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Your comments matter: incorporating viewers' comments for ranking online video content using bibliometrics

机译:您的评论资料:将观众的评论合并使用Bibliometrics排名在线视频内容

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摘要

The quality of user-generated content over World Wide Web media is a matter of serious concern for both creators and users. To measure the quality of content, webometric techniques are commonly used. In recent times, bibliometric techniques have been introduced to good effect for evaluation of the quality of user-generated content, which were originally used for scholarly data. However, the application of bibliometric techniques to evaluate the quality of YouTube content is limited to h-index and g-index considering only views. This paper advocates for and demonstrates the adaptation of existing Bibliometric indices including h-index, g-index and M-index exploiting both views and comments and proposes three indices h(vc), g(vc) and m(vc) for YouTube video channel ranking. The empirical results prove that the proposed indices using views along with the comments outperform the existing approaches on a real-world dataset of YouTube.
机译:用户生成的内容质量在万维网媒体上是创造者和用户的严重关切问题。 为了测量内容的质量,通常使用网络计量技术。 最近,已经引入了学习技术的良好效果,以评估最初用于学术数据的用户生成内容的质量。 然而,在考虑视图中,将伯格计量技术评估为youtube内容的质量。 本文倡导并展示了现有的生学计量指标的适应,包括H-Index,G-index和M-Index利用视图和评论,并为YouTube视频提出三个索引H(VC),G(VC)和M(VC) 频道排名。 经验结果证明,拟议的指标使用视图以及评论的概率优于youtube的现实世界数据集上的现有方法。

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