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Domain-specific Knowledge Graphs: A survey (2011.00235v3)

Published 31 Oct 2020 in cs.DB and cs.AI

Abstract: Knowledge Graphs (KGs) have made a qualitative leap and effected a real revolution in knowledge representation. This is leveraged by the underlying structure of the KG which underpins a better comprehension, reasoning and interpretation of knowledge for both human and machine. Therefore, KGs continue to be used as the main means of tackling a plethora of real-life problems in various domains. However, there is no consensus in regard to a plausible and inclusive definition of a domain-specific KG. Further, in conjunction with several limitations and deficiencies, various domain-specific KG construction approaches are far from perfect. This survey is the first to offer a comprehensive definition of a domain-specific KG. Also, the paper presents a thorough review of the state-of-the-art approaches drawn from academic works relevant to seven domains of knowledge. An examination of current approaches reveals a range of limitations and deficiencies. At the same time, uncharted territories on the research map are highlighted to tackle extant issues in the literature and point to directions for future research.

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Authors (1)
  1. Bilal Abu-Salih (18 papers)
Citations (256)

Summary

Analysis of Domain-Specific Knowledge Graphs: A Comprehensive Survey

The research paper titled "Domain-specific Knowledge Graphs: A Survey" by Bilal Abu-Salih provides a meticulous examination of domain-specific knowledge graphs (KGs), presenting a definitive characterization and in-depth evaluation of the state-of-the-art approaches within this area. Although KGs have gained significant traction as powerful tools for knowledge representation, this paper identifies the absence of a unified definition for domain-specific KGs and outlines the existing construction and evaluation methodologies for these specialized graphs. The survey is focused on KGs within seven primary domains: healthcare, education, ICT, science and engineering, finance, society and politics, and travel.

Overview and Methodology

Abu-Salih reviews over 140 academic works to form a taxonomy of KG construction approaches, addressing the methodologies of entity and relation extraction from various sources. Emphasizing a systematic approach, the methodology adopted for the literature survey included selecting publications from key conferences and journals, ensuring a comprehensive representation of KG construction approaches across the aforementioned domains.

Key Findings and Contributions

Among the key findings, the survey highlights several limitations in current KG construction methods, such as data quality issues, privacy concerns, and the lack of temporal information in KGs. The paper innovatively offers a formal definition for domain-specific KGs: "Domain Knowledge Graph is an explicit conceptualisation to a high-level subject-matter domain and its specific subdomains represented in terms of semantically interrelated entities and relations." This definition underlines the importance of subject matter specificity and semantic relationships.

The survey delineates the various strengths and weaknesses of existing KG construction practices, providing a detailed analysis of the dominant methods in each of the seven domains. Notably, the paper identifies research gaps such as the need for improved data quality measures and semantic interoperability between different KGs. The author also suggests future research directions, advocating the integration of blockchain technology for better data integrity and exploring automated methodologies for KG construction.

Theoretical and Practical Implications

From a theoretical standpoint, the survey offers insights into the complex processes of KG construction, emphasizing the role of ontologies in framing domain-specific knowledge. Practically, it underscores the significant potential of KGs in enhancing decision-making in domain-specific applications, particularly with the incorporation of KG embeddings for improved inference capabilities.

The paper meticulously charts the terrain for future advancements in this field, highlighting the necessity of addressing the dynamic nature of domain knowledge by incorporating temporal dimensions. Furthermore, the research emphasizes the importance of establishing benchmarks and testbeds for the fair evaluation and comparison of KG construction techniques.

Conclusion and Future Directions

The overarching conclusion of the survey points to the wide-reaching applicability of domain-specific KGs in solving complex real-world problems through improved knowledge representation and data integration. By delineating the research gaps and suggesting future research directions, this paper sets a foundation for further exploration in the development of robust and dynamic KGs. Specifically, it calls for concerted efforts toward the automation of KG construction processes, integration with blockchain for enhance data verifiability, and achieving greater interoperability among multiple KGs in alignment with the FAIR principles.

Overall, this survey serves as a critical resource for experienced researchers aiming to enhance their understanding of domain-specific knowledge graphs and contribute to this evolving field through innovative research and application.