Deep Joint Learning valuation of Bermudan Swaptions

This paper addresses the problem of pricing involved financial derivatives by means of advanced of deep learning techniques. More precisely, we smartly combine several sophisticated neural network-based concepts like differential machine learning, Monte Carlo simulation-like training samples and joi...

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Hauptverfasser: Casanova, Francisco Gómez, Leitao, Álvaro, Contreras, Fernando de Lope, Vázquez, Carlos
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Leitao, Álvaro
Contreras, Fernando de Lope
Vázquez, Carlos
description This paper addresses the problem of pricing involved financial derivatives by means of advanced of deep learning techniques. More precisely, we smartly combine several sophisticated neural network-based concepts like differential machine learning, Monte Carlo simulation-like training samples and joint learning to come up with an efficient numerical solution. The application of the latter development represents a novelty in the context of computational finance. We also propose a novel design of interdependent neural networks to price early-exercise products, in this case, Bermudan swaptions. The improvements in efficiency and accuracy provided by the here proposed approach is widely illustrated throughout a range of numerical experiments. Moreover, this novel methodology can be extended to the pricing of other financial derivatives.
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Quantitative Finance - Computational Finance
title Deep Joint Learning valuation of Bermudan Swaptions
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