deep-link comments can automatically be classified into VERV categories and show the potential of our proposed usage of deep-link comments for video search through a user study.
机译:在本文中,我们研究了深层链接对改善视频搜索结果的有用性。深层链接是按时间编码的注释,观众可以在其中发现值得注意的视频的特定时间点对内容表达自己的反应。我们工作的基本原理是,深层链接可以为视频的相关性开辟一个有趣的新视角,即除了通常涉及整个视频的现有视频片段之外,还可以关注各个视频片段。从这个角度来看,深层链接评论通过其时间码提供了对视频的非线性访问,可以匹配超出主题和情感相关性的用户需求的其他维度。我们探索了不同类型的深层链接评论,并开发了一种观众表现性反应多样性(VERV)类型,该类型捕获了观众如何在YouTube上进行深层链接。我们通过在Amazon Mechanical Turk上进行的一项用户研究验证了这种类型,以表明它是人类注释者可以同意的一种类型。然后,我们通过实验证明可以将深层链接评论自动分类为VERV类别,并通过用户研究显示出我们建议的深层链接评论在视频搜索中的应用潜力。

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