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Statistical Laboratory

We study the geometric properties of random neural networks by investigating the boundary volumes of their excursion sets for different activation functions, as the depth increases. More specifically, we show that, for activations which are not very regular (e.g., the Heaviside step function), the boundary volumes exhibit fractal behavior, with their Hausdorff dimension monotonically increasing with the depth. On the other hand, for activations which are more regular (e.g., ReLU, logistic and tanh), as the depth increases, the expected boundary volumes can either converge to zero, remain constant or diverge exponentially, depending on a single spectral parameter which can be easily computed. Our theoretical results are confirmed in some numerical experiments based on Monte Carlo simulations.

Based on joint works with Simmaco Di Lillo, Michele Salvi and Stefano Vigogna.

Frontpage talks

21
Jan
Cambridge Statistics Clinic

Statistics

Statistics

12
Mar
16:30 - 17:30: Title to be confirmed
Peter Whittle Lecture

12
Mar
16:30 - 17:30: Title to be confirmed
Peter Whittle Lecture

Further information

Time:

30Jan
Jan 30th 2026
14:00 to 15:00

Venue:

MR12, Centre for Mathematical Sciences

Speaker:

Domenico Marinucci (Università di Roma Tor Vergata)

Series:

Statistics