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Mathematical Research at the University of Cambridge

 

Understanding the impact of changes in features on the unconditional distribution of outcomes is crucial for various applications. Despite their predictive accuracy, existing black-box models are limited in addressing such questions. In this work, we propose a novel approximation method to compute feature importance curves, which quantify changes across the quantiles of the outcome distribution due to shifts in features. Our approach leverages pre-trained black-box models, combining their predictive strength with interpretation. Through extensive simulations and real-world data applications, we show that our method delivers sparse, reliable results while maintaining computational efficiency, making it a practical tool for interpretation.

Further information

Time:

08May
May 8th 2025
14:00 to 14:30

Venue:

Seminar Room 1, Newton Institute

Speaker:

Jing Zhou (University of East Anglia)

Series:

Isaac Newton Institute Seminar Series