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FinQAPT: Empowering Financial Decisions with End-to-End LLM-driven Question Answering Pipeline

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arxiv 2410.13959 v2 pith:ED66OPQJ submitted 2024-10-17 cs.IR cs.AIcs.CLcs.LG

FinQAPT: Empowering Financial Decisions with End-to-End LLM-driven Question Answering Pipeline

classification cs.IR cs.AIcs.CLcs.LG
keywords financialpipelinecontextend-to-endmodulerelevantaccuracyanalysis
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Financial decision-making hinges on the analysis of relevant information embedded in the enormous volume of documents in the financial domain. To address this challenge, we developed FinQAPT, an end-to-end pipeline that streamlines the identification of relevant financial reports based on a query, extracts pertinent context, and leverages Large Language Models (LLMs) to perform downstream tasks. To evaluate the pipeline, we experimented with various techniques to optimize the performance of each module using the FinQA dataset. We introduced a novel clustering-based negative sampling technique to enhance context extraction and a novel prompting method called Dynamic N-shot Prompting to boost the numerical question-answering capabilities of LLMs. At the module level, we achieved state-of-the-art accuracy on FinQA, attaining an accuracy of 80.6%. However, at the pipeline level, we observed decreased performance due to challenges in extracting relevant context from financial reports. We conducted a detailed error analysis of each module and the end-to-end pipeline, pinpointing specific challenges that must be addressed to develop a robust solution for handling complex financial tasks.

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