论文标题
端到端可学习的多样性新闻推荐
End-to-end Learnable Diversity-aware News Recommendation
论文作者
论文摘要
多样性是提供高质量个性化新闻建议的重要因素。但是,大多数现有的新闻推荐方法仅旨在优化建议准确性,同时忽略多样性。 Reranking是一种广泛使用的后处理技术,可促进最佳推荐结果的多样性。但是,建议模型并不完美,并且在级联推荐算法中可能会传播和放大错误。此外,推荐模型本身并不多于多样性,因此很难在推荐准确性和多样性之间实现良好的权衡。在本文中,我们提出了一种名为LeadivRec的新闻推荐方法,该方法是一个完全可学习的模型,可以以端到端的方式产生多样性的新闻建议。与通常基于点或成对排名的现有新闻推荐方法不同,在LeadivRec中,我们提出了更有效的列表新闻推荐模型。更具体地说,我们建议置换变压器考虑候选新闻和同时可以学习类似候选新闻的不同表示,以帮助提高建议多样性。我们还提出了一种有效的列表培训方法,以学习准确的排名模型。此外,我们提出了一种多样性感知的正则化方法,以进一步鼓励该模型发出可控的多样性建议。对两个现实世界数据集进行的广泛实验验证了我们方法在平衡建议准确性和多样性方面的有效性。
Diversity is an important factor in providing high-quality personalized news recommendations. However, most existing news recommendation methods only aim to optimize recommendation accuracy while ignoring diversity. Reranking is a widely used post-processing technique to promote the diversity of top recommendation results. However, the recommendation model is not perfect and errors may be propagated and amplified in a cascaded recommendation algorithm. In addition, the recommendation model itself is not diversity-aware, making it difficult to achieve a good tradeoff between recommendation accuracy and diversity. In this paper, we propose a news recommendation approach named LeaDivRec, which is a fully learnable model that can generate diversity-aware news recommendations in an end-to-end manner. Different from existing news recommendation methods that are usually based on point- or pair-wise ranking, in LeaDivRec we propose a more effective list-wise news recommendation model. More specifically, we propose a permutation Transformer to consider the relatedness between candidate news and meanwhile can learn different representations for similar candidate news to help improve recommendation diversity. We also propose an effective list-wise training method to learn accurate ranking models. In addition, we propose a diversity-aware regularization method to further encourage the model to make controllable diversity-aware recommendations. Extensive experiments on two real-world datasets validate the effectiveness of our approach in balancing recommendation accuracy and diversity.