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Towards Better Representation Learning for Personalized News Recommendations: A Multi-Channel Deep Fusion Approach

机译:为个性化新闻建议的更好代表学习:多通道深度融合方法

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Millions of news articles emerge every day. How to provide personalized news recommendations has become a critical task for service providers. In the past few decades, latent factor models has been widely used for building recommender systems (RSs). With the remarkable success of deep learning techniques especially in visual computing and natural language understanding, more and more researchers have been trying to leverage deep neural networks to learn latent representations for advanced RSs. Following mainstream deep learningbased RSs, we propose a novel deep fusion model (DFM), which aims to improve the representation learning abilities in deep RSs and can be used for both candidate retrieval and item re-ranking. There are two key components in our DFM approach, namely an inception module and an attention mechanism. The inception module improves the plain multi-layer network via leveraging of various levels of interaction simultaneously, while the attention mechanism merges latent representations learnt from different channels in a customized fashion. We conduct extensive experiments on a commercial news reading dataset, and the results demonstrate that the proposed DFM is superior to several state-of-the-art models.
机译:每天都会出现数百万的新闻文章。如何提供个性化新闻建议已成为服务提供商的关键任务。在过去的几十年中,潜在因子模型已被广泛用于建立推荐系统(RSS)。随着深度学习技术的显着成功,尤其是视觉计算和自然语言理解,越来越多的研究人员一直在努力利用深度神经网络来学习高级RSS的潜在表示。在主流深度学习的RSS之后,我们提出了一种新颖的深融模型(DFM),旨在改善深度RSS中的代表学习能力,可用于候选人检索和项目重新排名。我们的DFM方法中有两个关键组件,即成立模块和注意机制。初始模块通过同时利用各种级别的相互作用来改善普通多层网络,而注意机制利用以定制的方式从不同信道中学到的潜在表示。我们对商业新闻阅读数据集进行了广泛的实验,结果表明,所提出的DFM优于几种最先进的模型。

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