Over the past few years, large knowledge bases have been constructed to store massive amounts of knowledge. However, these knowledge bases are highly incomplete, for example, over 70% of people in Freebase have no known place of birth. To solve this problem, we propose a query-driven knowledge base completion system with multimodal fusion of unstructured and structured information. To effectively fuse unstructured information from the Web and structured information in knowledge bases to achieve good performance, our system builds multimodal knowledge graphs based on question answering and rule inference. We propose a multimodal path fusion algorithm to rank candidate answers based on different paths in the multimodal knowledge graphs, achieving much better performance than question answering, rule inference and a baseline fusion algorithm. To improve system efficiency, query-driven techniques are utilized to reduce the runtime of our system, providing fast responses to user queries. Extensive experiments have been conducted to demonstrate the effectiveness and efficiency of our system.
翻译:过去几年来,为了储存大量知识,建立了庞大的知识基础,但是,这些知识基础非常不完全,例如,70%以上的自由基地居民没有已知的出生地。为了解决这个问题,我们建议建立一个由查询驱动的知识基础完成系统,多式集成,多式集成,多式集成,多式集成,多式集成,多式集成,根据问题回答和规则推论,有效地整合网络上没有结构的信息,知识基础结构化信息,以取得良好业绩。我们提出了多式集成算法,根据多式知识图表的不同路径对候选人的回答进行排名,取得比问答、规则推论和基线集成算法更好的业绩。为了提高系统效率,采用了由查询驱动的技术来缩短系统的运行时间,对用户的查询提供快速答复。我们进行了广泛的实验,以证明我们的系统的有效性和效率。