Fraud Detection using Python
Fraud Detection using Python
https://www.udemy.com/course/fraud-detection-using-python/
Build an effective machine learning project to detect instances of financial crime.

 


If you're interested in detecting fraud using machine learning, then this course is for you!

Fraud is a massive problem for many modern organizations, as bad actors are becoming increasingly sophisticated both in methodology and technical ability. Detecting fraud is therefore an important problem that is never going to be completely solved. By taking this course, you'll be levelling up with a hireable skillset that is likely going to be relevant and for many years to come.

This course was developed by myself, a Principal Data Scientist with a PhD in Machine Learning and real-world expertise in deploying production machine learning models for detecting fraud in the financial services industry.

In this course, students will be introduced to the problem of fraud in industry, and how it can be solved via the introduction of various machine learning approaches. I will walk you through an example fraud detection problem, where you will get hands-on exposure to building models using Python. This will include navigating the challenging problem of fraud, where special consideration needs to be given to the highly imbalanced nature of the data.

The lessons covered in this course include:

  • Lesson 1 - Introduction to fraud detection: anomaly detection, class imbalance

  • Lesson 2 - Training a supervised machine learning model to detect fraud: logistic regression, XGBoost, performance improvement through hyperparameter optimization

  • Lesson 3 - Performance metrics for fraud detection: confusion matrix, cost of misclassification, accuracy paradox, implementing metrics in scikit-learn

  • Lesson 4 - Optimal model selection: threshold optimization using performance metrics, threshold optimization using cost of fraud, introduction to Streamlit, building a threshold simulator for visual inspection

  • Lesson 5 - Strategies for improving model performance: sampling techniques

Each lesson builds on the practical knowledge achieved in the prior lessons, allowing for students to produce a completed end-to-end project as the final output of the course. This project could serve as an important part of a student's portfolio of projects, assisting with their job search and professional development endeavors.

The Python technology stack used within this course includes the following: pandas, numpy, matplotlib, scikit-learn, seaborn, XGBoost, Streamlit and imblearn.

Fraud Detection using Python


 TO MAC USERS: If RAR password doesn't work, use this archive program: 

RAR Expander 0.8.5 Beta 4  and extract password protected files without error.


 TO WIN USERS: If RAR password doesn't work, use this archive program: 

Latest Winrar  and extract password protected files without error.


 Gamystyle   |  

Information
Members of Guests cannot leave comments.


SermonBox - Seasonal Collection

SermonBox - The Series Pack Collection

Top Rated News

  • Christmas Material
  • Laser Cut & Print Design Elements Bundle - ETSY
  • Daz3D - All Materials - SKU 37000-37999
  • Cgaxis - All Product - 2019 - All Retail! - UPDATED!!!
  • DigitalXModels Full Collections
  • Rampant Design Tools Full Collections Total: $4400
  • FilmLooks.Com Full Collection
  • All PixelSquid Product
  • The Pixel Lab Collection
  • Envato Elements Full Sources- 3200+ Files
  • Ui8.NET Full Sources
  • The History of The 20th Century
  • The Dover Collections
  • Snake Interiors Collections
  • Inspirational Collections
  • Veer Fancy Collections
  • All Ojo Images
  • All ZZVE Collections
  • All Sozaijiten Collections
  • All Image Broker Collections
  • Shuterstock Bundle Collections
  • Tattoo Collections
  • Blend Images Collections
  • Authors Tuorism Collections
  • Motion Mile - Big Bundle
  • PhotoBacks - All Product - 2018
  • Dekes Techniques - Photoshop & Illustrator Course - 1 to 673
Telegram GFXTRA Group
Udemy - Turkce Gorsel Ogrenme Setleri - Part 2
Videohive Wow Pack Series


rss