Diversified Query Generation Guided by Knowledge Graph

Xi Shen, Jiangjie Chen, Jiaze Chen, Chun Zeng, Yanghua Xiao
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引用次数: 7

Abstract

Relevant articles recommendation plays an important role in online news platforms. Directly displaying recalled articles by a search engine lacks a deep understanding of the article contents. Generating clickable queries, on the other hand, summarizes an article in various aspects, which can be henceforth utilized to better connect relevant articles. Most existing approaches for generating article queries, however, do not consider the diversity of queries or whether they are appealing enough, which are essential for boosting user experience and platform drainage. To this end, we propose a Knowledge-Enhanced Diversified QuerY Generator (KEDY), which leverages an external knowledge graph (KG) as guidance. We diversify the query generation with the information of semantic neighbors of the entities in articles. We further constrain the diversification process with entity popularity knowledge to build appealing queries that users may be more interested in. The information within KG is propagated towards more popular entities with popularity-guided graph attention. We collect a news-query dataset from the search logs of a real-world search engine. Extensive experiments demonstrate our proposed KEDY can generate more diversified and insightful related queries than several strong baselines.
基于知识图谱的多样化查询生成
相关文章推荐在网络新闻平台中扮演着重要的角色。搜索引擎直接显示召回的文章,缺乏对文章内容的深刻理解。生成可点击的查询,另一方面,总结了一篇文章的各个方面,可以用来更好地连接相关的文章。然而,大多数现有的生成文章查询的方法都没有考虑查询的多样性,或者它们是否足够吸引人,而这些对于提高用户体验和平台流量至关重要。为此,我们提出了一种利用外部知识图(KG)作为指导的知识增强多元化查询生成器(KEDY)。我们利用条目实体的语义邻居信息来实现查询生成的多样化。我们进一步用实体流行度知识约束多样化过程,以构建用户可能更感兴趣的有吸引力的查询。KG内的信息传播到更受欢迎的实体,并使用流行度引导图关注。我们从真实世界的搜索引擎的搜索日志中收集新闻查询数据集。大量的实验表明,我们提出的KEDY可以产生比几个强基线更多样化和更有洞察力的相关查询。
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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