Litcius/Paper detail

Schema matching based on energy domain pre-trained language model

Zhiyu Pan, Muchen Yang, Antonello Monti

2023Energy Informatics10 citationsDOIOpen Access PDF

Abstract

Abstract Data integration in the energy sector, which refers to the process of combining and harmonizing data from multiple heterogeneous sources, is becoming increasingly difficult due to the growing volume of heterogeneous data. Schema matching plays a crucial role in this process by giving each representation a unique identity by matching raw energy data to a generic data model. This study uses an energy domain language model to automate schema matching, reducing manual effort in integrating heterogeneous data. We developed two energy domain language models, Energy BERT and Energy Sentence Bert, and trained them using an open-source scientific corpus. The comparison of the developed models with the baseline model using real-life energy domain data shows that Energy BERT and Energy Sentence Bert models significantly improve the accuracy of schema matching.

Topics & Concepts

Computer scienceSchema (genetic algorithms)Schema matchingRaw dataMatching (statistics)Artificial intelligenceNatural language processingData modelingSentenceData integrationData miningInformation retrievalDatabaseProgramming languageStatisticsMathematicsTopic ModelingData Quality and ManagementSemantic Web and Ontologies