A Survey on Mapping Semi-Structured Data and Graph Data to Relational Data

Author:

Yuan Gongsheng1ORCID,Lu Jiaheng2ORCID,Yan Zhengtong2ORCID,Wu Sai3ORCID

Affiliation:

1. Zhejiang University, China and University of Helsinki, Helsinki, Finland

2. University of Helsinki, Helsinki, Finland

3. Zhejiang University, Hangzhou, China

Abstract

The data produced by various services should be stored and managed in an appropriate format for gaining valuable knowledge conveniently. This leads to the emergence of various data models, including relational, semi-structured, and graph models, and so on. Considering the fact that the mature relational databases established on relational data models are still predominant in today’s market, it has fueled interest in storing and processing semi-structured data and graph data in relational databases so that mature and powerful relational databases’ capabilities can all be applied to these various data. In this survey, we review existing methods on mapping semi-structured data and graph data into relational tables, analyze their major features, and give a detailed classification of those methods. We also summarize the merits and demerits of each method, introduce open research challenges, and present future research directions. With this comprehensive investigation of existing methods and open problems, we hope this survey can motivate new mapping approaches through drawing lessons from each model’s mapping strategies, as well as a new research topic - mapping multi-model data into relational tables.

Funder

China Scholarship Council, the Zhejiang Provincial Natural Science Foundation

National Natural Science Foundation of China

Publisher

Association for Computing Machinery (ACM)

Subject

General Computer Science,Theoretical Computer Science

Reference142 articles.

1. SQL Server 2019. Accessed November 27 2020. SQL Docs. (Accessed November 27 2020). https://docs.microsoft.com/en-us/sql/relational-databases/xml/xml-data-type-and-columns-sql-server?view=sql-server-ver15/.

2. SQL Server 2022. Accessed February 6 2022. TiDB Docs. (Accessed February 6 2022). https://docs.pingcap.com/tidb/stable.

3. Integrating compression and execution in column-oriented database systems

4. SW-Store: a vertically partitioned DBMS for Semantic Web data management

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