In this paper, we study the problem of maximizing an objective function over the discrete set {−1, 1} <SUP>n</SUP> using a neural network. It is now known that a binary (two-state) Hopfield network can take, in the worst case, an exponential number of time steps to find even a local maximum of the objective function. In this paper, we carry this argument further by studying theradius of attraction of the global maxima of the objective function. If a binary neural network is used, in general there is no guarantee that a global maximum has a nonzero radius of attraction. In other words, even if the optimization process is started off with the neural network in an initial state that isadjacent to the global maximum, the resulting trajectory of...
Neural networks (NNs) have been experimentally shown to be quite effective in many applications. Thi...
[[abstract]]© 1994 Institute of Electrical and Electronics Engineers-MAXNET is a common competitive ...
Neural networks -- specifically, deep neural networks -- are, at present, the most effective machine...
In this paper, we study the problem of minimizing a multilinear objective function over the discrete...
The Hopfield network is a standard tool for maximizing aquadratic objective function over the discre...
The paper will show that in order to obtain minimum size neural networks (i.e., size-optimal) for im...
We show that neural networks with three-times continuously differentiable activation functions are c...
Optimization plays a significant role in almost every field of applied sciences (e.g., signal proces...
This paper starts by overviewing results dealing with the approximation capabilities of neural netwo...
Several ways of relating the concept of error-correcting codes to the concept of neural networks are...
We demonstrate the use of a continuous Hopfield neural network as a K-WinnerTake-All (KWTA) network....
We consider the algorithmic problem of finding the optimal weights and biases for a two-layer fully ...
The effectiveness of connectionist models in emulating intelligent behaviour and solving significant...
The efficient coding hypothesis assumes that biological sensory systems use neural codes that are op...
This paper studies the expressive power of artificial neural networks with rectified linear units. I...
Neural networks (NNs) have been experimentally shown to be quite effective in many applications. Thi...
[[abstract]]© 1994 Institute of Electrical and Electronics Engineers-MAXNET is a common competitive ...
Neural networks -- specifically, deep neural networks -- are, at present, the most effective machine...
In this paper, we study the problem of minimizing a multilinear objective function over the discrete...
The Hopfield network is a standard tool for maximizing aquadratic objective function over the discre...
The paper will show that in order to obtain minimum size neural networks (i.e., size-optimal) for im...
We show that neural networks with three-times continuously differentiable activation functions are c...
Optimization plays a significant role in almost every field of applied sciences (e.g., signal proces...
This paper starts by overviewing results dealing with the approximation capabilities of neural netwo...
Several ways of relating the concept of error-correcting codes to the concept of neural networks are...
We demonstrate the use of a continuous Hopfield neural network as a K-WinnerTake-All (KWTA) network....
We consider the algorithmic problem of finding the optimal weights and biases for a two-layer fully ...
The effectiveness of connectionist models in emulating intelligent behaviour and solving significant...
The efficient coding hypothesis assumes that biological sensory systems use neural codes that are op...
This paper studies the expressive power of artificial neural networks with rectified linear units. I...
Neural networks (NNs) have been experimentally shown to be quite effective in many applications. Thi...
[[abstract]]© 1994 Institute of Electrical and Electronics Engineers-MAXNET is a common competitive ...
Neural networks -- specifically, deep neural networks -- are, at present, the most effective machine...