English

Retrieval-Based Transformer for Table Augmentation

Computation and Language 2023-06-22 v1 Artificial Intelligence Databases Information Retrieval

Abstract

Data preparation, also called data wrangling, is considered one of the most expensive and time-consuming steps when performing analytics or building machine learning models. Preparing data typically involves collecting and merging data from complex heterogeneous, and often large-scale data sources, such as data lakes. In this paper, we introduce a novel approach toward automatic data wrangling in an attempt to alleviate the effort of end-users, e.g. data analysts, in structuring dynamic views from data lakes in the form of tabular data. We aim to address table augmentation tasks, including row/column population and data imputation. Given a corpus of tables, we propose a retrieval augmented self-trained transformer model. Our self-learning strategy consists in randomly ablating tables from the corpus and training the retrieval-based model to reconstruct the original values or headers given the partial tables as input. We adopt this strategy to first train the dense neural retrieval model encoding table-parts to vectors, and then the end-to-end model trained to perform table augmentation tasks. We test on EntiTables, the standard benchmark for table augmentation, as well as introduce a new benchmark to advance further research: WebTables. Our model consistently and substantially outperforms both supervised statistical methods and the current state-of-the-art transformer-based models.

Keywords

Cite

@article{arxiv.2306.11843,
  title  = {Retrieval-Based Transformer for Table Augmentation},
  author = {Michael Glass and Xueqing Wu and Ankita Rajaram Naik and Gaetano Rossiello and Alfio Gliozzo},
  journal= {arXiv preprint arXiv:2306.11843},
  year   = {2023}
}

Comments

Findings of ACL 2023

R2 v1 2026-06-28T11:10:06.766Z