Aggregating content and network information to curate twitter user lists

Derek Greene, Gavin Sheridan, Barry Smyth, P. Cunningham
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引用次数: 22

Abstract

Twitter introduced user lists in late 2009, allowing users to be grouped according to meaningful topics or themes. Lists have since been adopted by media outlets as a means of organising content around news stories. Thus the curation of these lists is important - they should contain the key information gatekeepers and present a balanced perspective on a story. Here we address this list curation process from a recommender systems perspective. We propose a variety of criteria for generating user list recommendations, based on content analysis, network analysis, and the "crowdsourcing" of existing user lists. We demonstrate that these types of criteria are often only successful for datasets with certain characteristics. To resolve this issue, we propose the aggregation of these different "views" of a news story on Twitter to produce more accurate user recommendations to support the curation process.
聚合内容和网络信息来管理twitter用户列表
Twitter在2009年底推出了用户列表,允许用户根据有意义的话题或主题进行分组。自那以后,媒体就采用了列表作为围绕新闻故事组织内容的一种手段。因此,这些列表的管理是很重要的——它们应该包含关键的信息看门人,并对一个故事提供一个平衡的视角。在这里,我们从推荐系统的角度来解决这个列表管理过程。基于内容分析、网络分析和现有用户列表的“众包”,我们提出了各种生成用户列表推荐的标准。我们证明,这些类型的标准通常只适用于具有某些特征的数据集。为了解决这个问题,我们建议在Twitter上聚合新闻故事的这些不同“观点”,以产生更准确的用户推荐,以支持策展过程。
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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