SCENE: a scalable two-stage personalized news recommendation system

Lei Li, Dingding Wang, Tao Li, Daniel Knox, B. Padmanabhan
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引用次数: 233

Abstract

Recommending news articles has become a promising research direction as the Internet provides fast access to real-time information from multiple sources around the world. Traditional news recommendation systems strive to adapt their services to individual users by virtue of both user and news content information. However, the latent relationships among different news items, and the special properties of new articles, such as short shelf lives and value of immediacy, render the previous approaches inefficient. In this paper, we propose a scalable two-stage personalized news recommendation approach with a two-level representation, which considers the exclusive characteristics (e.g., news content, access patterns, named entities, popularity and recency) of news items when performing recommendation. Also, a principled framework for news selection based on the intrinsic property of user interest is presented, with a good balance between the novelty and diversity of the recommended result. Extensive empirical experiments on a collection of news articles obtained from various news websites demonstrate the efficacy and efficiency of our approach.
SCENE:一个可扩展的两阶段个性化新闻推荐系统
随着互联网提供了从世界各地多种来源快速获取实时信息的途径,新闻文章推荐已成为一个有前途的研究方向。传统的新闻推荐系统努力利用用户信息和新闻内容信息,使其服务适应个人用户。然而,不同新闻项目之间的潜在关系,以及新文章的特殊性质,如保质期短和即时性的价值,使得以前的方法效率低下。在本文中,我们提出了一种可扩展的两阶段个性化新闻推荐方法,该方法采用两级表示,在执行推荐时考虑新闻条目的排他性特征(例如新闻内容、访问模式、命名实体、流行度和近代性)。此外,本文还提出了一个基于用户兴趣内在属性的新闻选择原则框架,在推荐结果的新颖性和多样性之间取得了良好的平衡。大量的实证实验从不同的新闻网站获得的新闻文章集合证明了我们的方法的有效性和效率。
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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