Continuous optimization seems to be the ubiquitous formulation of an impressive number of different problems in science and engineering. In this chapter, a unified framework for problem solving is proposed in the continuum setting which is based on the notion of action, a sort of continuous algorithm running on an abstract machine, referred to as the deterministic terminal attractor machine (DTAM), somehow related to discrete computational counterparts. A number of examples are given which illustrate how continuous algorithms can be devised. The proposed general computational scheme incorporates most interesting supervised and unsupervised learning schemes in artificial neural networks as well as the problem solving approach based on Ho...
The recurrent neural network approach to combinatorial optimization has during the last decade evolv...
AbstractAutomated problem solving is viewed typically as the allocation of computational resources t...
AbstractWe prove computability and complexity results for an original model of computation called th...
Continuous optimization seems to be the ubiquitous formulation of an impressive number of different ...
While the design of algorithms is traditionally a discrete endeavour, in recent years many advances ...
Continuous complexity theory gets its name from the model of mathematical computation on which it is...
Abstract: Contemporary computer theory is governed by the discretization of continuous problems. Cla...
Our model of computation (theoretical machine) was designed for the analysis of analog Fourier optic...
This paper argues that the foundation of expertise and skillful behavior is knowledge represented as...
We review the approaches for solving combinatorial optimization problems by chaotic dynamics. We men...
Dissipative flows model a large variety of physical systems. In this Letter the evolution of such sy...
The importance of the Stability Problem in neurocomputing is discussed, as well as the need for the ...
This dissertation aims to address the dual goals of (1) proposing practical computing devices that m...
Numerous models for supervised and reinforcement learning benefit from combinations of discrete and ...
We prove computability and complexity results for an original model of computation called the contin...
The recurrent neural network approach to combinatorial optimization has during the last decade evolv...
AbstractAutomated problem solving is viewed typically as the allocation of computational resources t...
AbstractWe prove computability and complexity results for an original model of computation called th...
Continuous optimization seems to be the ubiquitous formulation of an impressive number of different ...
While the design of algorithms is traditionally a discrete endeavour, in recent years many advances ...
Continuous complexity theory gets its name from the model of mathematical computation on which it is...
Abstract: Contemporary computer theory is governed by the discretization of continuous problems. Cla...
Our model of computation (theoretical machine) was designed for the analysis of analog Fourier optic...
This paper argues that the foundation of expertise and skillful behavior is knowledge represented as...
We review the approaches for solving combinatorial optimization problems by chaotic dynamics. We men...
Dissipative flows model a large variety of physical systems. In this Letter the evolution of such sy...
The importance of the Stability Problem in neurocomputing is discussed, as well as the need for the ...
This dissertation aims to address the dual goals of (1) proposing practical computing devices that m...
Numerous models for supervised and reinforcement learning benefit from combinations of discrete and ...
We prove computability and complexity results for an original model of computation called the contin...
The recurrent neural network approach to combinatorial optimization has during the last decade evolv...
AbstractAutomated problem solving is viewed typically as the allocation of computational resources t...
AbstractWe prove computability and complexity results for an original model of computation called th...