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From Nonparametric Regression to Statistical Inference for Non-Ergodic Diffusion Processes

English · Hardback

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This book is about copies-based nonparametric estimation of the drift function in stochastic differential equations (SDEs) driven by Brownian motion, a jump process, or fractional Brownian motion. While the estimators of the drift function in SDEs are classically computed from one long-time observation of the ergodic stationary solution, here the estimation framework which is part of functional data analysis involves multiple copies of the (non-stationary) solution observed over a short-time interval. Two kinds of nonparametric estimators are investigated for SDE models, first presented in the regression framework: the projection least squares estimator and the Nadaraya-Watson estimator. Adaptive procedures are provided for possible applications in statistical learning. Primarily intended for researchers in statistical inference for stochastic processes who are interested in the copies-based observation scheme, the book will also be useful for graduate and PhD students in probability and statistics, thanks to its multiple reminders of the requisite theory, especially the chapter on nonparametric regression.

About the author










Nicolas Marie is an associate professor in the Modal’X department at Paris Nanterre University. He received his PhD in probability in 2012, and his habilitation in statistics and probability in 2019. First, in the rough paths theory framework, he focused on constrained fractional diffusions. Then, since 2017, Nicolas Marie contributes to investigate the copies-based statistical inference for diffusions and fractional diffusions.


Summary

This book is about copies-based nonparametric estimation of the drift function in stochastic differential equations (SDEs) driven by Brownian motion, a jump process, or fractional Brownian motion. While the estimators of the drift function in SDEs are classically computed from one long-time observation of the ergodic stationary solution, here the estimation framework – which is part of functional data analysis – involves multiple copies of the (non-stationary) solution observed over a short-time interval. Two kinds of nonparametric estimators are investigated for SDE models, first presented in the regression framework: the projection least squares estimator and the Nadaraya-Watson estimator. Adaptive procedures are provided for possible applications in statistical learning. Primarily intended for researchers in statistical inference for stochastic processes who are interested in the copies-based observation scheme, the book will also be useful for graduate and PhD students in probability and statistics, thanks to its multiple reminders of the requisite theory, especially the chapter on nonparametric regression.

Product details

Authors Nicolas Marie
Publisher Springer, Berlin
 
Content Book
Product form Hardback
Publication date 19.08.2025
Subject Natural sciences, medicine, IT, technology > Mathematics > Probability theory, stochastic theory, mathematica
 
EAN 9783031956379
ISBN 978-3-0-3195637-9
Pages 184
Illustrations XII, 184 p. 10 illus., 7 illus. in color.
Dimensions (packing) 15.5 x 1.4 x 23.5 cm
Weight (packing) 409 g
 
Series Frontiers in Probability and the Statistical Sciences
Subjects Stochastik, Stochastic Processes, Non-parametric Inference, fractional Brownian motion, stochastic differential equations, Stochastic Modelling in Statistics, model selection, Nonparametric Estimation, Lévy processes, PCO method
 

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