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Implicit User Profiling in News Recommender Systems

机译:在新闻推荐系统中隐式用户分析

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User profiling is an important part of content-based and hybrid recommender systems. These profiles model users' interests and preferences and are used to assess an item's relevance to a particular user. In the news domain it is difficult to extract explicit signals from the users about their interests, and user profiling depends on in-depth analyses of users' reading habits. This is a challenging task, as news articles have short life spans, are unstructured, and make use of unclear and rapidly changing terminologies. This paper discusses an approach for constructing detailed user profiles on the basis of detailed observations of users' interaction with a mobile news app. The profiles address both news categories and news entities, distinguish between long-term interests and running context, and are currently used in a real iOS mobile news recommender system that recommends news from 89 Norwegian newspapers.
机译:用户分析是基于内容和混合推荐系统的重要组成部分。这些配置文件模拟用户的兴趣和偏好,并用于评估项目与特定用户的相关性。在新闻领域中,很难从用户提取有关他们的兴趣的显式信号,用户分析取决于用户阅读习惯的深入分析。这是一个具有挑战性的任务,随着新闻文章的寿命短,是非结构化的,并利用不明确和迅速变化的术语。本文讨论了一种在与移动新闻应用程序的详细观察的基础上构建详细用户配置文件的方法。概要文件解决新闻类别和新闻实体,区分了长期利益和运行上下文,目前用于真正的IOS移动新闻推荐系统,推荐89个挪威报纸的新闻。

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