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Main Authors: Glasserman, Paul, Karmarkar, Siddharth Hemant
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2512.05301
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author Glasserman, Paul
Karmarkar, Siddharth Hemant
author_facet Glasserman, Paul
Karmarkar, Siddharth Hemant
contents Differential ML (Huge and Savine 2020) is a technique for training neural networks to provide fast approximations to complex simulation-based models for derivatives pricing and risk management. It uses price sensitivities calculated through pathwise adjoint differentiation to reduce pricing and hedging errors. However, for options with discontinuous payoffs, such as digital or barrier options, the pathwise sensitivities are biased, and incorporating them into the loss function can magnify errors. We consider alternative methods for estimating sensitivities and find that they can substantially reduce test errors in prices and in their sensitivities. Using differential labels calculated through the likelihood ratio method expands the scope of Differential ML to discontinuous payoffs. A hybrid method incorporates gamma estimates as well as delta estimates, providing further regularization.
format Preprint
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institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Differential ML with a Difference
Glasserman, Paul
Karmarkar, Siddharth Hemant
Pricing of Securities
Differential ML (Huge and Savine 2020) is a technique for training neural networks to provide fast approximations to complex simulation-based models for derivatives pricing and risk management. It uses price sensitivities calculated through pathwise adjoint differentiation to reduce pricing and hedging errors. However, for options with discontinuous payoffs, such as digital or barrier options, the pathwise sensitivities are biased, and incorporating them into the loss function can magnify errors. We consider alternative methods for estimating sensitivities and find that they can substantially reduce test errors in prices and in their sensitivities. Using differential labels calculated through the likelihood ratio method expands the scope of Differential ML to discontinuous payoffs. A hybrid method incorporates gamma estimates as well as delta estimates, providing further regularization.
title Differential ML with a Difference
topic Pricing of Securities
url https://arxiv.org/abs/2512.05301