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Main Authors: He, Xinyi, Liu, Yihao, Zhou, Mengyu, He, Yeye, Dong, Haoyu, Han, Shi, Yuan, Zejian, Zhang, Dongmei
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2503.04396
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author He, Xinyi
Liu, Yihao
Zhou, Mengyu
He, Yeye
Dong, Haoyu
Han, Shi
Yuan, Zejian
Zhang, Dongmei
author_facet He, Xinyi
Liu, Yihao
Zhou, Mengyu
He, Yeye
Dong, Haoyu
Han, Shi
Yuan, Zejian
Zhang, Dongmei
contents Tabular data are crucial in many fields and their understanding by large language models (LLMs) under high parameter efficiency paradigm is important. However, directly applying parameter-efficient fine-tuning (PEFT) techniques to tabular tasks presents significant challenges, particularly in terms of better table serialization and the representation of two-dimensional structured information within a one-dimensional sequence. To address this, we propose TableLoRA, a module designed to improve LLMs' understanding of table structure during PEFT. It incorporates special tokens for serializing tables with special token encoder and uses 2D LoRA to encode low-rank information on cell positions. Experiments on four tabular-related datasets demonstrate that TableLoRA consistently outperforms vanilla LoRA and surpasses various table encoding methods tested in control experiments. These findings reveal that TableLoRA, as a table-specific LoRA, enhances the ability of LLMs to process tabular data effectively, especially in low-parameter settings, demonstrating its potential as a robust solution for handling table-related tasks.
format Preprint
id arxiv_https___arxiv_org_abs_2503_04396
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle TableLoRA: Low-rank Adaptation on Table Structure Understanding for Large Language Models
He, Xinyi
Liu, Yihao
Zhou, Mengyu
He, Yeye
Dong, Haoyu
Han, Shi
Yuan, Zejian
Zhang, Dongmei
Computation and Language
Tabular data are crucial in many fields and their understanding by large language models (LLMs) under high parameter efficiency paradigm is important. However, directly applying parameter-efficient fine-tuning (PEFT) techniques to tabular tasks presents significant challenges, particularly in terms of better table serialization and the representation of two-dimensional structured information within a one-dimensional sequence. To address this, we propose TableLoRA, a module designed to improve LLMs' understanding of table structure during PEFT. It incorporates special tokens for serializing tables with special token encoder and uses 2D LoRA to encode low-rank information on cell positions. Experiments on four tabular-related datasets demonstrate that TableLoRA consistently outperforms vanilla LoRA and surpasses various table encoding methods tested in control experiments. These findings reveal that TableLoRA, as a table-specific LoRA, enhances the ability of LLMs to process tabular data effectively, especially in low-parameter settings, demonstrating its potential as a robust solution for handling table-related tasks.
title TableLoRA: Low-rank Adaptation on Table Structure Understanding for Large Language Models
topic Computation and Language
url https://arxiv.org/abs/2503.04396