ABOUT THE SPEAKER:
Javeria Ahmed is a Senior Manager at RBC working on Retail Risk Models with a background in Computational & Applied Math with 4+ years of experience in the financial services sector. Javeria has led projects and models focusing on the intersection of risk modelling and the automotive industry and is particularly passionate about auto shopping behavior, dealer gaming and fraud and their impact in the viability of risk models.
TALK TITLE:
TRACK:
SUB TOPIC:
ABSTRACT:
Feature importance estimation is crucial for model interpretability, but traditional permutation-based methods break down when features exhibit dependencies. Standard permutation importance shuffles features independently, creating out-of-distribution samples that don’t reflect realistic data relationships—leading to unreliable and often misleading importance scores. As warned by Hooker et al. (2021), “unrestricted permutation forces extrapolation.”
This talk introduces a conditional subgroup approach for computing model-agnostic feature importance that respects feature dependencies through row and column blocking strategies. The method combines two complementary Model-X techniques that model the joint feature distribution:
The approach uses Fraction of Variance Unexplained (FVU) as a variance-based sensitivity measure with well-defined bounds [0,1], making it comparable across problems. Unlike SHAP or standard permutation importance, this method correctly handles multicollinear features without requiring model retraining or manual feature dropping.
WHAT YOU’LL LEARN:
Applying steps (1)–(5) leads to more conservative (less exaggerated) importance scores. The maskon library implements these steps and can be easily integrated into a scikit-learn workflow.
Business Leaders: C-Level Executives, Project Managers, and Product Owners will get to explore best practices, methodologies, principles, and practices for achieving ROI.
Engineers, Researchers, Data Practitioners: Will get a better understanding of the challenges, solutions, and ideas being offered via breakouts & workshops on Natural Language Processing, Neural Nets, Reinforcement Learning, Generative Adversarial Networks (GANs), Evolution Strategies, AutoML, and more.
Job Seekers: Will have the opportunity to network virtually and meet over 30+ Top Al Companies.
Ignite what is an Ignite Talk?
Ignite is an innovative and fast-paced style used to deliver a concise presentation.
During an Ignite Talk, presenters discuss their research using 20 image-centric slides which automatically advance every 15 seconds.
The result is a fun and engaging five-minute presentation.
You can see all our speakers and full agenda here