Proactive Fraud Defense: Machine Learning's Evolving Role in Protecting Against Online Fraud
- URL: http://arxiv.org/abs/2410.20281v1
- Date: Sat, 26 Oct 2024 21:34:28 GMT
- Title: Proactive Fraud Defense: Machine Learning's Evolving Role in Protecting Against Online Fraud
- Authors: Md Kamrul Hasan Chy,
- Abstract summary: This paper explores the transformative role of machine learning in fraud detection and prevention.
It highlights the strengths of machine learning in processing vast datasets, identifying intricate fraud patterns, and providing real-time predictions.
It emphasizes the potential of machine learning to revolutionize fraud detection frameworks by making them more dynamic, efficient, and capable of handling the growing complexity of fraud across various industries.
- Score: 0.0
- License:
- Abstract: As online fraud becomes more sophisticated and pervasive, traditional fraud detection methods are struggling to keep pace with the evolving tactics employed by fraudsters. This paper explores the transformative role of machine learning in addressing these challenges by offering more advanced, scalable, and adaptable solutions for fraud detection and prevention. By analyzing key models such as Random Forest, Neural Networks, and Gradient Boosting, this paper highlights the strengths of machine learning in processing vast datasets, identifying intricate fraud patterns, and providing real-time predictions that enable a proactive approach to fraud prevention. Unlike rule-based systems that react after fraud has occurred, machine learning models continuously learn from new data, adapting to emerging fraud schemes and reducing false positives, which ultimately minimizes financial losses. This research emphasizes the potential of machine learning to revolutionize fraud detection frameworks by making them more dynamic, efficient, and capable of handling the growing complexity of fraud across various industries. Future developments in machine learning, including deep learning and hybrid models, are expected to further enhance the predictive accuracy and applicability of these systems, ensuring that organizations remain resilient in the face of new and emerging fraud tactics.
Related papers
- Proactive Schemes: A Survey of Adversarial Attacks for Social Good [13.213478193134701]
Adversarial attacks in computer vision exploit the vulnerabilities of machine learning models by introducing subtle perturbations to input data.
We examine the rise of proactive schemes-methods that encrypt input data using additional signals termed templates, to enhance the performance of deep learning models.
The survey delves into the methodologies behind these proactive schemes, the encryption and learning processes, and their application to modern computer vision and natural language processing applications.
arXiv Detail & Related papers (2024-09-24T22:31:56Z) - Time-Aware Face Anti-Spoofing with Rotation Invariant Local Binary Patterns and Deep Learning [50.79277723970418]
imitation attacks can lead to erroneous identification and subsequent authentication of attackers.
Similar to face recognition, imitation attacks can also be detected with Machine Learning.
We propose a novel approach that promises high classification accuracy by combining previously unused features with time-aware deep learning strategies.
arXiv Detail & Related papers (2024-08-27T07:26:10Z) - Verification of Machine Unlearning is Fragile [48.71651033308842]
We introduce two novel adversarial unlearning processes capable of circumventing both types of verification strategies.
This study highlights the vulnerabilities and limitations in machine unlearning verification, paving the way for further research into the safety of machine unlearning.
arXiv Detail & Related papers (2024-08-01T21:37:10Z) - The Frontier of Data Erasure: Machine Unlearning for Large Language Models [56.26002631481726]
Large Language Models (LLMs) are foundational to AI advancements.
LLMs pose risks by potentially memorizing and disseminating sensitive, biased, or copyrighted information.
Machine unlearning emerges as a cutting-edge solution to mitigate these concerns.
arXiv Detail & Related papers (2024-03-23T09:26:15Z) - Disentangling the Causes of Plasticity Loss in Neural Networks [55.23250269007988]
We show that loss of plasticity can be decomposed into multiple independent mechanisms.
We show that a combination of layer normalization and weight decay is highly effective at maintaining plasticity in a variety of synthetic nonstationary learning tasks.
arXiv Detail & Related papers (2024-02-29T00:02:33Z) - Enhancing Credit Card Fraud Detection A Neural Network and SMOTE Integrated Approach [4.341096233663623]
This research proposes an innovative methodology combining Neural Networks (NN) and Synthet ic Minority Over-sampling Technique (SMOTE) to enhance the detection performance.
The study addresses the inherent imbalance in credit card transaction data, focusing on technical advancements for robust and precise fraud detection.
arXiv Detail & Related papers (2024-02-27T02:26:04Z) - Credit Card Fraud Detection with Subspace Learning-based One-Class
Classification [18.094622095967328]
One-Class Classification (OCC) algorithms excel in handling imbalanced data distributions.
These algorithms integrate subspace learning into the data description.
These algorithms transform the data into a lower-dimensional subspace optimized for OCC.
arXiv Detail & Related papers (2023-09-26T12:26:28Z) - A novel approach to increase scalability while training machine learning
algorithms using Bfloat 16 in credit card fraud detection [0.0]
This research focuses on machine learning scalability for banks' credit card fraud detection systems.
We have compared the existing machine learning algorithms and methods that are available with the newly proposed technique.
The goal is to prove that using fewer bits for training a machine learning algorithm will result in a more scalable system, that will reduce the time and will also be less costly to implement.
arXiv Detail & Related papers (2022-06-24T01:22:17Z) - Application of Deep Reinforcement Learning to Payment Fraud [0.0]
A typical fraud detection system employs standard supervised learning methods where the focus is on maximizing the fraud recall rate.
We argue that such a formulation can lead to suboptimal solutions.
We formulate fraud detection as a sequential decision-making problem by including the utility within the model in the form of the reward function.
arXiv Detail & Related papers (2021-12-08T11:30:53Z) - Multi Agent System for Machine Learning Under Uncertainty in Cyber
Physical Manufacturing System [78.60415450507706]
Recent advancements in predictive machine learning has led to its application in various use cases in manufacturing.
Most research focused on maximising predictive accuracy without addressing the uncertainty associated with it.
In this paper, we determine the sources of uncertainty in machine learning and establish the success criteria of a machine learning system to function well under uncertainty.
arXiv Detail & Related papers (2021-07-28T10:28:05Z) - Adversarial Attacks on Machine Learning Systems for High-Frequency
Trading [55.30403936506338]
We study valuation models for algorithmic trading from the perspective of adversarial machine learning.
We introduce new attacks specific to this domain with size constraints that minimize attack costs.
We discuss how these attacks can be used as an analysis tool to study and evaluate the robustness properties of financial models.
arXiv Detail & Related papers (2020-02-21T22:04:35Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.