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1.
公开(公告)号:US20240119457A1
公开(公告)日:2024-04-11
申请号:US18482733
申请日:2023-10-06
Applicant: MASTERCARD INTERNATIONAL INCORPORATED
Inventor: Smriti Gupta , Adarsh Patankar , Akash Choudhary , Alekhya Bhatraju , Ammar Ahmad Khan , Amrita Kundu , Ankur Saraswat , Anubhav Gupta , Awanish Kumar , Ayush Agarwal , Brian M. McGuigan , Debasmita Das , Deepak Yadav , Diksha Shrivastava , Garima Arora , Gaurav Dhama , Gaurav Oberoi , Govind Vitthal Waghmare , Hardik Wadhwa , Jessica Peretta , Kanishk Goyal , Karthik Prasad , Lekhana Vusse , Maneet Singh , Niranjan Gulla , Nitish Kumar , Rajesh Kumar Ranjan , Ram Ganesh V , Rohit Bhattacharya , Rupesh Kumar Sankhala , Siddhartha Asthana , Soumyadeep Ghosh , Sourojit Bhaduri , Srijita Tiwari , Suhas Powar , Susan Skelsey
IPC: G06Q20/40
CPC classification number: G06Q20/4016
Abstract: Methods and server systems for computing fraud risk scores for various merchants associated with an acquirer described herein. The method performed by a server system includes accessing merchant-related transaction data including merchant-related transaction indicators associated with a merchant from a transaction database. Method includes generating a merchant-related transaction features based on the merchant-related indicators. Method includes generating via risk prediction models, for a payment transaction with the merchant, merchant health and compliance risk scores, merchant terminal risk scores, merchant chargeback risk scores, and merchant activity risk scores based on the merchant-related transaction features. Method includes facilitating transmission of a notification message to an acquirer server associated with the merchant. The notification message includes the merchant health and compliance risk scores, the merchant terminal risk scores, the merchant chargeback risk scores, and the merchant activity risk scores.
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2.
公开(公告)号:US20240062041A1
公开(公告)日:2024-02-22
申请号:US18448727
申请日:2023-08-11
Applicant: MASTERCARD INTERNATIONAL INCORPORATED
Inventor: Akash Choudhary , Janu Verma , Garima Arora , Adarsh Patankar
IPC: G06N3/045 , G06N3/0895 , G06Q20/40
CPC classification number: G06N3/045 , G06N3/0895 , G06Q20/4016
Abstract: Methods and server systems for detecting fraudulent transactions are described herein. Method performed by server system includes accessing base graph including plurality of nodes further including plurality of labeled nodes and unlabeled nodes. Method includes assigning via Graph Neural Network (GNN) model, fraudulent label or non-fraudulent label to each unlabeled node based on the base graph. This assigning process includes generating plurality of sub-graphs based on splitting the base graph and filtering these sub-graphs via Siamese Neural Network model based on pre-defined threshold values. Then, the GNN model generates plurality of sets of embeddings based on plurality of filtered sub-graphs. Further, aggregated node embedding is generated for each node and then, final node representation for each node is generated via dense layer of GNN model. Then, fraudulent label or the non-fraudulent label is assigned to each unlabeled node of plurality of unlabeled nodes based on final node representation.
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