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January 23, 2023
Conference Paper
Title
Contradiction Detection in Financial Reports
Abstract
Finding and amending contradictions in a financial report is crucial for the publishing company and its financial auditors. To automate this process, we introduce a novel approach that incorporates informed pre-training into its transformer-based architecture to infuse this model with additional Part-Of-Speech knowledge. Furthermore, we fine-tune the model on the public Stanford Natural Language Inference Corpus and our proprietary financial contradiction dataset. It achieves an exceptional contradiction detection F1 score of 89.55% on our real-world financial contradiction dataset, beating our several baselines by a considerable margin. During the model selection process we also test various financial-document-specific transformer models and find that they underperform the more general embedding approaches.
Author(s)
Project(s)
The Lamarr Institute for Machine Learning and Artificial Intelligence
Open Access
Rights
CC BY 4.0: Creative Commons Attribution
Language
English