AI RESEARCH

Unsupervised Graph Modeling for Anomaly Detection in Accounting Subject Relationships

arXiv CS.LG

ArXi:2604.26216v1 Announce Type: new This paper addresses the problem of anomaly detection in accounting subject association structures, proposing a structured modeling and unsupervised discriminant framework based on graph neural networks. This framework is used to mine stable correspondences between subjects and identify structural deviations from general ledger details and voucher entries. The method first abstracts accounting subjects as graph nodes, and the co-occurrence and debit/credit correspondence of subjects in the same business record are abstracted as weighted edges.