A course on rough paths : with an introduction to regularity structures
Language: English Series: Universitext / edited by Sheldon AxlerPublication details: Springer 2014 SwitzerlandDescription: xiv, 251pISBN:- 9783319083315
- 519.2 F919c
Item type | Current library | Collection | Call number | Status | Date due | Barcode | Item holds | |
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PK Kelkar Library, IIT Kanpur | General Stacks | 519.2 F919c (Browse shelf(Opens below)) | Checked out to MANGALA PRASAD (S2110826600) | 08/07/2025 | A183982 |
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519.2 F914S STOCHASTIC DIFFERENTIAL EQUATIONS AND APPLICATIONS | 519.2 F914S STOCHASTIC DIFFERENTIAL EQUATIONS AND APPLICATIONS | 519.2 F918M MODERN APPROACH TO PROBABILITY THEORY | 519.2 F919c A course on rough paths | 519.2 F928M FRONTIERS IN PROBABILITY AND STATISTICS | 519.2 F959m MEASUREMENT ERROR MODELS | 519.2 G13 THE ASYMPTOTIC THEORY OF EXTREME ORDER STATISTICS |
Lyons’ rough path analysis has provided new insights in the analysis of stochastic differential equations and stochastic partial differential equations, such as the KPZ equation. This textbook presents the first thorough and easily accessible introduction to rough path analysis.
When applied to stochastic systems, rough path analysis provides a means to construct a pathwise solution theory which, in many respects, behaves much like the theory of deterministic differential equations and provides a clean break between analytical and probabilistic arguments. It provides a toolbox allowing to recover many classical results without using specific probabilistic properties such as predictability or the martingale property. The study of stochastic PDEs has recently led to a significant extension – the theory of regularity structures – and the last parts of this book are devoted to a gentle introduction.
Most of this course is written as an essentially self-contained textbook, with an emphasis on ideas and short arguments, rather than pushing for the strongest possible statements. A typical reader will have been exposed to upper undergraduate analysis courses and has some interest in stochastic analysis. For a large part of the text, little more than Itô integration against Brownian motion is required as background.
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