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metadata
language:
  - en
tags:
  - telecom
  - fraud
  - nigeria
  - cyber
size_categories:
  - 10K<n<100K

πŸ‡³πŸ‡¬ Nigerian Telecom Fraud Analysis

Overview

This project presents an end-to-end Exploratory Data Analysis (EDA) of telecom-related fraud incidents in Nigeria. The goal is to uncover patterns, quantify financial impact, and provide actionable recommendations to mitigate fraud.

The analysis is based on a dataset containing ~50,000 fraud records, including fraud type, timestamps, operators, and financial impact.


Objectives

  • Understand the distribution of fraud types
  • Identify the most financially damaging fraud categories
  • Compare fraud activity across telecom operators
  • Provide business-oriented recommendations

Dataset Description

Key columns in the dataset:

  • fraud_id – Unique identifier for each fraud case
  • detected_at – Timestamp when fraud was detected
  • fraud_type – Category of fraud (e.g., phishing, account takeover)
  • operator – Telecom operator involved
  • affected_phone – Victim phone number
  • customer_id – Customer identifier
  • financial_loss_ngn – Estimated financial loss in Nigerian Naira

Data Cleaning

Steps performed:

  • Converted detected_at to datetime format
  • Handled missing values in timestamps
  • Standardized categorical values (fraud types, operators)
  • Removed inconsistencies and duplicates where necessary

Exploratory Data Analysis

1. Fraud Type Distribution

  • The most common fraud types include:

    • call forwarding fraud
    • identity theft
  • other frauds occur in Relatively similar frequency.

Screenshot 2026-04-02 at 16.55.30

2. Financial Impact Analysis

  • Highest average losses:

    • Account Takeover
    • Subscription Fraud
  • Moderate impact:

    • Phishing
    • Call forwarding fraud
  • Low impact:

    • IMEI spoofing and similar technical frauds

Insight: Frequency does not necessarily equal severity. Some rare frauds are far more damaging. Screenshot 2026-04-02 at 16.51.26

3. Operator Comparison

  • Fraud cases are distributed across multiple operators
  • Some operators(MTN and Airtel) show higher exposure to specific fraud types

Insight: Targeted prevention strategies may be needed per operator.

Screenshot 2026-04-02 at 16.58.04


3. Fraud location Comparison

  • Fraud cases are distributed across multiple locations
  • It is evident that most fraud cases occur in Lagos/

Insight: Lagos is seriously suspected of fraud.

Screenshot 2026-04-02 at 16.59.46

Key Insights

  • A small number of fraud types account for the majority of financial loss
  • High-frequency fraud is not always high-impact
  • Fraud patterns suggest both opportunistic and organized activity

Recommendations

Focus on High-Impact Fraud

  • Prioritize detection systems for:

    • Account takeover
    • Subscription fraud
  • Allocate more resources to prevent high-loss incidents

Improve Detection Systems

  • Implement anomaly detection for unusual account behavior
  • Use machine learning models for early fraud identification

Strengthen Customer Protection

  • Introduce multi-factor authentication (MFA)
  • Send real-time alerts for suspicious activities

Operator-Specific Strategies

  • Customize fraud prevention measures per telecom operator
  • Monitor operator-specific fraud trends

Continuous Monitoring

  • Build dashboards for real-time fraud tracking
  • Regularly update models and rules

Tools & Technologies

  • Python (Pandas, NumPy)
  • Data Visualization (Matplotlib, Seaborn)
  • Jupyter Notebook

How to Use

  1. Clone the repository
  2. Open the notebook in Jupyter
  3. Run all cells sequentially
  4. Explore visualizations and insights

Future Work

  • Build predictive models for fraud detection
  • Incorporate real-time streaming data
  • Add geolocation-based analysis
  • Deploy as an interactive dashboard

Contributing

Contributions are welcome! Feel free to open issues or submit pull requests.


License

This project is for educational and analytical purposes.


Data Source

The dataset used in this project was sourced from [nigerian-telecom-fraudulent-activity-datasets / huggingface].

Acknowledgments

This analysis was conducted as part of a Data Science assignment at Reichman University. The dataset is used for educational purposes only.