Positive Neural Networks in Discrete Time Implement Monotone-Regular Behaviors

02/21/2015
by   Tom J. Ameloot, et al.
0

We study the expressive power of positive neural networks. The model uses positive connection weights and multiple input neurons. Different behaviors can be expressed by varying the connection weights. We show that in discrete time, and in absence of noise, the class of positive neural networks captures the so-called monotone-regular behaviors, that are based on regular languages. A finer picture emerges if one takes into account the delay by which a monotone-regular behavior is implemented. Each monotone-regular behavior can be implemented by a positive neural network with a delay of one time unit. Some monotone-regular behaviors can be implemented with zero delay. And, interestingly, some simple monotone-regular behaviors can not be implemented with zero delay.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/12/2022

Size and depth of monotone neural networks: interpolation and approximation

Monotone functions and data sets arise in a variety of applications. We ...
research
11/20/2017

XSAT of Linear CNF Formulas

Open questions with respect to the computational complexity of linear CN...
research
01/06/2021

Positive first-order logic on words

We study FO+, a fragment of first-order logic on finite words, where mon...
research
02/02/2021

Stronger Separation of Analog Neuron Hierarchy by Deterministic Context-Free Languages

We analyze the computational power of discrete-time recurrent neural net...
research
05/10/2018

Monotone Learning with Rectified Wire Networks

We introduce a new neural network model, together with a tractable and m...
research
05/10/2018

Monotone Learning with Rectifier Networks

We introduce a new neural network model, together with a tractable and m...
research
06/20/2012

On the serial connection of the regular asynchronous systems

The asynchronous systems f are multi-valued functions, representing the ...

Please sign up or login with your details

Forgot password? Click here to reset