Stochastic Processes and Calculus
Abstract
By now there exist a number of books describing stochastic integrals and stochastic
calculus in an accessible manner. Such introductory books, however, typically
address an audience having previous knowledge about and interest in one of the
following three fields exclusively: finance, econometrics, or mathematics. The
textbook at hand attempts to provide an introduction into stochastic calculus and
processes for students from each of these fields. Obviously, this can on no account
be an exhaustive treatment. In the next chapter a survey of the topics covered
is given. In particular, the book does neither deal with finance theory nor with
statistical methods from the time series econometrician’s toolkit; it rather provides
a mathematical background for those readers interested in these fields.
The first part of this book is dedicated to discrete-time processes for modeling
temporal dependence in time series. We begin with some basic principles of
stochastics enabling us to define stochastic processes as families of random variables
in general. We discuss models for short memory (so-called ARMA models), for
long memory (fractional integration), and for conditional heteroscedasticity (socalled
ARCH models) in respective chapters. One further chapter is concerned
with the so-called frequency domain or spectral analysis that is often neglected in
introductory books. Here, however, we propose an approach that is not technically
too demanding. Throughout, we restrict ourselves to the consideration of stochastic
properties and interpretation. The statistical issues of parameter estimation, testing,
and model specification are not addressed due to space limitations; instead, we refer
to, e.g., Mills and Markellos (2008), Kirchgässner, Wolters, and Hassler (2013), or
Tsay (2005).