Predicting community preference of comments on the Social Web

Chiao-Fang Hsu, James Caverlee, Elham Khabiri
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引用次数: 3

Abstract

Large-scale socially-generated metadata --like user-contributed tags, comments, and ratings --is one of the key features driving the growth and success of the emerging Social Web. While tags and ratings provide succinct metadata about Social Web content e.g., a tag is often a single keyword, user-contributed comments offer the promise of a rich source of contextual information about Social Web content but in a potentially “messier” form, considering the wide variability in quality, style, and substance of comments generated by a legion of Social Web participants. In this paper, we study how an online community perceives the relative quality of its own user-contributed comments, which has important implications for the successful self-regulation and growth of the Social Web in the presence of increasing spam and a flood of Social Web metadata. Concretely, we propose and evaluate a machine learning-based approach for ranking comments on the Social Web based on the community's expressed preferences, which can be used to promote high-quality comments and filter out low-quality comments. We study several factors impacting community preference, including the contributor's reputation and community activity level, as well as the complexity and richness of the comment. Through experiments over three social news platforms Digg, Reddit, and the New York Times, we find that the proposed approach results in significant improvement in ranking quality versus alternative approaches.
预测社区对社交网络评论的偏好
大规模社交生成的元数据——如用户贡献的标签、评论和评级——是推动新兴社交网络增长和成功的关键特性之一。标签和评级提供了关于社交网络内容的简洁元数据(例如,标签通常是一个关键字),而用户贡献的评论提供了关于社交网络内容的丰富的上下文信息来源,但考虑到大量社交网络参与者产生的评论在质量、风格和内容上的广泛变化,用户贡献的评论可能会以一种潜在的“混乱”形式出现。在本文中,我们研究了在线社区如何感知其用户贡献评论的相对质量,这对于在垃圾邮件和社交网络元数据泛滥的情况下社交网络的成功自我监管和增长具有重要意义。具体而言,我们提出并评估了一种基于机器学习的方法,该方法基于社区表达的偏好对社交网络上的评论进行排名,该方法可用于促进高质量的评论并过滤掉低质量的评论。我们研究了影响社区偏好的几个因素,包括贡献者的声誉和社区活动水平,以及评论的复杂性和丰富性。通过对三个社交新闻平台Digg、Reddit和纽约时报的实验,我们发现,与其他方法相比,所提出的方法在排名质量方面有显著提高。
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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