CS Seminar Series: Shengjia Zhao

March 3, 2022
10:45 am - 12pm EST
Online
This event is free

Who can attend?

  • General public
  • Faculty
  • Staff
  • Students

Contact

Department of Computer Science
410-516-8775

Description

Shengjia Zhao, a doctoral candidate at the Department of Computer Science at Stanford University, will give a seminar talk titled "Uncertainty and Information for ML-Driven Decision Making" for the Department of Computer Science.

Please attend the event by using the Zoom link.

Abstract:

Prediction models should know what they do not know if they are to be trusted for making important decisions. Prediction models would accurately capture their uncertainty if they could predict the true probability of the outcome of interest, such as the true probability of a patient's illness given the symptoms. While outputting these probabilities exactly is impossible in most cases, I show that it is surprisingly possible to learn probabilities that are "indistinguishable" from the true probabilities for large classes of decision making tasks. I propose algorithms to learn indistinguishable probabilities, and show that they provably enable accurate risk assessment and better decision outcomes. In addition to learning probabilities that capture uncertainty, my talk will also discuss how to acquire information to reduce uncertainty in ways that optimally improve decision making. Empirically, these methods lead to prediction models that enable better and more confident decision making in applications such as medical diagnosis and policy making.

Who can attend?

  • General public
  • Faculty
  • Staff
  • Students

Contact

Department of Computer Science
410-516-8775