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A Novel DeBERTa-based Model for Financial Question Answering Task

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arxiv 2207.05875 v1 pith:PKIOXXJB submitted 2022-07-12 cs.CL

A Novel DeBERTa-based Model for Financial Question Answering Task

classification cs.CL
keywords financialintelligencesystemsaccuracyansweringfinqalanguagemodel
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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As a rising star in the field of natural language processing, question answering systems (Q&A Systems) are widely used in all walks of life. Compared with other scenarios, the applicationin financial scenario has strong requirements in the traceability and interpretability of the Q&A systems. In addition, since the demand for artificial intelligence technology has gradually shifted from the initial computational intelligence to cognitive intelligence, this research mainly focuses on the financial numerical reasoning dataset - FinQA. In the shared task, the objective is to generate the reasoning program and the final answer according to the given financial report containing text and tables. We use the method based on DeBERTa pre-trained language model, with additional optimization methods including multi-model fusion, training set combination on this basis. We finally obtain an execution accuracy of 68.99 and a program accuracy of 64.53, ranking No. 4 in the 2022 FinQA Challenge.

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