LIDS and Stats Tea Talk

Wednesday, March 12, 2025 - 4:00pm

Event Calendar Category

LIDS & Stats Tea

Speaker Name

Julie Zhu

Affiliation

LIDS

Building and Room number

32-D650

Building and Room Number

LIDS Lounge

"Conformal Prediction under Lévy-Prokhorov Distribution Shifts: Robustness to Local and Global Perturbations"

Conformal prediction provides a powerful framework for constructing prediction intervals with finite-sample guarantees, yet its robustness under distribution shifts remains a significant challenge. This paper addresses this limitation by modeling distribution shifts using Lévy-Prokhorov (LP) ambiguity sets, which capture both local and global perturbations. We provide a self-contained overview of LP ambiguity sets and their connections to popular metrics such as Wasserstein and Total Variation. We show that the link between conformal prediction and LP ambiguity sets is a natural one: by propagating the LP ambiguity set through the scoring function, we reduce complex high-dimensional distribution shifts to manageable one-dimensional distribution shifts, enabling exact quantification of worst-case quantiles and coverage. Building on this analysis, we construct robust conformal prediction intervals that remain valid under distribution shifts, explicitly linking LP parameters to interval width and confidence levels. Experimental results on real-world datasets demonstrate the effectiveness of the proposed approach.

Julie Zhu
I'm a Ph.D. student in the Computational Science and Engineering department at MIT, working under the guidance of Professor Youssef Marzouk. Previously, I earned a bachelor's degree in Mathematics and Data Science from NYU Shanghai. My research focuses on developing advanced computational methodologies for uncertainty quantification, statistical inference, and machine learning, particularly in applications involving physical systems and engineering challenges.

Oliver Wang
My current research revolves around developing algorithms that enable accurate, efficient, and systematic sampling from conditional distributions arising from complex dynamical systems with physical constraints. Beyond developing such algorithms, I am researching conditional robustness for inference and sampling methods through establishing guarantees under modeling uncertainty. Prior to joining MIT, I pursued my undergraduate studies at Emory University, majoring in applied mathematics and statistics (AMS). In my free time, I enjoy alpine skiing, golf, and food explorations.