Machine learning-based fraud detection system for online transactions

Abstract:
The increasing prevalence of online transactions has led to a rise in fraudulent activities, posing significant challenges for businesses and consumers alike. This project aims to develop a machine learning-based fraud detection system that can effectively identify and prevent fraudulent transactions in real-time. By leveraging advanced algorithms and techniques, the proposed system will analyze transaction data, detect patterns, and classify transactions as either legitimate or fraudulent. The system’s accuracy and efficiency will be evaluated using a large dataset of real-world transactions, and its potential for integration into existing online payment systems will be explored.

Table of Contents:
Chapter 1: Introduction
1.1 Background and Motivation
1.2 Problem Statement
1.3 Objectives
1.4 Scope and Limitations
1.5 Methodology

Chapter 2: Literature Review
2.1 Overview of Fraud Detection Techniques
2.2 Machine Learning Algorithms for Fraud Detection
2.3 Feature Selection and Data Preprocessing Techniques
2.4 Evaluation Metrics for Fraud Detection Systems
2.5 Summary of Existing Research

Chapter 3: Data Collection and Preprocessing
3.1 Data Sources and Acquisition
3.2 Data Cleaning and Transformation
3.3 Feature Extraction and Selection
3.4 Data Splitting and Cross-Validation

Chapter 4: Machine Learning Model Development
4.1 Selection of Machine Learning Algorithms
4.2 Model Training and Optimization
4.3 Performance Evaluation and Validation
4.4 Model Interpretability and Explainability

Chapter 5: System Implementation and Evaluation
5.1 System Architecture and Integration
5.2 Real-Time Transaction Monitoring
5.3 Performance Evaluation and Comparison
5.4 System Robustness and Scalability
5.5 Ethical Considerations and Privacy Protection

5.6: Conclusion and Future Work

0/5 (0 Reviews)
Read Previous

IMPROVING THE TEACHING OF ACCOUNTING EDUCATION IN THE UNDERGRADUATE PROGRAMME OF KOGI STATE COLLEGE OF EDUCATION, ANKPA

Read Next

Developing a recommendation system for personalized movie recommendations

Need Help? Chat with us