A Survey of Multi-modal Knowledge Graphs: Technologies and Trends

Author:

Liang Wanying1ORCID,Meo Pasquale De2ORCID,Tang Yong13ORCID,Zhu Jia4ORCID

Affiliation:

1. School of Computer Science, South China Normal University, Guangzhou, China

2. University of Messina, Messina, Italy

3. Pazhou Lab, Guangzhou, China

4. Zhejiang Key Laboratory of Intelligent Education Technology and Application, Zhejiang Normal University, Jinhua, China

Abstract

In recent years, Knowledge Graphs (KGs) have played a crucial role in the development of advanced knowledge-intensive applications, such as recommender systems and semantic search. However, the human sensory system is inherently multi-modal, as objects around us are often represented by a combination of multiple signals, such as visual and textual. Consequently, Multi-modal Knowledge Graphs (MMKGs), which combine structured knowledge representation with multiple modalities, represent a powerful extension of KGs. Although MMKGs can handle certain types of tasks (e.g., visual query answering) or queries that standard KGs cannot process, and they can effectively tackle some standard problems (e.g., entity alignment), we lack a widely accepted definition of MMKG. In this survey, we provide a rigorous definition of MMKGs along with a classification scheme based on how existing approaches address four fundamental challenges: representation, fusion, alignment, and translation, which are crucial to improving an MMKG. Our classification scheme is flexible and allows for easy incorporation of new approaches, as well as a comparison of two approaches in terms of how they address one of the fundamental challenges mentioned above. As the first comprehensive survey of MMKG, this article aims at inspiring and provide a reference for relevant researchers in the field of Artificial Intelligence.

Funder

Research and Demonstration Application of Key Technologies for Personalized Learning Driven by Educational Big Data

National Key R&D Program of China

National Natural Science Foundation of China

Publisher

Association for Computing Machinery (ACM)

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