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arxiv: 2310.10358 · v1 · pith:JYVYVCRU · submitted 2023-10-16 · cs.CL · cs.AI

Tabular Representation, Noisy Operators, and Impacts on Table Structure Understanding Tasks in LLMs

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classification cs.CL cs.AI
keywords tabletasksllmsformatsinspiredoperationsperformancerepresentation
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Large language models (LLMs) are increasingly applied for tabular tasks using in-context learning. The prompt representation for a table may play a role in the LLMs ability to process the table. Inspired by prior work, we generate a collection of self-supervised structural tasks (e.g. navigate to a cell and row; transpose the table) and evaluate the performance differences when using 8 formats. In contrast to past work, we introduce 8 noise operations inspired by real-world messy data and adversarial inputs, and show that such operations can impact LLM performance across formats for different structural understanding tasks.

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