The search session has expired. Please query the service again.
The search session has expired. Please query the service again.
The search session has expired. Please query the service again.
The search session has expired. Please query the service again.
The search session has expired. Please query the service again.
The search session has expired. Please query the service again.
The search session has expired. Please query the service again.
The search session has expired. Please query the service again.
Displaying 301 –
320 of
472
We consider a generalization of the so-called divide and color model recently introduced by Häggström. We investigate the behavior of the magnetization in large boxes of the lattice and its fluctuations. Thus, Laws of Large Numbers and Central Limit Theorems are proved, both quenched and annealed. We show that the properties of the underlying percolation process deeply influence the behavior of the coloring model. In the subcritical case, the limit magnetization is deterministic and the Central...
We consider a generalization of the so-called divide and
color model recently introduced by Häggström. We investigate the
behavior of the magnetization in large boxes of the lattice
and its fluctuations. Thus, Laws of Large Numbers and Central
Limit Theorems are proved, both quenched and annealed. We show
that the properties of the underlying percolation process deeply
influence the behavior of the coloring model. In the subcritical
case, the limit magnetization is deterministic and the Central
Limit...
A random graph evolution based on interactions of N vertices is studied. During the evolution both the preferential attachment rule and the uniform choice of vertices are allowed. The weight of an M-clique means the number of its interactions. The asymptotic behaviour of the weight of a fixed M-clique is studied. Asymptotic theorems for the weight and the degree of a fixed vertex are also presented. Moreover, the limits of the maximal weight and the maximal degree are described. The proofs are based...
Let be a -random walk and be a sequence of independent and identically distributed -valued random variables, independent of the random walk. Let be a measurable, symmetric function defined on with values in . We study the weak convergence of the sequence , with values in the set of right continuous real-valued functions with left limits, defined byStatistical applications are presented, in particular we prove a strong law of large numbers for -statistics indexed by a one-dimensional...
Let (Sn)n≥0 be a -random walk and
be a sequence of independent and
identically distributed -valued random variables,
independent of the random walk. Let h be a measurable, symmetric
function defined on with values in . We study the
weak convergence of the sequence , with
values in D[0,1] the set of right continuous real-valued
functions
with left limits, defined by
Statistical applications are presented, in particular we prove a strong law of large numbers
for U-statistics indexed by...
Based on an analytical approach to the definition of multiplicative free convolution on probability measures on the nonnegative line ℝ+ and on the unit circle
we prove analogs of limit theorems for nonidentically distributed random variables in classical Probability Theory.
We prove stable limit theorems and one-sided laws of the iterated logarithm for a class of positive, mixing, stationary, stochastic processes which contains those obtained from nonintegrable observables over certain piecewise expanding maps. This is done by extending Darling–Kac theory to a suitable family of infinite measure preserving transformations.
We give a temporal ergodicity criterium for the solution of a class of infinite dimensional stochastic differential equations of gradient type, where the interaction has infinite range. We illustrate our theoretical result by typical examples.
For a double channel Markovian queue with finite waiting space and unequal service rates at the two counters, the difference equations satisfied by the Laplace transforms of the state probabilities at finite time are solved and the state probabilities have been obtained. The closed form of the state probabilities can be used to obtain the important parameters of the system.
Currently displaying 301 –
320 of
472