Taeho Kim, Yungi Kim, Yeon-Chang Lee, Won-Yong Shin, Sang-Wook Kim
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引用次数: 5
Abstract
In a news recommender system, a user tends to click on a news article if she is interested in its topic understood by looking at its title. Such a behavior is possible since, when viewing the title, humans naturally think of the contextual meaning of each title word by leveraging their own background knowledge. Motivated by this, we propose a novel personalized news recommendation framework CAST (Context-aware Attention network with a Selection module for Title word representation), which is capable of enriching title words by leveraging body text that fully provides the whole content of a given article as the context. Through extensive experiments, we demonstrate (1) the effectiveness of core modules in CAST, (2) the superiority of CAST over 9 state-of-the-art news recommendation methods, and (3) the interpretability with CAST.
在新闻推荐系统中,如果用户对新闻文章的主题感兴趣,就会点击新闻文章。这样的行为是可能的,因为在观看标题时,人类会利用自己的背景知识自然地想到每个标题词的上下文含义。基于此,我们提出了一种新颖的个性化新闻推荐框架CAST (context -aware Attention network with a Selection module for Title word representation),该框架能够利用充分提供给定文章整体内容作为上下文的正文来丰富标题词。通过大量的实验,我们证明了(1)CAST中核心模块的有效性,(2)CAST优于9种最先进的新闻推荐方法,以及(3)CAST的可解释性。