Considering Poisson random measures as the driving sources for stochastic (partial) differential equations allows us to incorporate jumps and to model sudden, unexpected phenomena. By using such equations the present book introduces a new method for modeling the states of complex systems perturbed b
Vector Integration and Stochastic Integration in Banach Spaces
β Scribed by Nicolae Dinculeanu(auth.)
- Year
- 2000
- Tongue
- English
- Leaves
- 435
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
A breakthrough approach to the theory and applications of stochastic integration The theory of stochastic integration has become an intensely studied topic in recent years, owing to its extraordinarily successful application to financial mathematics, stochastic differential equations, and more. This book features a new measure theoretic approach to stochastic integration, opening up the field for researchers in measure and integration theory, functional analysis, probability theory, and stochastic processes. World-famous expert on vector and stochastic integration in Banach spaces Nicolae Dinculeanu compiles and consolidates information from disparate journal articles-including his own results-presenting a comprehensive, up-to-date treatment of the theory in two major parts. He first develops a general integration theory, discussing vector integration with respect to measures with finite semivariation, then applies the theory to stochastic integration in Banach spaces. Vector Integration and Stochastic Integration in Banach Spaces goes far beyond the typical treatment of the scalar case given in other books on the subject. Along with such applications of the vector integration as the Reisz representation theorem and the Stieltjes integral for functions of one or two variables with finite semivariation, it explores the emergence of new classes of summable processes that make applications possible, including square integrable martingales in Hilbert spaces and processes with integrable variation or integrable semivariation in Banach spaces. Numerous references to existing results supplement this exciting, breakthrough work.Content:
Chapter 1 Vector Integration (pages 1β121):
Chapter 2 The Stochastic Integral (pages 123β180):
Chapter 3 Martingales (pages 181β197):
Chapter 4 Processes with Finite Variation (pages 199β242):
Chapter 5 Processes with Finite Semivariation (pages 243β288):
Chapter 6 The Ito Formula (pages 289β320):
Chapter 7 Stochastic Integration in the Plane (pages 321β341):
Chapter 8 Two?Parameter Martingales (pages 343β361):
Chapter 9 Two?Parameter Processes with Finite Variation (pages 363β401):
Chapter 10 Two?Parameter Processes with Finite Semivariation (pages 403β412):
π SIMILAR VOLUMES
<p>Considering Poisson random measures as the driving sources for stochastic (partial) differential equations allows us to incorporate jumps and to model sudden, unexpected phenomena. By using such equations the present book introduces a new method for modeling the states of complex systems perturbe