“School of Computer Science”

Back to Papers Home
Back to Papers of School of Computer Science

Paper   IPM / Computer Science / 11133
School of Computer Science
  Title:   A New Continuous Action-Set Learning Automaton for Function Optimization
  Author(s): 
1.  H. Beigy
2.  M. R. Meybodi
  Status:   Published
  Journal: Journal of the Franklin Institute
  No.:  1
  Vol.:  343
  Year:  2006
  Pages:   27-47
  Publisher(s):   The Franklin Institute
  Supported by:  IPM
  Abstract:
In this paper, we study an adaptive random search method based on continuous action-set learning automaton for solving stochastic optimization problems in which only the noise-corrupted value of function at any chosen point in the parameter space is available. We first introduce a new continuous action-set learning automaton (CALA) and study its convergence properties. Then we give an algorithm for optimizing an unknown function.

Download TeX format
back to top
scroll left or right