Week of November 9, 2025

Mon Nov 10, 2025
2:00pm to 3:00pm - 340P Rowland Hall - Combinatorics and Probability
Manuel Fernandez - (USC)
Distance theorems and the smallest singular value of random matrices

In recent years, significant progress has been made in our understanding of the quantitative behavior of random matrices. One research direction of continued interest has been the estimation of the smallest singular value. A measurement of matrix’s ``invertibility’’, quantitative bounds on the smallest singular value are important for a variety of tasks including establishing a circular law for a non-Hermitian random matrix and for proving stability of numerical methods. In view of the universality phenomena of random matrices, one tries to prove these estimates for more general matrix ensembles satisfying weaker assumptions.

In the geometric approach to proving smallest singular value estimates a key ingredient is the use of a 'distance theorem', which is a small ball estimate for the distance between a random vector and subspace. In this talk we will discuss a new distance theorem and its application to proving smallest singular value estimates for inhomogeneous random rectangular matrix with independent entries. We will also discuss how the recent resolution of the Slicing Conjecture, due to Klartag, Lehec, and Guan, implies smallest singular values estimates for a number of log-concave random matrix ensembles. In some cases, independent entries are no longer necessary!

4:00pm to 5:00pm - RH 306 - Applied and Computational Mathematics
Minxin Zhang - (UCLA)
Structure-Aware Adaptive Nonconvex Optimization for Deep Learning and Scientific Computing

Modern machine learning and scientific computing pose optimization challenges of unprecedented scale and complexity, demanding fundamental advances in both theory and algorithmic design for nonconvex optimization. This talk presents recent advances that address these challenges by exploiting matrix and tensor structures, integrating adaptivity, and leveraging sampling techniques. In the first part, I introduce AdaGO, a new optimizer that combines orthogonalized momentum updates with adaptive learning rates. Building on the recent success of the Muon optimizer in large language model training, AdaGO incorporates an AdaGrad-type stepsize that scales orthogonalized update directions by accumulated past gradient norms. This design preserves the structural advantage of orthogonalized updates while adapting stepsizes to noise and the optimization landscape. We establish optimal convergence rates for smooth nonconvex functions and demonstrate improved performance over Muon and Adam on classification and regression tasks. The second part focuses on zeroth-order global optimization. We develop a theoretical framework for inexact proximal point (IPP) methods for global optimization, establishing convergence guarantees when proximal operators are estimated either deterministically or stochastically. The quadratic regularization in the proximal operator induces a concentrated Gibbs measure landscape that facilitates effective sampling. We propose two sampling-based practical algorithms: TT-IPP, which constructs a low-rank tensor-train (TT) approximation using a randomized TT cross algorithm, and MC-IPP, which employs Monte Carlo integration. Both IPP algorithms adaptively balance efficiency and accuracy in proximal operator estimation, achieving strong performance surpassing established solvers across diverse benchmark functions and applications. Together, these works advance structure-aware adaptive first-order optimization for deep learning and zeroth-order global optimization in scientific computing.

Thu Nov 13, 2025
3:00pm to 4:00pm - RH 306 - Number Theory
Andrew Kobin - (CCR La Jolla)
Local-global principles for families of stacky curves

Solutions to many problems in number theory can be described using the theory of algebraic stacks. In this talk, I will describe a Diophantine equation, the so-called “generalized Fermat equation”, whose integer solutions correspond to points on an appropriate stacky curve: a curve with extra automorphisms at prescribed points. Using étale descent over such a curve, we characterize local and global solutions to a family of such equations and give asymptotics for the local-global principle in the corresponding family of stacky curves. This is joint work with Juanita Duque-Rosero, Chris Keyes, Manami Roy, Soumya Sankar and Yidi Wang. 

4:00pm to 5:00pm - RH 306 - Colloquium
Sean Howe - (University of Utah)
Independence, moments, and the stable homology of moduli spaces

What is the second moment of a random smooth plane curve?  Is the multiset of eigenvalues of a random orthogonal matrix a Gaussian random variable? Is a random compact Riemann surface a Poisson process? In this talk, I will describe a categorified version of probability theory that makes these nonsense questions into precise mathematics and give some applications to the topology and arithmetic of moduli spaces in algebraic geometry.