Business Entity Matching with Siamese Graph Convolutional Networks

Krivosheev, Evgeny, Atzeni, Mattia, Mirylenka, Katsiaryna, Scotton, Paolo, Miksovic, Christoph, Zorin, Anton

arXiv.org Artificial Intelligence 

We propose a model architecture Although knowledge graphs (KGs) and ontologies have that combines the advantages of graph convolutional networks been exploited successfully for data integration [Trivedi (GCNs) [Kipf and Welling 2017] and siamese networks et al. 2018; Azmy et al. 2019], entity matching involving [Bromley et al. 1993] to address the entity-matching structured and unstructured sources has usually been task. GCNs are a type of graph neural network that shares performed by treating records without explicitly taking filter parameters among all the nodes, regardless of their location into account the natural graph representation of structured in the graph. Our Siamese Graph Convolutional Network sources and the potential graph representation of unstructured (S-GCN) incorporates two identical GCNs, as shown data [Mudgal et al. 2018; Gschwind et al. 2019].

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