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Main Authors: TA, Duc Tuyen, Saad, Wajdi Ben, Oh, Ji Young
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2504.12319
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author TA, Duc Tuyen
Saad, Wajdi Ben
Oh, Ji Young
author_facet TA, Duc Tuyen
Saad, Wajdi Ben
Oh, Ji Young
contents With the introduction of the PSD2 regulation in the EU which established the Open Banking framework, a new window of opportunities has opened for banks and fintechs to explore and enrich Bank transaction descriptions with the aim of building a better understanding of customer behavior, while using this understanding to prevent fraud, reduce risks and offer more competitive and tailored services. And although the usage of natural language processing models and techniques has seen an incredible progress in various applications and domains over the past few years, custom applications based on domain-specific text corpus remain unaddressed especially in the banking sector. In this paper, we introduce a language-based Open Banking transaction classification system with a focus on the french market and french language text. The system encompasses data collection, labeling, preprocessing, modeling, and evaluation stages. Unlike previous studies that focus on general classification approaches, this system is specifically tailored to address the challenges posed by training a language model with a specialized text corpus (Banking data in the French context). By incorporating language-specific techniques and domain knowledge, the proposed system demonstrates enhanced performance and efficiency compared to generic approaches.
format Preprint
id arxiv_https___arxiv_org_abs_2504_12319
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Specialized text classification: an approach to classifying Open Banking transactions
TA, Duc Tuyen
Saad, Wajdi Ben
Oh, Ji Young
Information Retrieval
Artificial Intelligence
Computation and Language
Computational Finance
With the introduction of the PSD2 regulation in the EU which established the Open Banking framework, a new window of opportunities has opened for banks and fintechs to explore and enrich Bank transaction descriptions with the aim of building a better understanding of customer behavior, while using this understanding to prevent fraud, reduce risks and offer more competitive and tailored services. And although the usage of natural language processing models and techniques has seen an incredible progress in various applications and domains over the past few years, custom applications based on domain-specific text corpus remain unaddressed especially in the banking sector. In this paper, we introduce a language-based Open Banking transaction classification system with a focus on the french market and french language text. The system encompasses data collection, labeling, preprocessing, modeling, and evaluation stages. Unlike previous studies that focus on general classification approaches, this system is specifically tailored to address the challenges posed by training a language model with a specialized text corpus (Banking data in the French context). By incorporating language-specific techniques and domain knowledge, the proposed system demonstrates enhanced performance and efficiency compared to generic approaches.
title Specialized text classification: an approach to classifying Open Banking transactions
topic Information Retrieval
Artificial Intelligence
Computation and Language
Computational Finance
url https://arxiv.org/abs/2504.12319