Canio Benedetto
2024
A Novel Multi-Step Prompt Approach for LLM-based Q&As on Banking Supervisory Regulation
Daniele Licari
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Canio Benedetto
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Praveen Bushipaka
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Alessandro De Gregorio
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Marco De Leonardis
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Tommaso Cucinotta
Proceedings of the 10th Italian Conference on Computational Linguistics (CLiC-it 2024)
This paper investigates the use of large language models (LLMs) in analyzing and answering questions related to banking supervisory regulation concerning reporting obligations. We introduce a multi-step prompt construction method that enhances the context provided to the LLM, resulting in more precise and informative answers. This multi-step approach is compared with a standard “zero-shot” approach, which lacks context enrichment. To assess the quality of the generated responses, we utilize an LLM Evaluator. Our findings indicate that the multi-step approach significantly outperforms the zero-shot method, producing more comprehensive and accurate responses.