Graph mining in Fintech-driven payment industry for risk management

Financial Technology, also called "Fintech", is now one of the most popular terms that describe the novel technologies adopted by financial industries. Fintech brings new opportunities for financial services. Take the payment industry as an example, FinTech allows payments to be processed...

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Main Author: Chen, Zhe
Other Authors: Sun Aixin
Format: Thesis-Doctor of Philosophy
Language:English
Published: Nanyang Technological University 2021
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Online Access:https://hdl.handle.net/10356/152777
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Institution: Nanyang Technological University
Language: English
id sg-ntu-dr.10356-152777
record_format dspace
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Engineering::Computer science and engineering
spellingShingle Engineering::Computer science and engineering
Chen, Zhe
Graph mining in Fintech-driven payment industry for risk management
description Financial Technology, also called "Fintech", is now one of the most popular terms that describe the novel technologies adopted by financial industries. Fintech brings new opportunities for financial services. Take the payment industry as an example, FinTech allows payments to be processed instantly from mobile phones and computers. All transactions are encrypted as data and are performed over the internet. The convenience brought by Fintech also leaves the door open to many risks. A few major risks are market risk, cyber risk, and fraud risk. In this thesis, we study three real risk management applications that are derived from the global leading FinTech-driven payment enterprise PayPal. In specific, the three applications include seller community detection, risky seller detection, and cyber network anomaly detection. Seller community detection aims to identify the community-wise relationship between sellers on the payment network. Understanding the community structure of a payment network is important to manage the risk and compliance (eg., identify risky/illegal seller community). The payment network from PayPal contains millions of sellers and billions of transactions, and the sellers are described in a large number of attributes with incomplete values. To detect communities, an algorithm should ideally consider both seller attributes and transaction connectivity. Further, the algorithm has to be able to handle incomplete and complex attributes. We focus on those requirements and propose a framework named AGGMMR to effectively address the challenges from scalability, mixed attributes, and incomplete value. Network from industry usually keeps growing. It is infeasible to run community detection algorithm from scratch whenever new vertices or edges are joining the network, especially when the network is enterprise-scale (eg., millions of vertices, billions of edges). Based on this motivation, we extend the AGGMMR and propose inc-AGGMMR to detect communities on dynamic networks with an incremental approach. Risky seller detection aims to detect sellers on payment network that may result in revenue loss due to various reasons (eg., fraud, bankruptcy, bad suppliers). To detect risky seller on PayPal payment network, it is crucial to model both seller's transaction connectivity and topology. Transaction connectivity captures the interactions between seller/buyers and transaction topology reveals the seller's business model (eg., supplier, drop-shipper, or retailer). Based on this motivation, we design a dual-path graph convolution model named DP-GCN to effectively identify risky seller with a vertex classification framework. Cyber network anomaly detection aims to identify abnormal behaviors on computer network. In specific, we study the problem of detecting malicious domains on PayPal Content Security Policy (CSP) log network. CSP is a security standard that provides an additional layer of protection from cross-site scripting (XSS), clickjacking, and other code injection attacks. CSP log network models the traffics between external domains and PayPal internal servers. This application helps PayPal prevent risks from information interception and account takeover. Analyzing the traffic connectivity pattern is an effective way to detect network anomalies. In the CSP log network, the anomaly may arise from not only connectivity patterns but also burstiness in network activities. We model the CSP log network as a bipartite graph and propose a framework named BEA to detect anomalies from both connectivity patterns and burstiness. Comprehensive experimental evaluations on open datasets and applications on PayPal networks demonstrate the effectiveness and practicality of the proposed frameworks and models.
