CLJan 9, 2024

Chain-of-Table: Evolving Tables in the Reasoning Chain for Table Understanding

arXiv:2401.04398v2252 citationsh-index: 23ICLR
AI Analysis

This addresses the challenge of table-based reasoning for tasks such as question answering and fact verification, representing an incremental improvement over existing methods like Chain-of-Thought.

The paper tackles the problem of effectively leveraging tabular data in reasoning chains for table understanding tasks, proposing the Chain-of-Table framework that iteratively updates tables as intermediate thoughts, achieving new state-of-the-art performance on benchmarks like WikiTQ, FeTaQA, and TabFact.

Table-based reasoning with large language models (LLMs) is a promising direction to tackle many table understanding tasks, such as table-based question answering and fact verification. Compared with generic reasoning, table-based reasoning requires the extraction of underlying semantics from both free-form questions and semi-structured tabular data. Chain-of-Thought and its similar approaches incorporate the reasoning chain in the form of textual context, but it is still an open question how to effectively leverage tabular data in the reasoning chain. We propose the Chain-of-Table framework, where tabular data is explicitly used in the reasoning chain as a proxy for intermediate thoughts. Specifically, we guide LLMs using in-context learning to iteratively generate operations and update the table to represent a tabular reasoning chain. LLMs can therefore dynamically plan the next operation based on the results of the previous ones. This continuous evolution of the table forms a chain, showing the reasoning process for a given tabular problem. The chain carries structured information of the intermediate results, enabling more accurate and reliable predictions. Chain-of-Table achieves new state-of-the-art performance on WikiTQ, FeTaQA, and TabFact benchmarks across multiple LLM choices.

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