AIMS Seminar | Yicen Li & Ruiyang Hong (McMaster University)
Feb 9, 2026
11:30AM to 12:30PM
Date/Time
Date(s) - 09/02/2026
11:30 am - 12:30 pm
Speakers: Yicen Li & Ruiyang Hong (McMaster University)
Location: Hamilton Hall, Room 403 (AIMS Lab)
Title: Neural Operators Can Discover Functional Clusters
Abstract: Clustering functional data from dynamical systems is challenging as trajectories lie in infinite-dimensional spaces where Euclidean metrics fail. Existing methods often lack theoretical guarantees for converging to the true dynamical structure. We propose a framework for universal clustering of ODE trajectories using Sampling-Based Neural Operators (SNOs). We show that, under sufficient expressivity, SNO-induced decision regions converge to true partitions in the Upper Kuratowski space, a metric well-suited for approximating cluster regions in infinite-dimensional settings. Practically, we instantiate this by discretizing trajectories onto grids, processed by a pre-trained visual encoder and a lightweight clustering head. Experiments on ODE benchmarks demonstrate that our operator-learning approach aligns with theoretical convergence predictions and captures latent structures effectively, outperforming classical baselines.