A Unified Framework for Modeling Heterogeneous Financial Data via Dual-Granularity Prompting

Published: 18 Apr 2026, Last Modified: 22 Apr 2026ACL 2026 Industry Track OralEveryoneRevisionsBibTeXCC BY 4.0
Keywords: Credit Scoring, Financial NLP, Multi-scale Forecasting
Abstract: Recent industrial credit scoring models remain heavily reliant on manually tuned statistical learning methods. Despite their potential, deep learning architectures have struggled to consistently outperform traditional statistical models in industrial credit scoring, largely due to the complexity of heterogeneous financial data and the challenge of modeling evolving creditworthiness. To bridge this gap, we introduce FinLangNet, a novel framework that reformulates credit scoring as a multi-scale sequential learning problem. FinLangNet processes heterogeneous financial data through a dual-module architecture that combines tabular feature extraction with temporal sequence modeling, generating probability distributions of users' future financial behaviors across multiple time horizons. A key innovation is our dual-prompt mechanism within the sequential module, which introduces learnable prompts operating at both feature-level granularity for capturing fine-grained temporal patterns and user-level granularity for aggregating holistic risk profiles. Notably, real world deployment yielded a 6.3 pp improvement in KS, along with a 9.9% reduction in bad debt rate.
Submission Type: Deployed
Copyright Form: pdf
Submission Number: 139
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