The task of designing estimators that are able to track time-varying distributions has found promising applications in many real-life problems. A particularly interesting family of distributions are the binomial/multiomial distributions. Existing approaches resort to sliding windows that track changes by discarding old observations. In this paper, we report a novel estimator referred to as the Stochastic Discretized Weak Estimator (SDWE), that is based on the principles of Learning Automata (LA). In brief, the estimator is able to estimate the parameters of a time varying binomial distribution using finite memory. The estimator tracks changes in the distribution by operating on a controlled random walk in a discretized probability space. Th...
In many problems of decision making under uncertainty the system has to acquire knowledge of its env...
In many problems of decision making under uncertainty the system has to acquire knowledge of its env...
The authors illustrate the improvements gained by rendering various estimator algorithms discrete. E...
The task of designing estimators that are able to track time-varying distributions has found promisi...
Published version of a chapter in the book: Advanced Research in Applied Artificial Intelligence. Al...
Recently, Oommen and Rueda [11] presented a strategy by which the parameters of a binomial/multinomi...
In this paper, we formally present a novel estimation method, referred to as the Stochastic Learning...
In this paper, we formally present a novel estimation method, referred to as the Stochastic Learning...
Pattern recognition essentially deals with the training and classification of patterns, where the di...
This correspondence shows that learning automata techniques, which have been useful in developing we...
This paper presents an overview of the field of Stochastic Learning Automata (LA), and concentrates,...
We propose and analyze a distribution learning algorithm for variable memory length Markov processes...
Pattern recognition essentially deals with the training and classification of patterns, where the d...
Stochastic automata operating in an unknown random environment have been proposed earlier as models ...
Learning automata are stochastic finite state machines that attempt to learn the characteristic of a...
In many problems of decision making under uncertainty the system has to acquire knowledge of its env...
In many problems of decision making under uncertainty the system has to acquire knowledge of its env...
The authors illustrate the improvements gained by rendering various estimator algorithms discrete. E...
The task of designing estimators that are able to track time-varying distributions has found promisi...
Published version of a chapter in the book: Advanced Research in Applied Artificial Intelligence. Al...
Recently, Oommen and Rueda [11] presented a strategy by which the parameters of a binomial/multinomi...
In this paper, we formally present a novel estimation method, referred to as the Stochastic Learning...
In this paper, we formally present a novel estimation method, referred to as the Stochastic Learning...
Pattern recognition essentially deals with the training and classification of patterns, where the di...
This correspondence shows that learning automata techniques, which have been useful in developing we...
This paper presents an overview of the field of Stochastic Learning Automata (LA), and concentrates,...
We propose and analyze a distribution learning algorithm for variable memory length Markov processes...
Pattern recognition essentially deals with the training and classification of patterns, where the d...
Stochastic automata operating in an unknown random environment have been proposed earlier as models ...
Learning automata are stochastic finite state machines that attempt to learn the characteristic of a...
In many problems of decision making under uncertainty the system has to acquire knowledge of its env...
In many problems of decision making under uncertainty the system has to acquire knowledge of its env...
The authors illustrate the improvements gained by rendering various estimator algorithms discrete. E...