To select an adequate coding is one of the main problems in applications based on Evolutionary Algorithms. Many codings have been proposed to represent the search space for obtaining decision rules. A suitable representation of the individuals of the genetic population can reduce the search space, so that the learning process is accelerated by decreasing the number of necessary generations to complete the task. In this sense, natural coding achieves such reduction and improves the results obtained by other codings. This paper justifies the use of natural coding by comparing it with hybrid coding that joins well-known binary and real representations. We have tested both codings on a heterogeneous subset of databases from the UCI Machine Lear...
The usefulness of the genetic algorithm (GA) as judged by numerous applications in engineering and o...
This paper describes a new approach, HIDER (HIerarchical DEcision Rules), for learning rules in con...
This paper characterizes the inherent power of evolutionary algorithms. This power depends on the co...
Some of the most influential factors in the quality of the solutions found by an evolutionary algor...
To select an adequate coding is one of the main problems in applications based on Evolutionary Algor...
Software Project Simulator and Evolutionary Computation are combined to generate decision rules. The...
This paper describes a new approach, HIerarchical DEcision Rules (HIDER), for learning generalizabl...
This paper describes an approach based on evolutionary algorithms, hierarchical decision rules (HID...
We present a new classification system based on Evolutionary Algorithm (EA), OBLIC. This tool is an ...
Evolutionary Algorithms (EAs) are populationbased, stochastic search algorithms that mimic natural e...
Congress on Evolutionary Computation. Washington, DC, 6-9 July 1999.One of the major problems relate...
Data mining is an important process, with applications found in many business, science and industria...
Evolutionary Computation (EC) approaches are inspired by nature and solve optimization problems in a...
This paper studies a family of redundant binary representations NNg(l, k), which are based on the ma...
In data mining, we emphasize the need for learning from huge, incomplete, and imperfect data sets. T...
The usefulness of the genetic algorithm (GA) as judged by numerous applications in engineering and o...
This paper describes a new approach, HIDER (HIerarchical DEcision Rules), for learning rules in con...
This paper characterizes the inherent power of evolutionary algorithms. This power depends on the co...
Some of the most influential factors in the quality of the solutions found by an evolutionary algor...
To select an adequate coding is one of the main problems in applications based on Evolutionary Algor...
Software Project Simulator and Evolutionary Computation are combined to generate decision rules. The...
This paper describes a new approach, HIerarchical DEcision Rules (HIDER), for learning generalizabl...
This paper describes an approach based on evolutionary algorithms, hierarchical decision rules (HID...
We present a new classification system based on Evolutionary Algorithm (EA), OBLIC. This tool is an ...
Evolutionary Algorithms (EAs) are populationbased, stochastic search algorithms that mimic natural e...
Congress on Evolutionary Computation. Washington, DC, 6-9 July 1999.One of the major problems relate...
Data mining is an important process, with applications found in many business, science and industria...
Evolutionary Computation (EC) approaches are inspired by nature and solve optimization problems in a...
This paper studies a family of redundant binary representations NNg(l, k), which are based on the ma...
In data mining, we emphasize the need for learning from huge, incomplete, and imperfect data sets. T...
The usefulness of the genetic algorithm (GA) as judged by numerous applications in engineering and o...
This paper describes a new approach, HIDER (HIerarchical DEcision Rules), for learning rules in con...
This paper characterizes the inherent power of evolutionary algorithms. This power depends on the co...