Individuals from Pittsburgh rule-based classifiers represent a complete solution to the classification problem and each individual is a variable-length set of rules. Therefore, these systems usually demand a high level of computational resources and run-time, which increases as the complexity and the size of the data sets. It is known that this computational cost is mainly due to the recurring evaluation process of the rules and the individuals as rule sets. In this paper we propose a parallel evaluation model of rules and rule sets on GPUs based on the NVIDIA CUDA programming model which significantly allows reducing the run-time and speeding up the algorithm. The results obtained from the experimental study support the great effi...
Through this textbook (written in Spanish), the author introduces the GPU as a parallel computer tha...
The acceleration of P system simulations is required increasingly, since they are at the core of mo...
We present a multi-purpose genetic algorithm, designed and implemented with GPGPU / CUDA parallel co...
Abstract—XCS – the eXtended Classifier System – combines an evolutionary algorithm with reinforcemen...
XCS - the extended Classifier System - combines an evolutionary algorithm with reinforcement learnin...
This paper propose a multithreaded Genetic Programming classi cation evaluation model using NVIDIA...
This paper proposes a new approach to produce classification rules based on evolutionary computation...
Multiple instance learning is a challenging task in supervised learning and data mining. How- ever,...
We examine the problem of optimizing classification tree evaluation for on-line and real-time appli-...
The computing power of current Graphical Processing Units (GPUs) has increased rapidly over the year...
In the paper we present the parallel implementation of the alpha-beta algorithm running on the graph...
During the past decades, High-Performance Computing (HPC) has been widely used in various industries...
Graphics Processing Units (GPUs) are a fast evolving architecture. Over the last decade their progra...
The characteristics of graphics processing units (GPUs), especially their parallel execution capabil...
Computers almost always contain one or more central processing units (CPU), each of which processes ...
Through this textbook (written in Spanish), the author introduces the GPU as a parallel computer tha...
The acceleration of P system simulations is required increasingly, since they are at the core of mo...
We present a multi-purpose genetic algorithm, designed and implemented with GPGPU / CUDA parallel co...
Abstract—XCS – the eXtended Classifier System – combines an evolutionary algorithm with reinforcemen...
XCS - the extended Classifier System - combines an evolutionary algorithm with reinforcement learnin...
This paper propose a multithreaded Genetic Programming classi cation evaluation model using NVIDIA...
This paper proposes a new approach to produce classification rules based on evolutionary computation...
Multiple instance learning is a challenging task in supervised learning and data mining. How- ever,...
We examine the problem of optimizing classification tree evaluation for on-line and real-time appli-...
The computing power of current Graphical Processing Units (GPUs) has increased rapidly over the year...
In the paper we present the parallel implementation of the alpha-beta algorithm running on the graph...
During the past decades, High-Performance Computing (HPC) has been widely used in various industries...
Graphics Processing Units (GPUs) are a fast evolving architecture. Over the last decade their progra...
The characteristics of graphics processing units (GPUs), especially their parallel execution capabil...
Computers almost always contain one or more central processing units (CPU), each of which processes ...
Through this textbook (written in Spanish), the author introduces the GPU as a parallel computer tha...
The acceleration of P system simulations is required increasingly, since they are at the core of mo...
We present a multi-purpose genetic algorithm, designed and implemented with GPGPU / CUDA parallel co...