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Live Online Class

Advanced Credit Risk Modeling

Enhance your analytics skills with practical insights and real-life case studies in our upcoming webinar by Bart Baesens

Dates: 19th – 22nd May 2025
Timings: 12:30 PM - 5 PM (GMT + 7)

About

In this course, we will start by reviewing the Basel and IFRS 9 regulation, then, we discuss how to leverage alternative data sources for credit risk modeling and do feature engineering and followed by an overview of variable selection and profit driven performance evaluation. 

Elevate your learning with Live Web where you'll engage directly with instructors, ask questions, and sharpen your analytics prowess. Experience the closest thing to interaction and take your skills to new heights.

Who Should Attend

Credit risk/scoring managers, data miners, those involved in model vetting/validation and auditing, risk strategy developers, and credit risk executives.

Learn How To

  • Leverage Alternative Data – Discover how to use non-traditional data sources for credit risk modeling and feature engineering.
  • Smart Variable Selection & Profit-Driven Evaluation – Learn techniques to choose the right variables and assess model performance with a business impact focus.
  • Advanced Modeling Techniques – Explore cutting-edge methods like ensemble models, neural networks, and Bayesian networks.
  • Master Low Default Portfolios & Validation – Understand challenges in low default environments and best practices for validation.
  • Stress Testing & Risk Resilience – Gain insights into stress testing frameworks to strengthen risk management.
  • Benchmarking & Performance Measurement – Learn how to assess and compare models effectively for better decision-making.

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    Trainer Profile

Naeem Siddiqi

Bart Baesens is a professor of Big Data & Analytics at KU Leuven (Belgium), and a lecturer at the University of Southampton He has done extensive research on big data & analytics, credit risk modeling, fraud detection, and marketing analytics. He co-authored more than 250 scientific papers and 10 books some of which have been translated into Chinese, Kazakh and Korean, and sold more than 20,000 copies of these books world-wide.
 

Bart received the OR Society’s Goodeve medal for best JORS paper in 2016 and the EURO 2014 and EURO 2017 award for best EJOR paper. He also regularly tutors, advises and provides consulting support to international firms with respect to their analytics and credit risk management strategy.

​                        Prof. Dr. Bart Baesens