Generating Table Vector Representations
Machine Learning
2021-10-29 v1 Computation and Language
Abstract
High-quality Web tables are rich sources of information that can be used to populate Knowledge Graphs (KG). The focus of this paper is an evaluation of methods for table-to-class annotation, which is a sub-task of Table Interpretation (TI). We provide a formal definition for table classification as a machine learning task. We propose an experimental setup and we evaluate 5 fundamentally different approaches to find the best method for generating vector table representations. Our findings indicate that although transfer learning methods achieve high F1 score on the table classification task, dedicated table encoding models are a promising direction as they appear to capture richer semantics.
Cite
@article{arxiv.2110.15132,
title = {Generating Table Vector Representations},
author = {Aneta Koleva and Martin Ringsquandl and Mitchell Joblin and Volker Tresp},
journal= {arXiv preprint arXiv:2110.15132},
year = {2021}
}
Comments
Accepted at DL4KF@ISWC