This book aims to develop a general integration theory for stochastic
processes with stationary increments and spectral density. This class of
motions particularly allows the simultaneous study of long-range
dependence and intermittency effects and includes the most relevant
random processes used in modern stochastic analysis. So for instance the
Wiener process, the fractional Brownian motion, the fractional
Riesz-Bessel motion but also Poisson and Levy processes. The so obtained
knowledge on generalised stochastic integration will be used to achieve
regularity results and is applied to parabolic Volterra problems with
random noise as well as to the problem of anomalous diffusion with
stochastic disturbance along the boundary.