Seminar

Deep optimal stopping

Patrick Cheridito (ETH, Zurich)

November 26, 2020, 11:00–12:15

Toulouse

Room Zoom

MAD-Stat. Seminar

Abstract

I present a deep learning method for optimal stopping problems which directly learns the optimal stopping rule from Monte Carlo samples. As such, it is broadly applicable in situations where the underlying randomness can efficiently be simulated. The approach is tested on three problems: the pricing of a Bermudan max-call option, the pricing of a callable multi barrier reverse convertible and the problem of optimally stopping a fractional Brownian motion. In all three cases it produces very accurate results in high-dimensional situations with short computing times. Joint work with Sebastian Becker and Arnulf Jentzen.