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Columbo: Expanding Abbreviated Column Names for Tabular Data Using Large Language Models

Columbo: Expanding Abbreviated Column Names for Tabular Data Using Large Language Models

来源:Arxiv_logoArxiv
英文摘要

Expanding the abbreviated column names of tables, such as "esal" to "employee salary", is critical for numerous downstream data tasks. This problem arises in enterprises, domain sciences, government agencies, and more. In this paper we make three contributions that significantly advances the state of the art. First, we show that synthetic public data used by prior work has major limitations, and we introduce 4 new datasets in enterprise/science domains, with real-world abbreviations. Second, we show that accuracy measures used by prior work seriously undercount correct expansions, and we propose new synonym-aware measures that capture accuracy much more accurately. Finally, we develop Columbo, a powerful LLM-based solution that exploits context, rules, chain-of-thought reasoning, and token-level analysis. Extensive experiments show that Columbo significantly outperforms NameGuess, the current most advanced solution, by 4-29%, over 5 datasets. Columbo has been used in production on EDI, a major data portal for environmental sciences.

Ting Cai、Stephen Sheen、AnHai Doan

环境科学技术现状

Ting Cai,Stephen Sheen,AnHai Doan.Columbo: Expanding Abbreviated Column Names for Tabular Data Using Large Language Models[EB/OL].(2025-08-14)[2025-08-24].https://arxiv.org/abs/2508.09403.点此复制

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