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Main Authors: Li, Siyuan, Chen, Jian, Yao, Rui, Hu, Xuming, Zhou, Peilin, Qiu, Weihua, Zhang, Simin, Dong, Chucheng, Li, Zhiyao, Xie, Qipeng, Yuan, Zixuan
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2505.19804
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author Li, Siyuan
Chen, Jian
Yao, Rui
Hu, Xuming
Zhou, Peilin
Qiu, Weihua
Zhang, Simin
Dong, Chucheng
Li, Zhiyao
Xie, Qipeng
Yuan, Zixuan
author_facet Li, Siyuan
Chen, Jian
Yao, Rui
Hu, Xuming
Zhou, Peilin
Qiu, Weihua
Zhang, Simin
Dong, Chucheng
Li, Zhiyao
Xie, Qipeng
Yuan, Zixuan
contents Nowadays, regulatory compliance has become a cornerstone of corporate governance, ensuring adherence to systematic legal frameworks. At its core, financial regulations often comprise highly intricate provisions, layered logical structures, and numerous exceptions, which inevitably result in labor-intensive or comprehension challenges. To mitigate this, recent Regulatory Technology (RegTech) and Large Language Models (LLMs) have gained significant attention in automating the conversion of regulatory text into executable compliance logic. However, their performance remains suboptimal particularly when applied to Chinese-language financial regulations, due to three key limitations: (1) incomplete domain-specific knowledge representation, (2) insufficient hierarchical reasoning capabilities, and (3) failure to maintain temporal and logical coherence. One promising solution is to develop a domain specific and code-oriented datasets for model training. Existing datasets such as LexGLUE, LegalBench, and CODE-ACCORD are often English-focused, domain-mismatched, or lack fine-grained granularity for compliance code generation. To fill these gaps, we present Compliance-to-Code, the first large-scale Chinese dataset dedicated to financial regulatory compliance. Covering 1,159 annotated clauses from 361 regulations across ten categories, each clause is modularly structured with four logical elements-subject, condition, constraint, and contextual information-along with regulation relations. We provide deterministic Python code mappings, detailed code reasoning, and code explanations to facilitate automated auditing. To demonstrate utility, we present FinCheck: a pipeline for regulation structuring, code generation, and report generation.
format Preprint
id arxiv_https___arxiv_org_abs_2505_19804
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Compliance-to-Code: Enhancing Financial Compliance Checking via Code Generation
Li, Siyuan
Chen, Jian
Yao, Rui
Hu, Xuming
Zhou, Peilin
Qiu, Weihua
Zhang, Simin
Dong, Chucheng
Li, Zhiyao
Xie, Qipeng
Yuan, Zixuan
Computation and Language
Nowadays, regulatory compliance has become a cornerstone of corporate governance, ensuring adherence to systematic legal frameworks. At its core, financial regulations often comprise highly intricate provisions, layered logical structures, and numerous exceptions, which inevitably result in labor-intensive or comprehension challenges. To mitigate this, recent Regulatory Technology (RegTech) and Large Language Models (LLMs) have gained significant attention in automating the conversion of regulatory text into executable compliance logic. However, their performance remains suboptimal particularly when applied to Chinese-language financial regulations, due to three key limitations: (1) incomplete domain-specific knowledge representation, (2) insufficient hierarchical reasoning capabilities, and (3) failure to maintain temporal and logical coherence. One promising solution is to develop a domain specific and code-oriented datasets for model training. Existing datasets such as LexGLUE, LegalBench, and CODE-ACCORD are often English-focused, domain-mismatched, or lack fine-grained granularity for compliance code generation. To fill these gaps, we present Compliance-to-Code, the first large-scale Chinese dataset dedicated to financial regulatory compliance. Covering 1,159 annotated clauses from 361 regulations across ten categories, each clause is modularly structured with four logical elements-subject, condition, constraint, and contextual information-along with regulation relations. We provide deterministic Python code mappings, detailed code reasoning, and code explanations to facilitate automated auditing. To demonstrate utility, we present FinCheck: a pipeline for regulation structuring, code generation, and report generation.
title Compliance-to-Code: Enhancing Financial Compliance Checking via Code Generation
topic Computation and Language
url https://arxiv.org/abs/2505.19804