Nº 19-80: Deep Hedging: Hedging Derivatives Under Generic Market Frictions Using Reinforcement Learning

AuthorJ. Teichmann, H. Buehler, L. Gonon, B. Wood, B. Mohan, J. Kochems
Date27 déc. 2019
CatégorieWorking Papers

This article discusses a new application of reinforcement learning: to the problem of hedging a portfolio of “over-the-counter” derivatives under under market frictions such as trading costs and liquidity constraints. It is an extended version of our recent work https://www.ssrn.com/abstract=3120710, here using notation more common in the machine learning literature.
The objective is to maximize a non-linear risk-adjusted return function by trading in liquid hedging instruments such as equities or listed options. The approach presented here is the first efficient and model-independent algorithm which can be used for such problems at scale.