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Poster
in
Workshop: Table Representation Learning

RoTaR: Efficient Row-Based Table Representation Learning via Teacher-Student Training (Short Paper)

Zui Chen · Lei Cao · Samuel Madden

Keywords: [ Table Representation Learning ] [ Scalability ] [ Query Agnostic ]


Abstract:

We propose RoTaR, a row-based table representation learning method, to address the efficiency and scalability issues faced by existing table representation learning methods. The key idea of RoTaR is to generate query-agnostic row representations that could be re-used via query-specific aggregation. In addition to the row-based architecture, we introduce several techniques: cell-aware position embedding, AutoEncoder objective in transformer models, teacher-student training paradigm, and selective backward to improve the performance of RoTaR model.

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