Dinesh Valluri

1paper

1 Paper

LGSep 7, 2021
On the space of coefficients of a Feed Forward Neural Network

Dinesh Valluri, Rory Campbell

We define and establish the conditions for `equivalent neural networks' - neural networks with different weights, biases, and threshold functions that result in the same associated function. We prove that given a neural network $\mathcal{N}$ with piece-wise linear activation, the space of coefficients describing all equivalent neural networks is given by a semialgebraic set. This result is obtained by studying different representations of a given piece-wise linear function using the Tarski-Seidenberg theorem.