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Deep Arbitrage-Free Learning in a Generalized HJM...
Journal article

Deep Arbitrage-Free Learning in a Generalized HJM Framework via Arbitrage-Regularization

Abstract

A regularization approach to model selection, within a generalized HJM framework, is introduced, which learns the closest arbitrage-free model to a prespecified factor model. This optimization problem is represented as the limit of a one-parameter family of computationally tractable penalized model selection tasks. General theoretical results are derived and then specialized to affine term-structure models where new types of arbitrage-free machine learning models for the forward-rate curve are estimated numerically and compared to classical short-rate and the dynamic Nelson-Siegel factor models.

Authors

Kratsios A; Hyndman C

Journal

Risks, Vol. 8, No. 2,

Publisher

MDPI

Publication Date

June 1, 2020

DOI

10.3390/risks8020040

ISSN

2227-9091

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