Arbitrage-Free Regularization

10/14/2017
by   Anastasis Kratsios, et al.
0

We introduce a path-dependent geometric framework which generalizes the HJM modeling approach to a wide variety of other asset classes. A machine learning regularization framework is developed with the objective of removing arbitrage opportunities from models within this general framework. The regularization method relies on minimal deformations of a model subject to a path-dependent penalty that detects arbitrage opportunities. We prove that the solution of this regularization problem is independent of the arbitrage-penalty chosen, subject to a fixed information loss functional. In addition to the general properties of the minimal deformation, we also consider several explicit examples. This paper is focused on placing machine learning methods in finance on a sound theoretical basis and the techniques developed to achieve this objective may be of interest in other areas of application.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/27/2009

A Combinatorial Algorithm to Compute Regularization Paths

For a wide variety of regularization methods, algorithms computing the e...
research
12/17/2021

AutoTransfer: Subject Transfer Learning with Censored Representations on Biosignals Data

We provide a regularization framework for subject transfer learning in w...
research
12/21/2021

A General Framework for Machine Learning based Optimization Under Uncertainty

We propose a general framework for machine learning based optimization u...
research
01/11/2020

Prediction with eventual almost sure guarantees

We study the problem of predicting the properties of a probabilistic mod...
research
09/29/2021

Objective-oriented method for uniformation of various directivity representations

Over recent years, numerous attempts were taken to provide efficient met...

Please sign up or login with your details

Forgot password? Click here to reset