Week of May 7, 2023

Mon May 8, 2023
4:00pm to 5:00pm - RH 306 - Applied and Computational Mathematics
Heather Zinn Brooks - (Harvey Mudd College)
Emergence of polarization in a sigmoidal bounded-confidence model of opinion dynamics

We propose a nonlinear bounded-confidence model (BCM) of continuous time opinion dynamics on networks with both persuadable individuals and zealots. The model is parameterized by a scalar γ, which controls the steepness of a smooth influence function that encodes the relative weights that nodes place on the opinions of other nodes. When γ = 0, this influence function exactly recovers Taylor’s averaging model; when γ → ∞, the influence function converges to that of a modified Hegselmann–Krause (HK) BCM. Unlike the classical HK model, however, our sigmoidal bounded-confidence model (SBCM) is smooth for any finite γ. We show that the set of steady states of our SBCM is qualitatively similar to that of the Taylor model when γ is small and that the set of steady states approaches a subset of the set of steady states of a modified HK model as γ → ∞. For several special graph topologies, we give analytical descriptions of important features of the space of steady states. A notable result is a closed-form relationship between the stability of a polarized state and the graph topology in a simple model of echo chambers in social networks. Because the influence function of our BCM is smooth, we are able to study it with linear stability analysis, which is difficult to employ with the usual discontinuous influence functions in BCMs. This is joint work with Phil Chodrow and Mason Porter.

Tue May 9, 2023
1:00pm to 2:00pm - RH 440R - Dynamical Systems
William Wood - (UC Irvine)
Periodic Anderson Bernoulli Model

For this last talk in the series, I will discuss the details of how spectrum of the Schrödinger operator can be defined, and the proof that the spectrum can consist of an infinite number of intervals. 

4:00pm - ISEB 1200 - Differential Geometry
Gunhee Cho - (UC Santa Barbara)
Stochastic Bergman geometry

In complex geometry, the Bergman metric plays a very important role as a
canonical metric as a pullback metric of the Fubini-Study metric of complex
projective ambient space. This work is trying to do something really new to
find a whole new approach of studying hyperbolic complex geometry,
especially for a bounded domain in C^n, we replace the infinite dimensional
complex projective ambient space to the collection of probability
distributions defined on a bounded domain. We prove that in this new
framework, the Bergman metric is given as a pullback metric of the
Fisher-Information metric considered in information geometry, and from this,
a new perspective on the contraction property and biholomorphic invariance
of the Bergman metric will be discussed. As an application of this
framework, in the case of bounded hermitian symmetric domains, we will
discuss about the existence of a sequence of i.i.d random variables in which
the covariance matrix converges to a distribution sense with a normal
distribution given by the Bergman metric, and if more time is left, we will
talk about recent progresses on stochastic complex geometry.

Wed May 10, 2023
1:00pm to 2:00pm - 440R Rowland Hall - Combinatorics and Probability
Shuheng Zhou - (UC Riverside)
Semidefinite programming on population clustering: a global analysis

In this paper, we consider the problem of partitioning a small data sample of size n drawn from a mixture of 2 sub-gaussian distributions. Our work is motivated by the application of clustering individuals according to their population of origin using markers, when the divergence between the two populations is small. We are interested in the case that individual features are of low average quality γ, and we want to use as few of them as possible to correctly partition the sample. We consider semidefinite relaxation of an integer quadratic program which is formulated essentially as finding the maximum cut on a graph where edge weights in the cut represent dissimilarity scores between two nodes based on their features. 

A small simulation result in Blum, Coja-Oghlan, Frieze and Zhou (2007, 2009) shows that  even when the sample size n is small, by
increasing p so that $np= \Omega(1/\gamma^2)$,  one can classify a mixture of two product populations using the spectral method therein with success rate reaching an ``oracle'' curve. There the ``oracle'' was computed  assuming that distributions were known,
where success rate means the ratio between correctly classified individuals and the sample size n. In this work, we show the theoretical underpinning of this observed concentration of measure phenomenon in high dimensions, simultaneously for the semidefinite optimization goal and the spectral method, where the input is based on the gram matrix computed from centered data. We allow a full range of tradeoffs between the sample size and the number of features such that the product of these two is lower bounded by $1/\gamma^2$ so long as the number of features p is lower bounded by $1/\gamma$.

Thu May 11, 2023
9:00am to 9:50am - Zoom - Inverse Problems
Hongkai Zhao - (Duke University)
Instability of an inverse problem for the stationary radiative transport near the diffusion limit

https://sites.uci.edu/inverse/