Author/Authors :
Pawe? G?ra، نويسنده , , Abraham Boyarsky ?، نويسنده ,
Abstract :
We consider a random map T = T(Γ,ω), where Γ = (τ1, τ2, . . . , τK) is a collection of maps of an interval
and ω = (p1,p2, . . . , pK) is a collection of the corresponding position dependent probabilities, that
is, pk(x) 0 for k = 1, 2, . . . , K and
K
k=1 pk(x) = 1. At each step, the random map T moves the point
x to τk(x) with probability pk(x). For a fixed collection of maps Γ , T can have many different invariant
probability density functions, depending on the choice of the (weighting) probabilities ω. Most of the
results in this paper concern random maps where Γ is a family of piecewise linear semi-Markov maps.
We investigate properties of the set of invariant probability density functions of T that are attainable by
allowing the probabilities in ω to vary in a certain class of functions. We prove that the set of all attainable
densities can be determined algorithmically. We also study the duality between random maps generated by
transformations and random maps constructed from a collection of their inverse branches. Such representation
may be of greater interest in view of new methods of computing entropy [W. Słomczy´nski, J. Kwapie´n,
K. ˙ Zyczkowski, Entropy computing via integration over fractal measures, Chaos 10 (2000) 180–188].
2005 Elsevier Inc. All rights reserved.
Keywords :
Random maps , Piecewise linear Markov maps , Absolutely continuous invariant measure , System of inversebranches