LLM-Symbolic Integration for Robust Temporal Tabular Reasoning
LLM-Symbolic Integration for Robust Temporal Tabular Reasoning
Temporal tabular question answering presents a significant challenge for Large Language Models (LLMs), requiring robust reasoning over structured data, which is a task where traditional prompting methods often fall short. These methods face challenges such as memorization, sensitivity to table size, and reduced performance on complex queries. To overcome these limitations, we introduce TempTabQA-C, a synthetic dataset designed for systematic and controlled evaluations, alongside a symbolic intermediate representation that transforms tables into database schemas. This structured approach allows LLMs to generate and execute SQL queries, enhancing generalization and mitigating biases. By incorporating adaptive few-shot prompting with contextually tailored examples, our method achieves superior robustness, scalability, and performance. Experimental results consistently highlight improvements across key challenges, setting a new benchmark for robust temporal reasoning with LLMs.
Atharv Kulkarni、Kushagra Dixit、Vivek Srikumar、Dan Roth、Vivek Gupta
计算技术、计算机技术
Atharv Kulkarni,Kushagra Dixit,Vivek Srikumar,Dan Roth,Vivek Gupta.LLM-Symbolic Integration for Robust Temporal Tabular Reasoning[EB/OL].(2025-06-06)[2025-06-16].https://arxiv.org/abs/2506.05746.点此复制
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