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Main Authors: Yu, Yaoning, Chang, Kai-Min, Yu, Ye, Wei, Kai, Luo, Haojing, Wang, Haohan
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2511.06292
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author Yu, Yaoning
Chang, Kai-Min
Yu, Ye
Wei, Kai
Luo, Haojing
Wang, Haohan
author_facet Yu, Yaoning
Chang, Kai-Min
Yu, Ye
Wei, Kai
Luo, Haojing
Wang, Haohan
contents Financial documents like earning reports or balance sheets often involve long tables and multi-page reports. Large language models have become a new tool to help numerical reasoning and understanding these documents. However, prompt quality can have a major effect on how well LLMs perform these financial reasoning tasks. Most current methods tune prompts on fixed datasets of financial text or tabular data, which limits their ability to adapt to new question types or document structures, or they involve costly and manually labeled/curated dataset to help build the prompts. We introduce a self-improving prompt framework driven by data-augmented optimization. In this closed-loop process, we generate synthetic financial tables and document excerpts, verify their correctness and robustness, and then update the prompt based on the results. Specifically, our framework combines a synthetic data generator with verifiers and a prompt optimizer, where the generator produces new examples that exposes weaknesses in the current prompt, the verifiers check the validity and robustness of the produced examples, and the optimizer incrementally refines the prompt in response. By iterating these steps in a feedback cycle, our method steadily improves prompt accuracy on financial reasoning tasks without needing external labels. Evaluation on DocMath-Eval benchmark demonstrates that our system achieves higher performance in both accuracy and robustness than standard prompt methods, underscoring the value of incorporating synthetic data generation into prompt learning for financial applications.
format Preprint
id arxiv_https___arxiv_org_abs_2511_06292
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Synthetic Data-Driven Prompt Tuning for Financial QA over Tables and Documents
Yu, Yaoning
Chang, Kai-Min
Yu, Ye
Wei, Kai
Luo, Haojing
Wang, Haohan
Artificial Intelligence
Financial documents like earning reports or balance sheets often involve long tables and multi-page reports. Large language models have become a new tool to help numerical reasoning and understanding these documents. However, prompt quality can have a major effect on how well LLMs perform these financial reasoning tasks. Most current methods tune prompts on fixed datasets of financial text or tabular data, which limits their ability to adapt to new question types or document structures, or they involve costly and manually labeled/curated dataset to help build the prompts. We introduce a self-improving prompt framework driven by data-augmented optimization. In this closed-loop process, we generate synthetic financial tables and document excerpts, verify their correctness and robustness, and then update the prompt based on the results. Specifically, our framework combines a synthetic data generator with verifiers and a prompt optimizer, where the generator produces new examples that exposes weaknesses in the current prompt, the verifiers check the validity and robustness of the produced examples, and the optimizer incrementally refines the prompt in response. By iterating these steps in a feedback cycle, our method steadily improves prompt accuracy on financial reasoning tasks without needing external labels. Evaluation on DocMath-Eval benchmark demonstrates that our system achieves higher performance in both accuracy and robustness than standard prompt methods, underscoring the value of incorporating synthetic data generation into prompt learning for financial applications.
title Synthetic Data-Driven Prompt Tuning for Financial QA over Tables and Documents
topic Artificial Intelligence
url https://arxiv.org/abs/2511.06292