Accurate classification by minimizing the error on test samples is the main goal in pattern classification. Combinatorial optimization is a well-known method for solving minimization problems, however, only a few examples of classifiers axe described in the literature where combinatorial optimization is used in pattern classification. Recently, there has been a growing interest in combining classifiers and improving the consensus of results for a greater accuracy. In the light of the "No Ree Lunch Theorems", we analyse the combination of simulated annealing, a powerful combinatorial optimization method that produces high quality results, with the classical perceptron algorithm. This combination is called LSA machine. Our analysis a...
AbstractDeep learning (DL) is a new area of research in machine learning, in which the objective is ...
Combinatorial optimization problems (COPs) are an important branch of mathematical optimization. It ...
The Multilayer Perceptron (MLP) is a classic and widely used neural network model in machine learnin...
AbstractThis paper is primarily oriented towards discrete mathematics and emphasizes the occurrence ...
A neural network architecture for the optimization problems is discussed. It is a feedforward neural...
Neural Combinatorial Optimization attempts to learn good heuristics for solving a set of problems us...
Neural networks can be trained to work well for particular tasks, but hardly ever we know why they w...
: combinatorial optimization is an active field of research in Neural Networks. Since the first atte...
AbstractOptimizing the convergence of a Neural Net Classifier (NNC) is an important task to increase...
It is accurate to say that optimization plays a huge role in the field of machine learning. Majority...
Sample complexity results from computational learning theory, when applied to neural network learnin...
x, 77 leaves ; 29 cmThe task of pattern recognition is one of the most recurrent tasks that we encou...
This thesis proposes several optimization methods that utilize parallel algorithms for large-scale m...
Algorithm selection and generation techniques are two methods that can be used to exploit the perfor...
Traditional solvers for tackling combinatorial optimization (CO) problems are usually designed by hu...
AbstractDeep learning (DL) is a new area of research in machine learning, in which the objective is ...
Combinatorial optimization problems (COPs) are an important branch of mathematical optimization. It ...
The Multilayer Perceptron (MLP) is a classic and widely used neural network model in machine learnin...
AbstractThis paper is primarily oriented towards discrete mathematics and emphasizes the occurrence ...
A neural network architecture for the optimization problems is discussed. It is a feedforward neural...
Neural Combinatorial Optimization attempts to learn good heuristics for solving a set of problems us...
Neural networks can be trained to work well for particular tasks, but hardly ever we know why they w...
: combinatorial optimization is an active field of research in Neural Networks. Since the first atte...
AbstractOptimizing the convergence of a Neural Net Classifier (NNC) is an important task to increase...
It is accurate to say that optimization plays a huge role in the field of machine learning. Majority...
Sample complexity results from computational learning theory, when applied to neural network learnin...
x, 77 leaves ; 29 cmThe task of pattern recognition is one of the most recurrent tasks that we encou...
This thesis proposes several optimization methods that utilize parallel algorithms for large-scale m...
Algorithm selection and generation techniques are two methods that can be used to exploit the perfor...
Traditional solvers for tackling combinatorial optimization (CO) problems are usually designed by hu...
AbstractDeep learning (DL) is a new area of research in machine learning, in which the objective is ...
Combinatorial optimization problems (COPs) are an important branch of mathematical optimization. It ...
The Multilayer Perceptron (MLP) is a classic and widely used neural network model in machine learnin...