Multiple instance learning is a challenging task in supervised learning and data mining. How- ever, algorithm performance becomes slow when learning from large-scale and high-dimensional data sets. Graphics processing units (GPUs) are being used for reducing computing time of algorithms. This paper presents an implementation of the G3P-MI algorithm on GPUs for solving multiple instance problems using classification rules. The GPU model proposed is distributable to multiple GPUs, seeking for its scal- ability across large-scale and high-dimensional data sets. The proposal is compared to the multi-threaded CPU algorithm with SSE parallelism over a series of data sets. Experimental results report that the com- putation time can be signi...
Big Data has been a catalyst force for the Machine Learning (ML) area, forcing us to rethink existin...
On-line Machine Learning using Stochastic Gradient Descent is an inherently sequential computation. ...
There is an increased interest in building machine learning frameworks with advanced algebraic capab...
This paper propose a multithreaded Genetic Programming classi cation evaluation model using NVIDIA...
Individuals from Pittsburgh rule-based classifiers represent a complete solution to the classificat...
CAIM(Class-Attribute InterdependenceMaximization) is one of the stateof- the-art algorithms for dis...
Through the algorthmic design patterns of data parallelism and task parallelism, the graphics proces...
Abstract—XCS – the eXtended Classifier System – combines an evolutionary algorithm with reinforcemen...
Graph Pattern Mining (GPM) extracts higher-order information in a large graph by searching for small...
XCS - the extended Classifier System - combines an evolutionary algorithm with reinforcement learnin...
Machine learning (ML) is now omnipresent in all spheres of life. The use of deep neural networks (DN...
We present a multi-purpose genetic algorithm, designed and implemented with GPGPU / CUDA parallel co...
Deep learning models are trained on servers with many GPUs, andtraining must scale with the number o...
Using modern Graphic Processing Units (GPUs) becomes very useful for computing complex and time cons...
Neural networks stand out from artificial intelligence because they can complete challenging tasks, ...
Big Data has been a catalyst force for the Machine Learning (ML) area, forcing us to rethink existin...
On-line Machine Learning using Stochastic Gradient Descent is an inherently sequential computation. ...
There is an increased interest in building machine learning frameworks with advanced algebraic capab...
This paper propose a multithreaded Genetic Programming classi cation evaluation model using NVIDIA...
Individuals from Pittsburgh rule-based classifiers represent a complete solution to the classificat...
CAIM(Class-Attribute InterdependenceMaximization) is one of the stateof- the-art algorithms for dis...
Through the algorthmic design patterns of data parallelism and task parallelism, the graphics proces...
Abstract—XCS – the eXtended Classifier System – combines an evolutionary algorithm with reinforcemen...
Graph Pattern Mining (GPM) extracts higher-order information in a large graph by searching for small...
XCS - the extended Classifier System - combines an evolutionary algorithm with reinforcement learnin...
Machine learning (ML) is now omnipresent in all spheres of life. The use of deep neural networks (DN...
We present a multi-purpose genetic algorithm, designed and implemented with GPGPU / CUDA parallel co...
Deep learning models are trained on servers with many GPUs, andtraining must scale with the number o...
Using modern Graphic Processing Units (GPUs) becomes very useful for computing complex and time cons...
Neural networks stand out from artificial intelligence because they can complete challenging tasks, ...
Big Data has been a catalyst force for the Machine Learning (ML) area, forcing us to rethink existin...
On-line Machine Learning using Stochastic Gradient Descent is an inherently sequential computation. ...
There is an increased interest in building machine learning frameworks with advanced algebraic capab...