Probability & Statistics Day 2023 Group Photo
PROBABILITY & STATISTICS DAY

Register A special feature of Probability and Statistics Day at UMBC 2024 is that the conference, including the workshop, is open to all statistics graduate students from UMBC and local universities free of charge; however, REGISTRATION IS REQUIRED! The deadline to register is Friday, April 12, 2024.   
REGISTER NOW

For more information, contact any member of the organizing committee:

Thomas Mathew
Conference Chair
410.868.4491

Seungchul Baek
  410.455.2406
Ansu Chatterjee
  410.455.2235
Yvonne Huang
  410.455.2422
Yehenew Kifle
  443.231.8368
Yaakov Malinovsky
  410.455.2968
Nagaraj Neerchal
  410.455.2437
Thu Nguyen
  410.455.2407
DoHwan Park
  410.455.2408
Anindya Roy
  410.455.2435
Bimal Sinha
  443.538.3012
Elizabeth Stanwyck
  410.455.5731

Sponsor

The Department of Mathematics and Statistics at UMBC will hold the 15th Annual Probability and Statistics Day at UMBC during April 19−20, 2024. The event will consist of a half-day workshop on Friday afternoon and a full day conference on Saturday. Probability and Statistics Day at UMBC is open to statisticians from all academic institutions, government agencies, and private industries. The event is free for all statistics graduate students from UMBC and other academic institutions (registration required).

Half–Day Workshop
APR
19
FRI

Subhashis Ghoshal

Department of Statistics

North Carolina State University

An Invitation to Bayesian Nonparametrics

Keynote Addresses
APR
20
SAT

Jay Bartroff

Department of Statistics and Data Sciences

The University of Texas at Austin

Optimal hypergeometric confidence sets are (almost) always intervals

APR
20
SAT

Scott H. Holan

Department of Statistics

University of Missouri and US Census Bureau

Computationally efficient Bayesian unit-level models for non-Gaussian data under informative sampling

APR
20
SAT

Debdeep Pati

Department of Statistics

Texas A&M University

Reconciling computational barriers and statistical guarantees in variational inference

APR
20
SAT

Tian Zheng

Department of Statistics

Columbia University

Statistical challenges in climate data science