Neural networks have demonstrated their usefulness for solving complex regression problems in circumstances where alternative methods do not provide satisfactory results. Finding a good neural network model is a time-consuming task that involves searching through a complex multidimensional hyperparameter and weight space in order to find the values that provide optimal convergence. We propose a novel neural network optimizer that leverages the advantages of both an improved evolutionary competitive algorithm and gradient-based backpropagation. The method consists of a modified, hybrid variant of the Imperialist Competitive Algorithm (ICA). We analyze multiple strategies for initialization, assimilation, revolution, and competition, in order...
Machine learning has the potential to dramatically accelerate high-throughput approaches to material...
Summarization: The objective of this paper is to investigate the efficiency of combinatorial optimiz...
The practical optimal control problems often contain multiple conflicting objectives leading to a se...
Artificial neural networks have proven to be effective in a wide range of fields, providing solution...
Artificial neural networks are widely used in data analysis and to control dynamic processes. These ...
The design of engineering materials satisfying different performance criteria is an important proble...
Evolutionary algorithms (EAs) are very popular tools to design and evolve artificial neural networks...
Although Artificial Neural Networks (ANNs) are important Data Mining techniques, the search for the ...
Artificial neural networks (ANNs) are comparatively straightforward to understand and use in the ana...
The book provides a comprehensive treatment of combinatorial development of heterogeneous catalysts....
This paper proposes a hybrid process modeling and optimization formalism integrating artificial neur...
Both the Hopfield neural network and Kohonen's principles of self-organization have been used to sol...
The book provides a comprehensive treatment of combinatorial development of heterogeneous catalysts....
Considering computational algorithms available in the literature, associated with supervised learnin...
Optimal performance of the crystallization process is of utmost importance for industries handling b...
Machine learning has the potential to dramatically accelerate high-throughput approaches to material...
Summarization: The objective of this paper is to investigate the efficiency of combinatorial optimiz...
The practical optimal control problems often contain multiple conflicting objectives leading to a se...
Artificial neural networks have proven to be effective in a wide range of fields, providing solution...
Artificial neural networks are widely used in data analysis and to control dynamic processes. These ...
The design of engineering materials satisfying different performance criteria is an important proble...
Evolutionary algorithms (EAs) are very popular tools to design and evolve artificial neural networks...
Although Artificial Neural Networks (ANNs) are important Data Mining techniques, the search for the ...
Artificial neural networks (ANNs) are comparatively straightforward to understand and use in the ana...
The book provides a comprehensive treatment of combinatorial development of heterogeneous catalysts....
This paper proposes a hybrid process modeling and optimization formalism integrating artificial neur...
Both the Hopfield neural network and Kohonen's principles of self-organization have been used to sol...
The book provides a comprehensive treatment of combinatorial development of heterogeneous catalysts....
Considering computational algorithms available in the literature, associated with supervised learnin...
Optimal performance of the crystallization process is of utmost importance for industries handling b...
Machine learning has the potential to dramatically accelerate high-throughput approaches to material...
Summarization: The objective of this paper is to investigate the efficiency of combinatorial optimiz...
The practical optimal control problems often contain multiple conflicting objectives leading to a se...