SDS Seminar Series – Abhra Sarkar, University of Texas at Austin

art by Pawel Czerwinski
Event starts on this day

Sep

27

2024

Event starts at this time 2:00 pm – 3:00 pm
In Person (view details)
Featured Speaker(s): Abhra Sarkar
Cost: Free
(Bayesian) Semiparametric Local Inference (and Other Stories)

Description

The Fall 2024 SDS Seminar Series continues on September 27th from 2:00 p.m. to 3:00 p.m. with Dr. Abhra Sarkar (Associate Professor, Department of Statistics and Data Sciences, University of Texas at Austin). This event is in-person in the Avaya Room (POB 2.302).    

Title: (Bayesian) Semiparametric Local Inference (and Other Stories)

Abstract: In this talk, I will present some ideas on flexible (Bayesian) semiparametric local inference models in various settings. Here I define the problem of ‘local inference’ broadly as one where different sets of predictors can influence a response variable differently in different parts of a domain of interest (often continuous but not always). For instance, in longitudinal experiments, predictors may have varying effects on the response over time, while in spatial settings, their influences may differ across locations. Although the basic notion is not new to statistics, developing rigorous modeling, computational, and theoretical frameworks for local inference in complex real-world settings, particularly for categorical predictors such as experimental or demographic factors in laboratory and survey settings, poses significant challenges, and the literature remains sparse. I have encountered interesting local inference problems essentially in all application areas I have worked on, including behavioral neuroscience, imaging neuroscience, nutritional epidemiology, and so forth. Often domain-specific knowledge introduces additional unique nuances and twists, making them (at least from a personal perspective) even more fascinating. In the interest of time, I will focus on the first two application areas mentioned above. Along the way, I’ll also share some stories about how these ideas have developed during my time here at SDS.

Location

Peter O’Donnell Jr. Building (POB) 2.302

Share


Audience

Other Events in This Series

Sep

8

2023

Seminar Series

SDS Seminar Series – Dr. Emily Roberts

A Causal Inference Approach for Surrogate Marker Evaluation with Mixed Models

2:00 pm – 3:00 pm In Person

Speaker(s): Emily Roberts

Sep

15

2023

Seminar Series

SDS Seminar Series – Dr. Dimitris Korobilis

Monitoring Multicountry Macroeconomic Risk

2:00 pm – 3:00 pm Virtual

Speaker(s): Dimitris Korobilis

Sep

22

2023

Seminar Series

SDS Seminar Series – Dr. Will Fithian

Estimating the False Discovery Rate of Model Selection

2:00 pm – 3:00 pm In Person

Speaker(s): Will Fithian

Sep

29

2023

Seminar Series

SDS Seminar Series – Dr. David Moriarty

A Data Science Journey in Business

2:00 pm – 3:00 pm In Person

Speaker(s): David Moriarty

Oct

6

2023

Seminar Series

SDS Seminar Series – Dr. Amanda Ellis

Navigating the Future of Statistics Education: Leveraging ChatGPT's Advantages and Overcoming Challenges

2:00 pm – 3:00 pm Virtual

Speaker(s): Amanda Ellis

Oct

20

2023

Seminar Series

SDS Seminar Series – Dr. Amy Zhang

Bisimulation and Reinforcement Learning

2:00 pm – 3:00 pm Virtual

Speaker(s): Amy Zhang

Oct

27

2023

Seminar Series

SDS Seminar Series – Dr. Marcelo Medeiros

Global Inflation Forecasting: Benefits from Machine Learning Methods

2:00 pm – 3:00 pm Virtual

Speaker(s): Marcelo Medeiros

Nov

3

2023

Seminar Series

SDS Seminar Series - Dr. Steve Yadlowsky

Choosing a Proxy Metric from Past Experiments

2:00 pm – 3:00 pm Virtual

Speaker(s): Steve Yadlowsky

Nov

10

2023

Seminar Series

SDS Seminar Series – Drew Herren

Statistical Aspects of SHAP: Functional ANOVA for Model Interpretation

2:00 pm – 3:00 pm In Person

Speaker(s): Drew Herren

Dec

1

2023

Seminar Series

SDS Seminar Series – Dr. Dave Zhao

High-Dimensional Nonparametric Empirical Bayes Problems in Genomics

2:00 pm – 3:00 pm In Person

Speaker(s): Dave Zhao