A Personalised Reader for Crowd Curated Content

G. Kazai, Daoud Clarke, Iskander Yusof, M. Venanzi
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引用次数: 4

Abstract

Personalised news recommender systems traditionally rely on content ingested from a select set of publishers and ask users to indicate their interests from a predefined list of topics. They then provide users a feed of news items for each of their topics. In this demo, we present a mobile app that automatically learns users' interests from their browsing or twitter history and provides them with a personalised feed of diverse, crowd curated content. The app also continuously learns from the users' interactions as they swipe to like or skip items recommended to them. In addition, users can discover trending stories and content liked by other users they follow. The crowd is thus formed of the users, who as a whole act as the curators of the content to be recommended.
人群策划内容的个性化读者
个性化新闻推荐系统传统上依赖于从一组选定的出版商那里摄取的内容,并要求用户从预定义的主题列表中指出他们的兴趣。然后,它们为用户提供每个主题的新闻条目提要。在这个演示中,我们展示了一个移动应用程序,它可以自动从用户的浏览或推特历史中了解用户的兴趣,并为他们提供多样化的、人群策划的个性化内容。这款应用还会不断地从用户的互动中学习,比如他们通过滑动来点赞或跳过推荐给他们的项目。此外,用户还可以发现他们关注的其他用户喜欢的热门故事和内容。因此,群体是由用户组成的,他们作为一个整体充当了要推荐的内容的管理者。
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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