News recommendation is an effective information dissemination solution in modern society. While recent years have witnessed many promising news recommendation models, they mostly capture the user-news interactions on the document-level in a static manner. However, in real-world scenarios, the news can be quite complex and diverse, blindly squeezing all the contents into an embedding vector can be less effective in extracting information compatible with the personalized preference of the users. In addition, user preferences in the news recommendation scenario can be highly dynamic, and a tailored dynamic mechanism should be designed for better recommendation performance. In this paper, we propose a novel dynamic news recommender model. For better understanding the news content, we leverage the attention mechanism to represent the news from the sentence-, element- and document-levels, respectively. For capturing users' dynamic preferences, the continuous time information is seamlessly incorporated into the computing of the attention weights. More specifically, we design a hierarchical attention network, where the lower layer learns the importance of different sentences and elements, and the upper layer captures the correlations between the previously interacted and the target news. To comprehensively model the dynamic characters, we firstly enhance the traditional attention mechanism by incorporating both absolute and relative time information, and then we propose a dynamic negative sampling method to optimize the users' implicit feedback. We conduct extensive experiments based on three real-world datasets to demonstrate our model's effectiveness. Our source code and pre-trained representations are available at https://github.com/lshowway/D-HAN.
翻译:在现代社会中,新闻建议是一种有效的信息传播解决方案。虽然近年来出现了许多有希望的新建议模式,但它们大多以静态的方式捕捉到文件层面的用户-新互动。然而,在现实世界的情景下,新闻可以相当复杂和多样,盲目地将所有内容挤入嵌入矢量中,在提取与用户个人偏好相容的信息方面效果较差。此外,新闻建议情景中的用户偏好可以是高度动态的,应当设计一个定制的动态机制,以更好地履行建议绩效。在本文件中,我们提出了一个新的动态新闻建议模式。为了更好地了解新闻内容,我们利用关注机制分别代表句子、元素和文件层面的新闻。为了捕捉用户的动态偏好,连续的时间信息可以在计算与用户个人偏好相符的信息时不那么,我们设计一个分级关注网络,让下层了解不同句子和元素的重要性,而上层则能捕捉到先前互动与目标新闻之间的相互关系。为了更深入地模拟,我们首先在动态字符模型上,我们建议从动态、元素和纸质的模型化数据模式上提升了传统的模拟模式,然后我们以真实的模型化的模型化的用户。我们以精确的模型和精确的模型化方法展示了我们的数据。