Location: 2203 SAS Hall, NC State Main Campus Speaker: Elynn Chen Assistant Professor of Technology, Operations and Statistics (TOPS) at NYU Stern School of Business Title: Transfer Q-Learning: Stationary and Non-Stationary MDPs Abstract: In dynamic decision-making scenarios across business, healthcare, and education, leveraging data from diverse populations can significantly enhance reinforcement learning (RL) performance for specific target…
Events
Events
Calendar of Events
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Location: 2203 SAS Hall, NC State Main Campus Speaker: Josh Startmer, Founder of StatQuest Title: StatQuest: Origins plus musings on the intersection of Statistics and Machine Learning. ABSTRACT: Although closely related, subtle but important differences separate machine learning practitioners from statisticians. In this talk, we will use statistical linear models to highlight these differences. Then, we… |
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Location: 2203 SAS Hall, NC State Main Campus Speaker: Dr. Vadim Zipunnikov, Johns Hopkins Bloomberg School of Public Health Title: Developing more sensitive endpoints by leveraging novel statistical methods for Digital Health Technologies (DHTs) data Abstract: Digital Health Technologies (DHT) are now used to continuously track physical activity and sleep in many clinical studies. This DHT data provides… |
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Location: 2203 SAS Hall, NC State Main Campus Title: Synthetic Populations, Personas and Agents Presenter: Georgiy Bobashev, Ph.D. Abstract: Many experiments and estimate are not feasible or unethical to conduct with real people but possible in silico with synthetic individuals. I will present the construction, and the use of geospatially explicit and statistically accurate person and household… |
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