Fraud Detection in Networks: State-of-the-art

10/24/2019
by   Paul Irofti, et al.
0

Financial fraud detection represents the challenge of finding anomalies in networks of financial transactions. In general, the anomaly detection (AD) is the problem of distinguishing between normal data samples with well defined patterns or signatures and those that do not conform to the expected profiles. The fraudulent behaviour in money laundering may manifest itself through unusual patterns in financial transaction networks. In such networks, nodes represents customers and the edges are transactions: a directed edge between two nodes illustrates that there is a money transfer in the respective direction, where the weight on the edge is the transferred amount. In this paper we present a survey on the fundamental anomaly detection techniques and then present briefly the relevant literature in connection with fraud detection context.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
01/02/2019

Anomaly Detection in Networks with Application to Financial Transaction Networks

This paper is motivated by the task of detecting anomalies in networks o...
research
05/26/2022

AntiBenford Subgraphs: Unsupervised Anomaly Detection in Financial Networks

Benford's law describes the distribution of the first digit of numbers a...
research
01/18/2023

Temporal Motifs for Financial Networks: A Study on Mercari, JPMC, and Venmo Platforms

Understanding the dynamics of financial transactions among people is cri...
research
03/04/2021

Event-Based Dynamic Banking Network Exploration for Economic Anomaly Detection

The instability of financial system issues might trigger a bank failure,...
research
11/24/2020

Anomaly Detection Model for Imbalanced Datasets

This paper proposes a method to detect bank frauds using a mixed approac...
research
04/04/2021

Isconna: Streaming Anomaly Detection with Frequency and Patterns

An edge stream is a common form of presentation of dynamic networks. It ...

Please sign up or login with your details

Forgot password? Click here to reset