Probabilistic Spiking Neuronal Nets von Antonio Galves | Neuromathematics for the Computer Era | ISBN 9783031684081

Probabilistic Spiking Neuronal Nets

Neuromathematics for the Computer Era

von Antonio Galves, Eva Löcherbach und Christophe Pouzat
Mitwirkende
Autor / AutorinAntonio Galves
Autor / AutorinEva Löcherbach
Autor / AutorinChristophe Pouzat
Buchcover Probabilistic Spiking Neuronal Nets | Antonio Galves | EAN 9783031684081 | ISBN 3-031-68408-7 | ISBN 978-3-031-68408-1

“The monograph is exclusively professionally written. It is a pleasure for me to have this magnificent book in my library!” (Nikolay Kyurkchiev, zbMATH 1556.92002, 2025)

Probabilistic Spiking Neuronal Nets

Neuromathematics for the Computer Era

von Antonio Galves, Eva Löcherbach und Christophe Pouzat
Mitwirkende
Autor / AutorinAntonio Galves
Autor / AutorinEva Löcherbach
Autor / AutorinChristophe Pouzat

This book provides a self-contained introduction to a new class of stochastic models for systems of spiking neurons. These systems have a large number of interacting components, each one evolving as a stochastic process with a memory of variable length. Several mathematical tools are put to use, such as Markov chains, stochastic chains having memory of variable length, point processes having stochastic intensity, Hawkes processes, random graphs, mean field limits, perfect sampling algorithms, the Context algorithm, and statistical model selection.

The book’s focus on mathematically tractable objects distinguishes it from other texts on theoretical neuroscience. The biological complexity of neurons is not ignored, but reduced to some of its main features, such as the intrinsic randomness of neuronal dynamics. This reduction in complexity aims at explaining and reproducing statistical regularities and collective phenomena that are observed in experimental data, an approach that leads to mathematically rigorous results.

With an emphasis on a constructive and algorithmic point of view, this book is directed towards mathematicians interested in learning about stochastic network models and their neurobiological underpinning, and neuroscientists interested in learning how to build and prove results with mathematical models that relate to actual experimental settings.