Focusing on continuous-time stochastic processes, the book rigorously explores Markov processes, martingales, Brownian motion, and the Poisson process. It delves into stochastic integration for continuous semimartingales and discusses stochastic differential equations, emphasizing solvability and uniqueness. With practical examples throughout, it serves as a comprehensive resource for students in mathematics, finance, and related fields, and is designed for courses spanning two semesters. This text builds on foundational concepts introduced in the previous volume on probability theory.
Andrea Pascucci Books


Focusing on a modern approach to probability theory grounded in measure theory, this book serves as a rigorous introduction for advanced students in mathematics, physics, or natural sciences. It covers essential topics such as measures and probability spaces, random variables, sequences of random variables, and expectation. Designed for those with a background in multidimensional calculus, it includes practical solved exercises to reinforce learning. Originating from courses at the University of Bologna, it aims to lay the groundwork for further studies in stochastic processes and statistical inference.