This paper describes two versions of a novel approach to developing binary classifiers, based on two evolutionary computation paradigms: cellular programming and genetic programming. Such an approach achieves high computation efficiency both during evolution and at runtime. Evolution speed is optimized by allowing multiple solutions to be computed in parallel. Runtime performance is optimized explicitly using parallel computation in the case of cellular programming or implicitly taking advantage of the intrinsic parallelism of bitwise operators on standard sequential architectures in the case of genetic programming. The approach was tested on a digit recognition problem and compared with a reference classifier
This thesis argues that natural complex systems can provide an inspiring example for creating softwa...
The application of multi-objective evolutionary computation techniques to the genetic programming of...
Abstract—Evolutionary computational techniques have had limited capabilities in solving large-scale ...
This paper describes two vetsions of a novel apptoach to developing binary classifiers, based on two...
Evolutionary algorithms have been gaining increased attention the past few years because of their ve...
This paper considers the need to re-train a multiclass classifier that has initially been evolved us...
Genetic programming (GP) is a machine learning technique that is based on the evolution of computer ...
Lecture #1: From Evolution Theory to Evolutionary Computation. Evolutionary computation is a subfiel...
This paper presents a brief overview of the field of evolutionary computation. Three major research ...
The purpose of this paper is to demonstrate the ability of a genetic programming (GP) algorithm to e...
This thesis deals with evolutionary design of image classifier with help of genetic programming, spe...
Genetic algorithms are founded upon the principle of evolution, i.e., survival of the fittest. Hence...
Genetic algorithms are search or classification algorithms based on natural models. They present a h...
Genetic algorithms are modern algorithms intended to solve optimization problems. Inspiration origin...
This paper discusses the Genetic Rule and Classifier Construction Environment (GRaCCE), which is an ...
This thesis argues that natural complex systems can provide an inspiring example for creating softwa...
The application of multi-objective evolutionary computation techniques to the genetic programming of...
Abstract—Evolutionary computational techniques have had limited capabilities in solving large-scale ...
This paper describes two vetsions of a novel apptoach to developing binary classifiers, based on two...
Evolutionary algorithms have been gaining increased attention the past few years because of their ve...
This paper considers the need to re-train a multiclass classifier that has initially been evolved us...
Genetic programming (GP) is a machine learning technique that is based on the evolution of computer ...
Lecture #1: From Evolution Theory to Evolutionary Computation. Evolutionary computation is a subfiel...
This paper presents a brief overview of the field of evolutionary computation. Three major research ...
The purpose of this paper is to demonstrate the ability of a genetic programming (GP) algorithm to e...
This thesis deals with evolutionary design of image classifier with help of genetic programming, spe...
Genetic algorithms are founded upon the principle of evolution, i.e., survival of the fittest. Hence...
Genetic algorithms are search or classification algorithms based on natural models. They present a h...
Genetic algorithms are modern algorithms intended to solve optimization problems. Inspiration origin...
This paper discusses the Genetic Rule and Classifier Construction Environment (GRaCCE), which is an ...
This thesis argues that natural complex systems can provide an inspiring example for creating softwa...
The application of multi-objective evolutionary computation techniques to the genetic programming of...
Abstract—Evolutionary computational techniques have had limited capabilities in solving large-scale ...