In recent years, deep neural networks (DNNs) have emerged as a powerful technique in many areas of machine learning. Although DNNs have achieved great breakthrough in processing images, video, audio and text, it also has some limitations such as needing a large number of labeled data for training and having a large number of parameters. Ensemble learning, meanwhile, provides a learning model by combining many different classifiers such that an ensemble of classifiers is better than using single classifier. In this study, we propose a deep ensemble framework called Deep Heterogeneous Ensemble (DHE) for supervised learning tasks. In each layer of our algorithm, the input data is passed through a feature selection method to remove...
In the recent years, many applications in machine learning involve an increasingly large number of f...
Big data is often collected from multiple sources with possibly different features, representations ...
International audienceRather than making one model and hoping this model is the best/most accurate p...
Classification is a special type of machine learning tasks, which is essentially achieved by trainin...
In this study, we introduce an ensemble selection method for deep ensemble systems called VEGAS. The...
In this study, we introduce an ensemble selection method for deep ensemble systems called VEGAS. The...
In this study, we introduce an ensemble selection method for deep ensemble systems called VEGAS. The...
One of the most recent area in the Machine Learning research is Deep Learning. Deep Learning algorit...
The need for analytical solutions using machine learning (ML) and deep learning (DL) has risen in th...
Classification is a special type of machine learning tasks, which is essentially achieved by trainin...
Ensemble multifeatured deep learning methodology has emerged as a powerful approach to overcome the ...
© 2020 Convolutional Neural Networks (CNNs), also known as deep learners have seen much success in t...
© 2020 Convolutional Neural Networks (CNNs), also known as deep learners have seen much success in t...
In this study, we introduce an ensemble system by combining homogeneous ensemble and heterogeneous e...
Deep neural network ensembles hold the potential of improving generalization performance for complex...
In the recent years, many applications in machine learning involve an increasingly large number of f...
Big data is often collected from multiple sources with possibly different features, representations ...
International audienceRather than making one model and hoping this model is the best/most accurate p...
Classification is a special type of machine learning tasks, which is essentially achieved by trainin...
In this study, we introduce an ensemble selection method for deep ensemble systems called VEGAS. The...
In this study, we introduce an ensemble selection method for deep ensemble systems called VEGAS. The...
In this study, we introduce an ensemble selection method for deep ensemble systems called VEGAS. The...
One of the most recent area in the Machine Learning research is Deep Learning. Deep Learning algorit...
The need for analytical solutions using machine learning (ML) and deep learning (DL) has risen in th...
Classification is a special type of machine learning tasks, which is essentially achieved by trainin...
Ensemble multifeatured deep learning methodology has emerged as a powerful approach to overcome the ...
© 2020 Convolutional Neural Networks (CNNs), also known as deep learners have seen much success in t...
© 2020 Convolutional Neural Networks (CNNs), also known as deep learners have seen much success in t...
In this study, we introduce an ensemble system by combining homogeneous ensemble and heterogeneous e...
Deep neural network ensembles hold the potential of improving generalization performance for complex...
In the recent years, many applications in machine learning involve an increasingly large number of f...
Big data is often collected from multiple sources with possibly different features, representations ...
International audienceRather than making one model and hoping this model is the best/most accurate p...