Arkaprabha Banerjee


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2024

pdf bib
Numerical Claim Detection in Finance: A New Financial Dataset, Weak-Supervision Model, and Market Analysis
Agam Shah | Arnav Hiray | Pratvi Shah | Arkaprabha Banerjee | Anushka Singh | Dheeraj Deepak Eidnani | Sahasra Chava | Bhaskar Chaudhury | Sudheer Chava
Proceedings of the Seventh Fact Extraction and VERification Workshop (FEVER)

In this paper, we investigate the influence of claims in analyst reports and earnings calls on financial market returns, considering them as significant quarterly events for publicly traded companies. To facilitate a comprehensive analysis, we construct a new financial dataset for the claim detection task in the financial domain. We benchmark various language models on this dataset and propose a novel weak-supervision model that incorporates the knowledge of subject matter experts (SMEs) in the aggregation function, outperforming existing approaches. We also demonstrate the practical utility of our proposed model by constructing a novel measure of *optimism*. Here, we observe the dependence of earnings surprise and return on our optimism measure. Our dataset, models, and code are publicly (under CC BY 4.0 license) available on GitHub.