Seminar

Quantitative Gaussian approximation of randomly initialized deep neural networks

Department's Seminar
14 October 2022
Start time 
2:00 pm
PovoZero - Via Sommarive 14, Povo (Trento)
Seminar Room "-1" (Povo 0) and Zoom (please contact dept.math@unitn.it to get the code)
Target audience: 
University community
UniTrento students
Attendance: 
Free
Online
Registration email: 
Contact person: 
Prof. Gian Paolo Leonardi
Contact details: 
Università degli Studi Trento 38123 Povo (TN) - Staff Dipartimento di Matematica
+39 04 61/281508-1625-1701-1980-3898
Speaker: 
Dario Trevisan (Università di Pisa)

Abstract: Given any deep fully connected neural network, initialized with random Gaussian parameters, we bound from above the quadratic Wasserstein distance between its output distribution and a suitable Gaussian process. Our explicit inequalities indicate how the hidden and output layers sizes affect the Gaussian behaviour of the network and quantitatively recover the distributional convergence results in the wide limit, i.e., if all the hidden layers sizes become large. Joint work with with A. Basteri (arXiv:2203.07379).