Mathematics 365 - Stochastic Processes

Spring
2022
01
4.00
Tanya L. Leise

TTH 11:30 AM-12:50 PM; M 12:00 PM-12:50 PM

Amherst College
MATH-365-01-2122S
SMUD205; SMUD204
tleise@amherst.edu

A stochastic process is a collection of random variables used to model the evolution of a system over time. Unlike deterministic systems, stochastic processes involve an element of randomness or uncertainty. Examples include stock market fluctuations, audio signals, EEG recordings, and random movement such as Brownian motion and random walks. Topics will include Markov chains, martingales, Brownian motion, and stochastic integration, including Ito’s formula. Four class hours per week, with weekly in-class computer labs.

Requisite: MATH 360 or consent of the instructor. Limited to 24 students.  Professor Leise. 

Permission is required for interchange registration during all registration periods.