Understanding the Relation of User and News Representations in Content-Based Neural News Recommendation

Lucas Moller, Sebastian Padó
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Abstract

A number of models for neural content-based news recommendation have been proposed. However, there is limited understanding of the relative importances of the three main components of such systems (news encoder, user encoder, and scoring function) and the trade-offs involved. In this paper, we assess the hypothesis that the most widely used means of matching user and candidate news representations is not expressive enough. We allow our system to model more complex relations between the two by assessing more expressive scoring functions. Across a wide range of baseline and established systems this results in consistent improvements of around 6 points in AUC. Our results also indicate a trade-off between the complexity of news encoder and scoring function: A fairly simple baseline model scores well above 68% AUC on the MIND dataset and comes within 2 points of the published state-of-the-art, while requiring a fraction of the computational costs.
基于内容的神经新闻推荐中用户与新闻表示关系的理解
许多基于神经内容的新闻推荐模型已经被提出。然而,人们对这类系统的三个主要组成部分(新闻编码器、用户编码器和评分功能)的相对重要性以及所涉及的权衡理解有限。在本文中,我们评估了最广泛使用的匹配用户和候选新闻表示的方法不够表达的假设。我们允许我们的系统通过评估更具表现力的评分函数来模拟两者之间更复杂的关系。在广泛的基线和已建立的系统中,这导致AUC持续改善约6点。我们的结果还表明了新闻编码器的复杂性和评分功能之间的权衡:一个相当简单的基线模型在MIND数据集上的得分远高于68%的AUC,与已发表的最新技术相差不到2分,同时需要一小部分计算成本。
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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