Improving Hit-and-Run is a random search algorithm for global optimization that at each iteration generates a candidate point for improvement that is uniformly distributed along a randomly chosen direction within the feasible region. The candidate point is accepted as the next iterate if it offers an improvement over the current iterate. We show that for positive definite quadratic programs, the expected number of function evaluations needed to arbitrarily well approximate the optimal solution is at most O(n 5/2 ) where n is the dimension of the problem. Improving Hit-and-Run when applied to global optimization problems can therefore be expected to converge polynomially fast as it approaches the global optimum.Peer Reviewedhttp://deepblue.l...
This paper presents some simple technical conditions that guarantee the convergence of a general cla...
In general, the presented algorithm can be successfully applied to solve global optimization problem...
We consider a combination of state space partitioning and random search methods for solving determin...
Abstract. Improving Hit-and-Run is a random search algorithm for global optimization that at each it...
Pure adaptive seach iteratively constructs a sequence of interior points uniformly distributed withi...
We introduce the notion of expected hitting time to a goal as a measure of the con- vergence rate o...
In this paper, we envision global optimization as finding, for a given calculation complexity, a sui...
Striking the correct balance between global exploration of search spaces and local exploitation of p...
We consider global optimization problems, where the feasible region X is a compact subset of Rd ...
In this article we study stochastic multistart methods for global optimization, which combine local ...
The optimization method employing iterated improvementwith random restart (I2R2) is studied. Associa...
This thesis looks at some theoretical and practical aspects of global optimization - as we shall see...
We investigate the rate of convergence of general global random search (GRS) algorithms. We show tha...
Several Markov chain sampling algorithms, including the Hit-and-Run algorithm, are unified within th...
The article deals with experimental comparison and verification of stochastic algorithms for global ...
This paper presents some simple technical conditions that guarantee the convergence of a general cla...
In general, the presented algorithm can be successfully applied to solve global optimization problem...
We consider a combination of state space partitioning and random search methods for solving determin...
Abstract. Improving Hit-and-Run is a random search algorithm for global optimization that at each it...
Pure adaptive seach iteratively constructs a sequence of interior points uniformly distributed withi...
We introduce the notion of expected hitting time to a goal as a measure of the con- vergence rate o...
In this paper, we envision global optimization as finding, for a given calculation complexity, a sui...
Striking the correct balance between global exploration of search spaces and local exploitation of p...
We consider global optimization problems, where the feasible region X is a compact subset of Rd ...
In this article we study stochastic multistart methods for global optimization, which combine local ...
The optimization method employing iterated improvementwith random restart (I2R2) is studied. Associa...
This thesis looks at some theoretical and practical aspects of global optimization - as we shall see...
We investigate the rate of convergence of general global random search (GRS) algorithms. We show tha...
Several Markov chain sampling algorithms, including the Hit-and-Run algorithm, are unified within th...
The article deals with experimental comparison and verification of stochastic algorithms for global ...
This paper presents some simple technical conditions that guarantee the convergence of a general cla...
In general, the presented algorithm can be successfully applied to solve global optimization problem...
We consider a combination of state space partitioning and random search methods for solving determin...