This paper studies the expressive power of artificial neural networks with rectified linear units. In order to study them as a model of real-valued computation, we introduce the concept of Max-Affine Arithmetic Programs and show equivalence between them and neural networks concerning natural complexity measures. We then use this result to show that two fundamental combinatorial optimization problems can be solved with polynomial-size neural networks. First, we show that for any undirected graph with n nodes, there is a neural network (with fixed weights and biases) of size O(n3) that takes the edge weights as input and computes the value of a minimum spanning tree of the graph. Second, we show that for any directed graph with n nodes and m ...
In this paper we describe two neural network based algorithms for the Maximum Clique Problem. The de...
In this paper, we study the problem of maximizing an objective function over the discrete set {−1, 1...
The computational power of neural networks depends on properties of the real numbers used as weights...
This paper studies the expressive power of artificial neural networks with rectified linear units. I...
In this paper, two new neural network models for solving the maximum flow problem are presented. The...
ABSTRACT. This paper presents new algorithms for the maximum flow problem, the Hitchcock transportat...
AbstractThis paper presents an optimization technique for solving a maximum flow problem arising in ...
AbstractMost primal minimum cost network flow (MCNF) algorithms can be seen as variants on cancellin...
AbstractThis paper deals with a neural network model in which each neuron performs a threshold logic...
This paper deals with a neural network model in which each neuron performs a threshold logic functio...
Most primal minimum cost network flow (MCNF) algorithms can be seen as variants on cancelling negati...
In this paper, a new problem on a directed network is presented. Let D be a feasible network such...
Abstract Maximum adjacency (MA) ordering has effectively been applied to graph connectivity problems...
The aim of this chapter is to present an overview of the main results for a well-known optimization ...
Abstract. It is shown that high-order feedforward neural nets of constant depth with piecewise-polyn...
In this paper we describe two neural network based algorithms for the Maximum Clique Problem. The de...
In this paper, we study the problem of maximizing an objective function over the discrete set {−1, 1...
The computational power of neural networks depends on properties of the real numbers used as weights...
This paper studies the expressive power of artificial neural networks with rectified linear units. I...
In this paper, two new neural network models for solving the maximum flow problem are presented. The...
ABSTRACT. This paper presents new algorithms for the maximum flow problem, the Hitchcock transportat...
AbstractThis paper presents an optimization technique for solving a maximum flow problem arising in ...
AbstractMost primal minimum cost network flow (MCNF) algorithms can be seen as variants on cancellin...
AbstractThis paper deals with a neural network model in which each neuron performs a threshold logic...
This paper deals with a neural network model in which each neuron performs a threshold logic functio...
Most primal minimum cost network flow (MCNF) algorithms can be seen as variants on cancelling negati...
In this paper, a new problem on a directed network is presented. Let D be a feasible network such...
Abstract Maximum adjacency (MA) ordering has effectively been applied to graph connectivity problems...
The aim of this chapter is to present an overview of the main results for a well-known optimization ...
Abstract. It is shown that high-order feedforward neural nets of constant depth with piecewise-polyn...
In this paper we describe two neural network based algorithms for the Maximum Clique Problem. The de...
In this paper, we study the problem of maximizing an objective function over the discrete set {−1, 1...
The computational power of neural networks depends on properties of the real numbers used as weights...