We consider the problem of a learning mechanism (for example, a robot) locating a point on a line when it is interacting with a random environment which essentially informs it, possibly erroneously, which way it should move. In this paper we present a novel scheme by which the point can be learned using some recently devised learning principles. The heart of the strategy involves discretizing the space and performing a controlled random walk on this space. The scheme is shown to be ε-optimal and to converge with probability 1. Although the problem is solved in its generality, its application in nonlinear optimization has also been suggested. Typically, an optimization process involves working one's way toward the maximum (minimum) using the...
This paper generalizes our research on parameter interdependencies in reinforcement learning algorit...
The most fundamental problem encountered in the field of stochastic optimization, is the Stochastic R...
We consider the problem of a learning mechanism (robot, or algorithm) that learns a parameter while ...
We consider the problem of a learning mechanism (for example, a robot) locating a point on a line wh...
Consider the problem of a robot (learning mechanism or algorithm) attempting to locate a point on a ...
Consider the problem of a learning mechanism (robot, or algorithm) attempting to locate a point on a...
This paper deals with the Stochastic-Point Location (SPL) problem. It presents a solution which is n...
Stochastic point location (SPL) deals with the problem of a learning mechanism (LM) determining the ...
This paper deals with the Stochastic-Point Location (SPL) problem. It presents a solution which is n...
The problem of optimization with noisy measurements is common in many areas of engineering. The only...
The problem of optimization with noisy measurements is common in many areas of engineering. The only...
In this keynote talk, we will survey and explain the state-of-the-art concerning the Stochastic Sear...
The Stochastic Point Location (SPL) problem [20] is a fundamental learning problem that has recently...
In this paper we present a new methodology for robot learning that combines ideas from statistical g...
Stochastic optimization algorithms have been growing rapidly in popularity over the last decade or t...
This paper generalizes our research on parameter interdependencies in reinforcement learning algorit...
The most fundamental problem encountered in the field of stochastic optimization, is the Stochastic R...
We consider the problem of a learning mechanism (robot, or algorithm) that learns a parameter while ...
We consider the problem of a learning mechanism (for example, a robot) locating a point on a line wh...
Consider the problem of a robot (learning mechanism or algorithm) attempting to locate a point on a ...
Consider the problem of a learning mechanism (robot, or algorithm) attempting to locate a point on a...
This paper deals with the Stochastic-Point Location (SPL) problem. It presents a solution which is n...
Stochastic point location (SPL) deals with the problem of a learning mechanism (LM) determining the ...
This paper deals with the Stochastic-Point Location (SPL) problem. It presents a solution which is n...
The problem of optimization with noisy measurements is common in many areas of engineering. The only...
The problem of optimization with noisy measurements is common in many areas of engineering. The only...
In this keynote talk, we will survey and explain the state-of-the-art concerning the Stochastic Sear...
The Stochastic Point Location (SPL) problem [20] is a fundamental learning problem that has recently...
In this paper we present a new methodology for robot learning that combines ideas from statistical g...
Stochastic optimization algorithms have been growing rapidly in popularity over the last decade or t...
This paper generalizes our research on parameter interdependencies in reinforcement learning algorit...
The most fundamental problem encountered in the field of stochastic optimization, is the Stochastic R...
We consider the problem of a learning mechanism (robot, or algorithm) that learns a parameter while ...