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Poster
in
Workshop: Table Representation Learning Workshop

A Deep Learning Blueprint for Relational Databases

Lukáš Zahradník · Jan Neumann · Gustav Šír

Keywords: [ Deep Learning ] [ relational databases ] [ message-passing ] [ relational models ]


Abstract:

We introduce a modular neural message-passing scheme that closely follows the formal model of relational databases, effectively enabling end-to-end deep learning directly from database storages. We experiment with several instantiations of the scheme, including notably the use of cross-attention modules to capture the referential constraints of the relational model. We address the issues of efficient learning data representation and loading, salient to the database setting, and compare against representative models from a number of related fields, demonstrating favorable initial results.

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