COMP 641 - INTERACTIVE MACH LEARNING
Long Title: GRADUATE SEMINAR ON INTERACTIVE MACHINE LEARNING
Department: Computer Science
Grade Mode: Standard Letter
Language of Instruction: Taught in English
Course Type: Seminar
Credit Hours: 1 TO 3
Restrictions: Must be enrolled in one of the following Level(s):
Graduate
Description: Many applications of machine learning involve humans in the loop (e.g., the programmer implementing the algorithm, the domain expert specifying the features/labels, or the end user making decisions using the learned model). This course is a discussion-based seminar focusing on the design, analysis, and evaluation of machine learning techniques with explicit emphasis on the human(s) in the loop. Topics include reinforcement learning with human teachers, active learning, interpretability, learning beyond labels, and human-in-the-loop Bayesian inference. Recommended Prerequisite(s): COMP 382 and STAT 315/DSCI 301 and CAAM 335 Repeatable for Credit.