학술논문

Efficient Learning of Nested Deep Hedging using Multiple Options
Document Type
Conference
Source
2023 14th IIAI International Congress on Advanced Applied Informatics (IIAI-AAI) IIAI-AAI Advanced Applied Informatics (IIAI-AAI), 2023 14th IIAI International Congress on. :514-521 Jul, 2023
Subject
Computing and Processing
Training
Learning systems
Instruments
Friction
Pricing
Tail
Artificial neural networks
deep hedging
options
neural networks
financial market
Language
Abstract
Deep hedging is a framework for hedging derivatives in the presence of market frictions. In this study, we focus on the problem of hedging a given target option by using multiple options. To extend the deep hedging framework to this setting, the options used as hedging instruments also have to be priced during training. While one might use classical pricing model such as the Black-Scholes formula, ignoring frictions can offer arbitrage opportunities which are undesirable for deep hedging learning. The goal of this study is to develop a nested deep hedging method. That is, we develop a fully-deep approach of deep hedging in which the hedging instruments are also priced by deep neural networks that are aware of frictions. However, since the prices of hedging instruments have to be calculated under many different conditions, the entire learning process can be computationally intractable. To overcome this problem, we propose an efficient learning method for nested deep hedging. Our method consists of three techniques to circumvent computational intractability, each of which reduces redundant computations during training. We show through experiments that the Black-Scholes pricing of hedge instruments can admit significant arbitrage opportunities, which are not observed when the pricing is performed by deep hedging. We also demonstrate that our proposed method successfully reduces the hedging risks compared to a baseline method that does not use options as hedging instruments.