An appropriate coverage of the subjects contained in the five parts of this book would need several monographs. We hope that the global treatment presented here may emphasize some of their deep interactions. As far as possible we present self-contained proofs; we have also tried to produce a book that could be used in a graduate course.
作者簡介
暫缺《隨機分析》作者簡介
圖書目錄
Part I. Differential Calculus on Gaussian Probability Spaces Chapter I Gaussian Probability Spaces Chapter II Gross-Stroock Sobolev Spaces over a Gaussian Probability Space Chapter III Smoothness of Laws Part II. Quasi-Sure Analysis Chapter IV Foundations of Quasi-Sure Analysis: Hierarchy of Capacities and Precise Gaussian Probability Spaces Chapter V Differential Geometry on a Precise Gaussian Probability Space Part III. Stochastic Integrals Chapter VI White Noise Stochastic Integrals as Divergences Chapter VII Ito‘s Theory of Stochastic Integration Part IV. Stochastic Differential Equations Chapter VIII From Ordinary Differential Equations to Stochastic Flow: The Transfer Principle Chapter IX Elliptic Estimates Through Stochastic Analysis Part V. Stochastic Analysis in Infinite Dimensions Chapter X Stochastic Analysis on Wiener Spaces Chapter XI Path Spaces and Their Tangent Spaces Bibliography Index Index of Notations