CATS: Cross-Platform E-Commerce Fraud Detection

Nowadays, the popularity of e-commerce has brought huge economic benefits to factories, third-party merchants, and e-commerce service providers. Driven by such huge economic benefits, malicious merchants attempt to promote items through inserting fraudulent purchases, fake review scores, and/or feedback, into them. Mitigating this threat is challenging due to the difficulty of obtaining internal e-commerce data, the variance of e-commerce services used by malicious merchants, and the reluctance of service providers in cooperation. In this paper, we present an efficient, platform-independent, and robust e-commerce fraud detection system, CATS, to detect frauds for different large-scale e-commerce platforms. We implement the design of CATS into a prototype system and evaluate this prototype on the world's popular e-commerce platform Taobao. The evaluation result on Taobao shows that CATS can achieve a high accuracy of 91% in detecting frauds. Based on this success, we then apply CATS on another large-scale e-commerce platforms, and again CATS achieves an accuracy of 96%, suggesting that CATS is very effective on real e-commerce platforms. Based on the cross-platform evaluation results, we conduct a comprehensive analysis on the reported frauds and reveal several abnormal yet interesting behaviors of those reported frauds. Our study in this paper is expected to shed light on defending against frauds for various e-commerce platforms.

[1]  Yin Zhang,et al.  Measuring and fingerprinting click-spam in ad networks , 2012, CCRV.

[2]  Gianluca Stringhini,et al.  EVILCOHORT: Detecting Communities of Malicious Accounts on Online Services , 2015, USENIX Security Symposium.

[3]  Gang Wang,et al.  Follow the green: growth and dynamics in twitter follower markets , 2013, Internet Measurement Conference.

[4]  P. Picard,et al.  Economic Analysis of Insurance Fraud , 2013 .

[5]  Tianqi Chen,et al.  XGBoost: A Scalable Tree Boosting System , 2016, KDD.

[6]  Young-Gul Kim,et al.  Identifying key factors affecting consumer purchase behavior in an online shopping context , 2003 .

[7]  Divyakant Agrawal,et al.  Detectives: detecting coalition hit inflation attacks in advertising networks streams , 2007, WWW '07.

[8]  Xu Chen,et al.  Extracting and reasoning about implicit behavioral evidences for detecting fraudulent online transactions in e-Commerce , 2016, Decis. Support Syst..

[9]  Yao Zhao,et al.  BotGraph: Large Scale Spamming Botnet Detection , 2009, NSDI.

[10]  Kyuseok Shim,et al.  CATCH: A detecting algorithm for coalition attacks of hit inflation in internet advertising , 2011, Inf. Syst..

[11]  Yong Hu,et al.  The application of data mining techniques in financial fraud detection: A classification framework and an academic review of literature , 2011, Decis. Support Syst..

[12]  Jeffrey Dean,et al.  Efficient Estimation of Word Representations in Vector Space , 2013, ICLR.

[13]  Hai-Xin Duan,et al.  Seeking Nonsense, Looking for Trouble: Efficient Promotional-Infection Detection through Semantic Inconsistency Search , 2016, 2016 IEEE Symposium on Security and Privacy (SP).

[14]  Tej Paul Bhatla,et al.  Understanding Credit Card Frauds , 2003 .

[15]  Adriano M. Pereira,et al.  A modeling approach for credit card fraud detection in electronic payment services , 2015, SAC.

[16]  Emiliano De Cristofaro,et al.  Paying for Likes?: Understanding Facebook Like Fraud Using Honeypots , 2014, Internet Measurement Conference.

[17]  David Lo,et al.  Detecting click fraud in online advertising: a data mining approach , 2014, J. Mach. Learn. Res..

[18]  Chao-Hsien Chu,et al.  A Review of Data Mining-Based Financial Fraud Detection Research , 2007, 2007 International Conference on Wireless Communications, Networking and Mobile Computing.

[19]  A. Annie Portia,et al.  Analysis on credit card fraud detection methods , 2011, 2011 International Conference on Computer, Communication and Electrical Technology (ICCCET).

[20]  Miguel Costa,et al.  A data mining based system for credit-card fraud detection in e-tail , 2017, Decis. Support Syst..

[21]  Benno Stein,et al.  Vandalism Detection in Wikidata , 2016, CIKM.

[22]  Gianluca Bontempi,et al.  Learned lessons in credit card fraud detection from a practitioner perspective , 2014, Expert Syst. Appl..

[23]  Yiqun Liu,et al.  Search engine click spam detection based on bipartite graph propagation , 2014, WSDM.

[24]  Tharam S. Dillon,et al.  Detecting Frauds in Online Advertising Systems , 2006, EC-Web.

[25]  Arturo Azcorra,et al.  Understanding the Detection of View Fraud in Video Content Portals , 2016, WWW.

[26]  Ahmed Abbasi,et al.  MetaFraud: A Meta-Learning Framework for Detecting Financial Fraud , 2012, MIS Q..

[27]  Gang Wang,et al.  Northeastern University , 2021, IEEE Pulse.

[28]  Wei Xu,et al.  Session-Based Fraud Detection in Online E-Commerce Transactions Using Recurrent Neural Networks , 2017, ECML/PKDD.

[29]  Yi Li,et al.  In a World That Counts: Clustering and Detecting Fake Social Engagement at Scale , 2015, WWW.

[30]  Yong Guan,et al.  Detecting Click Fraud in Pay-Per-Click Streams of Online Advertising Networks , 2008, 2008 The 28th International Conference on Distributed Computing Systems.