SDS Seminar Series – Leo Duan, University of Florida
Apr
3
2026
Apr
3
2026
Description
The Spring 2026 SDS Seminar Series continues on April 3rd from 2:00 p.m. to 3:00 p.m. with Dr. Leo Duan (Associate Professor, Department of Statistics, University of Florida.. This event is in-person in the Avaya Room (POB 2.302).
Title: Bayesian Distance-to-Set Models: from Latent Variable to Latent Projection
Abstract: Statistical models often assume that data are generated near a structured, smooth, or low-dimensional set. A common approach is to use Bayesian latent variable models, in which each observation is associated with a latent coordinate on the set, and the observed data are modeled as noisy deviations from these coordinates. The deviation is typically characterized by a location-scale distribution, such as Gaussian. Despite their intuitive appeal and popularity, latent variable models often present practical challenges in posterior computation. In particular, Markov chain Monte Carlo samplers may suffer from slow mixing, especially when the sample size is large and there is no closed form fo integrating out the latent coordinates. In this article, we propose an alternative approach that replaces the deviation-from-coordinate with a distance-to-set. Specifically, the distance-to-set is defined as the distance between a data point and its projection onto the set, where the projection can be rapidly computed by optimization and replaces the latent coordinate in the likelihood. This change substantially reduces the dimensionality of the parameter x latent variable space, leading to efficient posterior computation. We establish several important statistical properties for the distance-to-set models, such as the independence between the normal-cone noise and fixed-effect parameters, posterior consistency, and an Occam's razor effect that automatically penalizes overfitting. We demonstrate the effectiveness of our approach through simulation studies and a Bayesian transfer learning application to online advertising, involving thousands of random effects that represent transferability.
Location
Avaya Room (POB 2.302)
Share
Other Events in This Series
Mar
1
2024
SDS Seminar Series – Dr. Laura Hatfield
Predict, Correct, Select: A New General Identification Strategy for Controlled Pre-Post Designs
2:00 pm – 3:00 pm • Virtual
Speaker(s): Laura Hatfield
Mar
22
2024
SDS Seminar Series – Dr. Sivaraman Balakrishnan
Statistical Inference for Optimal Transport
2:00 pm – 3:00 pm • In Person
Speaker(s): Sivaraman Balakrishnan
Mar
29
2024
SDS Seminar Series – Dr. Purna Sarkar
Some New Results for Streaming Principal Component Analysis
2:00 pm – 3:00 pm • In Person
Speaker(s): Purna Sarkar
Apr
12
2024
SDS Seminar Series – Dr. Daniela Witten
Data Thinning and Its Applications
2:00 pm – 3:00 pm • In Person
Apr
19
2024
SDS Seminar Series – Dr. William Rosenberger
Design and Inference for Enrichment Trials with a Continuous Biomarker
2:00 pm – 3:00 pm • In Person
Speaker(s): William Rosenberger
Apr
26
2024
SDS Seminar Series – Dr. Bodhisattva Sen
Extending the Scope of Nonparametric Empirical Bayes
2:00 pm – 3:00 pm • In Person
Speaker(s): Bodhisattva Sen
Sep
6
2024
SDS Seminar Series – Christine Peterson, University of Texas MD Anderson Cancer Center
New Methods for Microbiome Data Integration
2:00 pm – 3:00 pm • In Person
Speaker(s): Christine Peterson
Sep
13
2024
SDS Seminar Series – Matthew Vanaman, University of Texas at Austin
Data Analysis from the Zoo to the Wild and Back
2:00 pm – 3:00 pm • In Person
Speaker(s): Matthew Vanaman
Sep
20
2024
SDS Seminar Series – Saptarshi Roy, University of Texas at Austin
On the Computational Complexity of Private High-dimensional Model Selection
2:00 pm – 3:00 pm • In Person
Speaker(s): Saptarshi Roy
Sep
27
2024
SDS Seminar Series – Abhra Sarkar, University of Texas at Austin
(Bayesian) Semiparametric Local Inference (and Other Stories)
2:00 pm – 3:00 pm • In Person
Speaker(s): Abhra Sarkar