Automatic semantic modeling of structured data sources with cross-modal retrieval

Date

2024

Authors

Xu, R.
Mayer, W.
Chu, H.
Zhang, Y.
Zhang, H.Y.
Wang, Y.
Liu, Y.
Feng, Z.

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Journal article

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Pattern Recognition Letters, 2024; 177:7-14

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Abstract

Analyzing and modeling the implicit semantic relationships in data sources is the key to achieving integration and sharing of heterogeneous data information. However, manual modeling of data semantics is a laborious and error-prone task that demands significant human effort and expertise. The paper proposes a novel explainable representation learning-based method that adopts an attention-based table-graph cross-modal retrieval model as a rating function during incremental search for automatic semantic modeling. Our supervised model utilizes the graph representation learning technique to extract latent semantics from data and aims to retrieve the most reliable semantic model for structured data sources. Experimental results demonstrate the effectiveness and robustness of our method.

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Copyright 2024 Elsevier

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