Fall 2024 Biostatistics P8124 section 001

Graphical Models for Complex Health Data

GRAPHICAL MODELS COMPLEX

Call Number 15645
Day & Time
Location
TR 4:00pm-5:20pm
LL204 Armand Hammer Health Sciences Center
Points 3
Grading Mode Standard
Approvals Required None
Instructor Daniel S Malinsky
Type LECTURE
Method of Instruction In-Person
Course Description

This is a course at the intersection of statistics and machine learning, focusing on graphical models. In complex systems with many (perhaps hundreds or thousands) of variables, the formalism of graphical models can make representation more compact, inference more tractable, and intelligent data-driven decision-making more feasible. We will focus on representational schemes based on directed and undirected graphical models and discuss statistical inference, prediction, and structure learning. We will emphasize applications of graph-based methods in areas relevant to health: genetics, neuroscience, epidemiology, image analysis, clinical support systems, and more. We will draw connections in lecture between theory and these application areas. The final project will be entirely “hands on,” where students will apply techniques discussed in class to real data and write up the results.

 

Web Site Vergil
Department Biostatistics
Enrollment 33 students (40 max) as of 9:14PM Wednesday, November 20, 2024
Subject Biostatistics
Number P8124
Section 001
Division School of Public Health
Open To GSAS, Public Health
Section key 20243BIST8124P001