Tabular Transfer Learning via Prompting LLMs
- Authors
- 윤석민
- Issue Date
- Sep-2024
- Publisher
- COLM Organizing Committee
- Citation
- Conference on Language Modeling (COLM), pp 1 - 18
- Pages
- 18
- Indexed
- FOREIGN
- Journal Title
- Conference on Language Modeling (COLM)
- Start Page
- 1
- End Page
- 18
- URI
- https://scholarworks.bwise.kr/erica/handle/2021.sw.erica/122025
- DOI
- 10.48550/arXiv.2408.11063
- Abstract
- Learning with a limited number of labeled data is a central problem in realworld applications of machine learning, as it is often expensive to obtain annotations. To deal with the scarcity of labeled data, transfer learning is a conventional approach; it suggests to learn a transferable knowledge by
training a neural network from multiple other sources. In this paper, we investigate transfer learning of tabular tasks, which has been less studied
and successful in the literature, compared to other domains, e.g., vision and language. This is because tables are inherently heterogeneous, i.e., they
contain different columns and feature spaces, making transfer learning difficult. On the other hand, recent advances in natural language processing suggest that the label scarcity issue can be mitigated by utilizing in-context learning capability of large language models (LLMs). Inspired by this and the fact that LLMs can also process tables within a unified language space, we ask whether LLMs can be effective for tabular transfer
learning, in particular, under the scenarios where the source and targetdatasets are of different format. As a positive answer, we propose a novel tabular transfer learning framework, coined Prompt to Transfer (P2T), that utilizes unlabeled (or heterogeneous) source data with LLMs. Specifically,P2T identifies a column feature in a source dataset that is strongly correlated with a target task feature to create examples relevant to the target task, thus creating pseudo-demonstrations for prompts. Experimental results demonstrate that P2T outperforms previous methods on various tabular learning benchmarks, showing good promise for the important, yet underexplored tabular transfer learning problem. Code is available at ttps://github.com/jaehyun513/P2T.
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