TFD-IIS-CRMCB: Telecom Fraud Detection for Incomplete Information Systems Based on Correlated Relation and Maximal Consistent Block

Author:

Li RanORCID,Chen Hongchang,Liu Shuxin,Wang Kai,Wang BiaoORCID,Hu XinxinORCID

Abstract

Telecom fraud detection is of great significance in online social networks. Yet the massive, redundant, incomplete, and uncertain network information makes it a challenging task to handle. Hence, this paper mainly uses the correlation of attributes by entropy function to optimize the data quality and then solves the problem of telecommunication fraud detection with incomplete information. First, to filter out redundancy and noise, we propose an attribute reduction algorithm based on max-correlation and max-independence rate (MCIR) to improve data quality. Then, we design a rough-gain anomaly detection algorithm (MCIR-RGAD) using the idea of maximal consistent blocks to deal with missing incomplete data. Finally, the experimental results on authentic telecommunication fraud data and UCI data show that the MCIR-RGAD algorithm provides an effective solution for reducing the computation time, improving the data quality, and processing incomplete data.

Funder

Major Scientific and Technological Special Project of Henan Province

Publisher

MDPI AG

Subject

General Physics and Astronomy

Reference45 articles.

1. CCF Based System Framework In Federated Learning Against Data Poisoning Attacks;Ahmed;J. Appl. Sci. Eng.,2022

2. Fraud detection in dynamic interaction network;Lin;IEEE Trans. Knowl. Data Eng.,2019

3. NetSpam: A network-based spam detection framework for reviews in online social media;Shehnepoor;IEEE Trans. Inf. Forensics Secur.,2017

4. Learned lessons in credit card fraud detection from a practitioner perspective;Caelen;Expert Syst. Appl.,2014

5. An investigation of the fraud risk and fraud scheme methods in Greek commercial banks;Repousis;J. Money Laund. Control.,2019

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