沉浸式推荐:使用个人数字痕迹的新闻和事件推荐

C. Hsieh, Longqi Yang, Honghao Wei, Mor Naaman, D. Estrin
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引用次数: 64

摘要

我们提出了一种新的以用户为中心的推荐模型,称为沉浸式推荐,它将跨平台和多样化的个人数字痕迹整合到推荐中。我们的上下文感知主题建模算法基于用户在不同上下文中的轨迹系统地描述用户的兴趣,我们的混合推荐算法通过融合用户的个人资料、项目资料和现有评分来提供高质量的推荐。具体来说,在这项工作中,我们针对个性化新闻和本地事件推荐的效用和社会重要性。我们利用用户的公开Twitter痕迹,通过大规模的离线评估来评估该模型。此外,我们使用Twitter、Facebook和电子邮件跟踪对33名参与者的研究模型的建议进行了直接评估。在这两种情况下,所提出的模型都比最先进的算法有了显著的改进,这表明使用这种新的以用户为中心的推荐模型来提高推荐质量的价值,包括在冷启动情况下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Immersive Recommendation: News and Event Recommendations Using Personal Digital Traces
We propose a new user-centric recommendation model, called Immersive Recommendation, that incorporates cross-platform and diverse personal digital traces into recommendations. Our context-aware topic modeling algorithm systematically profiles users' interests based on their traces from different contexts, and our hybrid recommendation algorithm makes high-quality recommendations by fusing users' personal profiles, item profiles, and existing ratings. Specifically, in this work we target personalized news and local event recommendations for their utility and societal importance. We evaluated the model with a large-scale offline evaluation leveraging users' public Twitter traces. In addition, we conducted a direct evaluation of the model's recommendations in a 33-participant study using Twitter, Facebook and email traces. In the both cases, the proposed model showed significant improvement over the state-of-the-art algorithms, suggesting the value of using this new user-centric recommendation model to improve recommendation quality, including in cold-start situations.
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