Spring 2023 Enterprise Risk Management PS5555 section 001

MACHINE LEARNING FOR RISK MANAGEMENT

MACHINE LEARNING FOR RISK

Call Number 14380
Day & Time
Location
M 6:10pm-8:00pm
703 Hamilton Hall
Points 3
Grading Mode Standard
Approvals Required None
Instructors David J Romoff
Marshall Alphonso
Type LECTURE
Method of Instruction In-Person
Course Description

The exponentially increasing availability of data and the rapid development of information technology and computing power have inevitably made Machine Learning part of the risk manager’s toolkit. But, what are these tools? This class provides the driving intuitions for machine learning. Students will see how many of the algorithms are extensions of what we already do with our human minds. These algorithms include regularized regression, cluster analysis, naive bayes, apriori algorithm, decision trees, random forests, and boosted ensembles.

Through practical and real-life applications of ML to Risk Management, students will learn to identify the best technique to apply to a particular risk management problem, from credit risk measurement, fraud detection, portfolio selection to climate change, and ESG applications.

Web Site Vergil
Department Enterprise Risk Management
Enrollment 7 students (40 max) as of 10:06AM Sunday, April 28, 2024
Subject Enterprise Risk Management
Number PS5555
Section 001
Division School of Professional Studies
Open To Professional Studies
Campus Morningside
Note ON-CAMPUS. ERM STUDENTS ONLY. PREREQ ERMC 5350 or EXAM.
Section key 20231ERMC5555K001