Deep learning models form one of the most powerful machine learning models for the extraction of important features. Most of the designs of deep neural models, i.e., the initialization of parameters, are still manually tuned. Hence, obtaining a model with high performance is exceedingly time-consuming and occasionally impossible. Optimizing the parameters of the deep networks, therefore, requires improved optimization algorithms with high convergence rates. The single objective-based optimization methods generally used are mostly time-consuming and do not guarantee optimum performance in allcases. Mathematical optimization problems containing multiple objective functions that must be optimized simultaneously fall under the category of multi...
Neuroevolution has been used to train Deep Neural Networks on reinforcement learning problems. A few...
Deep neural networks (DNNs), which are extensions of artificial neural networks, can learn higher le...
Recent research has proposed a series of specialized optimization algorithms for deep multi-task mod...
Deep learning models form one of the most powerful machine learning models for the extraction of imp...
Deep neural networks (DNNs) have successfully been applied across various data intensive application...
International audienceIn recent years, research in applying optimization approaches in the automatic...
Machine learning has been a computer sciences buzzword for years. The technology has a lot of potent...
A novel multi-condition multi-objective optimization method that can find Pareto front over a define...
Deep learning neural networks, or, more precisely, Convolutional Neural Networks (CNNs), have demons...
Adopting the most suitable optimization algorithm (optimizer) for a Neural Network Model is among th...
In the last decade, deep learning(DL) has witnessed excellent performances on a variety of problems,...
The potential to solve complex problems along with the performance that deep learning offers has mad...
The goal of this thesis was to design, implement and analyze various optimizations of deep neural ne...
Deep learning is a very popular gradient based search technique nowadays. In this field of machine l...
During the last years, research in applying optimization approaches in the automatic design of deep ...
Neuroevolution has been used to train Deep Neural Networks on reinforcement learning problems. A few...
Deep neural networks (DNNs), which are extensions of artificial neural networks, can learn higher le...
Recent research has proposed a series of specialized optimization algorithms for deep multi-task mod...
Deep learning models form one of the most powerful machine learning models for the extraction of imp...
Deep neural networks (DNNs) have successfully been applied across various data intensive application...
International audienceIn recent years, research in applying optimization approaches in the automatic...
Machine learning has been a computer sciences buzzword for years. The technology has a lot of potent...
A novel multi-condition multi-objective optimization method that can find Pareto front over a define...
Deep learning neural networks, or, more precisely, Convolutional Neural Networks (CNNs), have demons...
Adopting the most suitable optimization algorithm (optimizer) for a Neural Network Model is among th...
In the last decade, deep learning(DL) has witnessed excellent performances on a variety of problems,...
The potential to solve complex problems along with the performance that deep learning offers has mad...
The goal of this thesis was to design, implement and analyze various optimizations of deep neural ne...
Deep learning is a very popular gradient based search technique nowadays. In this field of machine l...
During the last years, research in applying optimization approaches in the automatic design of deep ...
Neuroevolution has been used to train Deep Neural Networks on reinforcement learning problems. A few...
Deep neural networks (DNNs), which are extensions of artificial neural networks, can learn higher le...
Recent research has proposed a series of specialized optimization algorithms for deep multi-task mod...