Learning automata are adaptive decision making devices that are found useful in a variety of machine learning and pattern recognition applications. Although most learning automata methods deal with the case of finitely many actions for the automaton, there are also models of continuous-action-set learning automata (CALA). A team of such CALA can be useful in stochastic optimization problems where one has access only to noise-corrupted values of the objective function. In this paper, we present a novel formulation for noise-tolerant learning of linear classifiers using a CALA team. We consider the general case of nonuniform noise, where the probability that the class label of an example is wrong may be a function of the feature vector ...
This paper considers the problem of learning optimal discriminant functions for pattern classificati...
This paper presents an overview of the field of Stochastic Learning Automata (LA), and concentrates,...
This paper considers the problem of learning optimal discriminant functions for pattern classificati...
The problem of optimization with noisy measurements is common in many areas of engineering. The only...
In the design of adaptive IIR filters, the multi-modal nature of the error surfaces can limit the us...
The problem of optimization with noisy measurements is common in many areas of engineering. The only...
In the design of adaptive IIR filters, the multi-modal nature of the error surfaces can limit the us...
The problem of optimization with noisy measurements is common in many areas of engineering. The only...
We consider optimization problems where the objective function is defined over some continuous and s...
We consider optimization problems where the objective function is defined over some continuous and s...
Abstract—We consider optimization problems where the objec-tive function is defined over some contin...
In this paper, we explore noise-tolerant learning of classifiers. We formulate the problem as follow...
In the design of adaptive IIR filters, the multi-modal nature of the error surfaces can limit the us...
In the design of adaptive IIR filters, the multi-modal nature of the error surfaces can limit the us...
This paper considers the problem of learning optimal discriminant functions for pattern classificati...
This paper considers the problem of learning optimal discriminant functions for pattern classificati...
This paper presents an overview of the field of Stochastic Learning Automata (LA), and concentrates,...
This paper considers the problem of learning optimal discriminant functions for pattern classificati...
The problem of optimization with noisy measurements is common in many areas of engineering. The only...
In the design of adaptive IIR filters, the multi-modal nature of the error surfaces can limit the us...
The problem of optimization with noisy measurements is common in many areas of engineering. The only...
In the design of adaptive IIR filters, the multi-modal nature of the error surfaces can limit the us...
The problem of optimization with noisy measurements is common in many areas of engineering. The only...
We consider optimization problems where the objective function is defined over some continuous and s...
We consider optimization problems where the objective function is defined over some continuous and s...
Abstract—We consider optimization problems where the objec-tive function is defined over some contin...
In this paper, we explore noise-tolerant learning of classifiers. We formulate the problem as follow...
In the design of adaptive IIR filters, the multi-modal nature of the error surfaces can limit the us...
In the design of adaptive IIR filters, the multi-modal nature of the error surfaces can limit the us...
This paper considers the problem of learning optimal discriminant functions for pattern classificati...
This paper considers the problem of learning optimal discriminant functions for pattern classificati...
This paper presents an overview of the field of Stochastic Learning Automata (LA), and concentrates,...
This paper considers the problem of learning optimal discriminant functions for pattern classificati...