author2 Sun Aixin
author_facet Sun Aixin
Chen, Zhe
format Thesis-Doctor of Philosophy
author Chen, Zhe
author_sort Chen, Zhe
title Graph mining in Fintech-driven payment industry for risk management
title_short Graph mining in Fintech-driven payment industry for risk management
title_full Graph mining in Fintech-driven payment industry for risk management
title_fullStr Graph mining in Fintech-driven payment industry for risk management
title_full_unstemmed Graph mining in Fintech-driven payment industry for risk management
title_sort graph mining in fintech-driven payment industry for risk management
publisher Nanyang Technological University
publishDate 2021
url https://hdl.handle.net/10356/152777
_version_ 1713213287770882048
spelling sg-ntu-dr.10356-1527772021-10-05T07:44:19Z Graph mining in Fintech-driven payment industry for risk management Chen, Zhe Sun Aixin School of Computer Science and Engineering PayPal Innovation Lab (PPIL) AXSun@ntu.edu.sg Engineering::Computer science and engineering Financial Technology, also called "Fintech", is now one of the most popular terms that describe the novel technologies adopted by financial industries. Fintech brings new opportunities for financial services. Take the payment industry as an example, FinTech allows payments to be processed instantly from mobile phones and computers. All transactions are encrypted as data and are performed over the internet. The convenience brought by Fintech also leaves the door open to many risks. A few major risks are market risk, cyber risk, and fraud risk. In this thesis, we study three real risk management applications that are derived from the global leading FinTech-driven payment enterprise PayPal. In specific, the three applications include seller community detection, risky seller detection, and cyber network anomaly detection. Seller community detection aims to identify the community-wise relationship between sellers on the payment network. Understanding the community structure of a payment network is important to manage the risk and compliance (eg., identify risky/illegal seller community). The payment network from PayPal contains millions of sellers and billions of transactions, and the sellers are described in a large number of attributes with incomplete values. To detect communities, an algorithm should ideally consider both seller attributes and transaction connectivity. Further, the algorithm has to be able to handle incomplete and complex attributes. We focus on those requirements and propose a framework named AGGMMR to effectively address the challenges from scalability, mixed attributes, and incomplete value. Network from industry usually keeps growing. It is infeasible to run community detection algorithm from scratch whenever new vertices or edges are joining the network, especially when the network is enterprise-scale (eg., millions of vertices, billions of edges). Based on this motivation, we extend the AGGMMR and propose inc-AGGMMR to detect communities on dynamic networks with an incremental approach. Risky seller detection aims to detect sellers on payment network that may result in revenue loss due to various reasons (eg., fraud, bankruptcy, bad suppliers). To detect risky seller on PayPal payment network, it is crucial to model both seller's transaction connectivity and topology. Transaction connectivity captures the interactions between seller/buyers and transaction topology reveals the seller's business model (eg., supplier, drop-shipper, or retailer). Based on this motivation, we design a dual-path graph convolution model named DP-GCN to effectively identify risky seller with a vertex classification framework. Cyber network anomaly detection aims to identify abnormal behaviors on computer network. In specific, we study the problem of detecting malicious domains on PayPal Content Security Policy (CSP) log network. CSP is a security standard that provides an additional layer of protection from cross-site scripting (XSS), clickjacking, and other code injection attacks. CSP log network models the traffics between external domains and PayPal internal servers. This application helps PayPal prevent risks from information interception and account takeover. Analyzing the traffic connectivity pattern is an effective way to detect network anomalies. In the CSP log network, the anomaly may arise from not only connectivity patterns but also burstiness in network activities. We model the CSP log network as a bipartite graph and propose a framework named BEA to detect anomalies from both connectivity patterns and burstiness. Comprehensive experimental evaluations on open datasets and applications on PayPal networks demonstrate the effectiveness and practicality of the proposed frameworks and models. Doctor of Philosophy 2021-09-29T00:47:00Z 2021-09-29T00:47:00Z 2021 Thesis-Doctor of Philosophy Chen, Z. (2021). Graph mining in Fintech-driven payment industry for risk management. Doctoral thesis, Nanyang Technological University, Singapore. https://hdl.handle.net/10356/152777 https://hdl.handle.net/10356/152777 10.32657/10356/152777 en This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License (CC BY-NC 4.0). application/pdf Nanyang Technological University