Abstract

Multi-source knowledge fusion is one of the important research topics in the fields of artificial intelligence, natural language processing, and so on. The research results of multi-source knowledge fusion can help computer to better understand human intelligence, human language and human thinking, effectively promote the Big Search in Cyberspace, effectively promote the construction of domain knowledge graphs (KGs), and bring enormous social and economic benefits. Due to the uncertainty of knowledge acquisition, the reliability and confidence of KG based on entity recognition and relationship extraction technology need to be evaluated. On the one hand, the process of multi-source knowledge reasoning can detect conflicts and provide help for knowledge evaluation and verification; on the other hand, the new knowledge acquired by knowledge reasoning is also uncertain and needs to be evaluated and verified. Collaborative reasoning of multi-source knowledge includes not only inferring new knowledge from multi-source knowledge, but also conflict detection, i.e. identifying erroneous knowledge or conflicts between knowledges. Starting from several related concepts of multi-source knowledge fusion, this paper comprehensively introduces the latest research progress of open-source knowledge fusion, multi-knowledge graphs fusion, information fusion within KGs, multi-modal knowledge fusion and multi-source knowledge collaborative reasoning. On this basis, the challenges and future research directions of multi-source knowledge fusion in a large-scale knowledge base environment are discussed.

Highlights

  • Knowledge reasoning, intelligent search, intelligent questions and answers(Q&A) and natural language understanding (NLP) need the support of large-scale knowledge base

  • Knowledge representation learning is mainly oriented to entities and relationships in knowledge graphs (KGs)

  • By designing a reasonable knowledge graph representation learning model, the knowledges from different sources can be projected into a unified representation space, which can realize the organic integration of multi-knowledge graphs and adapt to the large-scale application of KGs, It is of great significance to the research of the integration and completion tasks involved in the construction of KG; on the other hand, the integration of knowledges from different sources can help knowledge graphs capture hidden knowledge more and effectively promote the performance of knowledge representation, which is an iterative process of mutual strengthen

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Summary

Introduction

Intelligent search, intelligent questions and answers(Q&A) and natural language understanding (NLP) need the support of large-scale knowledge base. We need to carry out conflict detection, entity disambiguation, entity alignment and other operations, effectively fusion the multi-source knowledge to form a large-scale, high-quality knowledge graph. From a theoretical point of view, multi-source knowledge fusion is one of the important research topics in the fields of artificial intelligence and natural language processing. From the application point of view, multi-source knowledge fusion can provide effective knowledge support for intelligent search, intelligent recommendation, intelligence analysis, etc. It has great social value and economic benefits. This paper will introduce the latest research progress of multi-source knowledge fusion technology. We introduced several concepts related to multi-source knowledge fusion, such as data fusion, representation learning, entity alignment, and so on. The challenges and future research directions of multi-source knowledge fusion in a large-scale knowledge base environment are prospected

Knowledge fusion and data fusion
Multi-source knowledge fusion and representation learning
Multi-source knowledge fusion and entity alignment
Multi-source knowledge fusion related technologies
Open source knowledge fusion
Multi-knowledge graph fusion
Information fusion within knowledge graph
Multi-modal knowledge fusion
Multi-source knowledge cooperative reasoning
Prospects for future research
Cross-lingual knowledge graph fusion
Large-scale knowledge graph fusion
Concluding remarks
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