An artificial neural network (ANN) is commonly modeled by a threshold circuit, a network of interconnected processing units called linear threshold gates. The depth of a network represents the number of unit delays or the time for parallel computation. The SIze of a circuit is the number of gates and measures the amount of hardware. It was known that traditional logic circuits consisting of only unbounded fan-in AND, OR, NOT gates would require at least O(log n/log log n) depth to compute common arithmetic functions such as the product or the quotient of two n-bit numbers, unless we allow the size (and fan-in) to increase exponentially (in n). We show in this paper that ANNs can be much more powerful than traditional logic circuits. In part...
The paper overviews results dealing with the approximation capabilities of neural networks, and boun...
AbstractThis paper deals with a neural network model in which each neuron performs a threshold logic...
This paper discusses some of the limitations of hardware implementations of neural networks. The aut...
An artificial neural network (ANN) is commonly modeled by a threshold circuit, a network of intercon...
Multiplication is one of the most fundamental operations in arithmetic and algebraic computations. I...
A neuron is modeled as a linear threshold gate, and the network architecture considered is the layer...
A neuron is modeled as a linear threshold gate, and the network architecture considered is the layer...
The authors introduce a restricted model of a neuron which is more practical as a model of computati...
The authors introduce a restricted model of a neuron which is more practical as a model of computati...
Abstract. It is shown that high-order feedforward neural nets of constant depth with piecewise-polyn...
Linear threshold elements (LTEs) are the basic processing elements in artificial neural networks. An...
Linear threshold elements (LTEs) are the basic processing elements in artificial neural networks. An...
) Wolfgang Maass* Institute for Theoretical Computer Science Technische Universitaet Graz Klosterwie...
This paper deals with a neural network model in which each neuron performs a threshold logic functio...
Division is a fundamental problem for arithmetic and algebraic computation. This paper describes Boo...
The paper overviews results dealing with the approximation capabilities of neural networks, and boun...
AbstractThis paper deals with a neural network model in which each neuron performs a threshold logic...
This paper discusses some of the limitations of hardware implementations of neural networks. The aut...
An artificial neural network (ANN) is commonly modeled by a threshold circuit, a network of intercon...
Multiplication is one of the most fundamental operations in arithmetic and algebraic computations. I...
A neuron is modeled as a linear threshold gate, and the network architecture considered is the layer...
A neuron is modeled as a linear threshold gate, and the network architecture considered is the layer...
The authors introduce a restricted model of a neuron which is more practical as a model of computati...
The authors introduce a restricted model of a neuron which is more practical as a model of computati...
Abstract. It is shown that high-order feedforward neural nets of constant depth with piecewise-polyn...
Linear threshold elements (LTEs) are the basic processing elements in artificial neural networks. An...
Linear threshold elements (LTEs) are the basic processing elements in artificial neural networks. An...
) Wolfgang Maass* Institute for Theoretical Computer Science Technische Universitaet Graz Klosterwie...
This paper deals with a neural network model in which each neuron performs a threshold logic functio...
Division is a fundamental problem for arithmetic and algebraic computation. This paper describes Boo...
The paper overviews results dealing with the approximation capabilities of neural networks, and boun...
AbstractThis paper deals with a neural network model in which each neuron performs a threshold logic...
This paper discusses some of the limitations of hardware implementations of neural networks. The aut...