673 research outputs found
The CLT Analogue for Cyclic Urns
A cyclic urn is an urn model for balls of types where in each
draw the ball drawn, say of type , is returned to the urn together with a
new ball of type . The case is the well-known Friedman urn.
The composition vector, i.e., the vector of the numbers of balls of each type
after steps is, after normalization, known to be asymptotically normal for
. For the normalized composition vector does not
converge. However, there is an almost sure approximation by a periodic random
vector. In this paper the asymptotic fluctuations around this periodic random
vector are identified. We show that these fluctuations are asymptotically
normal for all . However, they are of maximal dimension only when
does not divide . For being a multiple of the fluctuations are
supported by a two-dimensional subspace.Comment: Extended abstract to be replaced later by a full versio
A statistical view on exchanges in Quickselect
In this paper we study the number of key exchanges required by Hoare's FIND
algorithm (also called Quickselect) when operating on a uniformly distributed
random permutation and selecting an independent uniformly distributed rank.
After normalization we give a limit theorem where the limit law is a perpetuity
characterized by a recursive distributional equation. To make the limit theorem
usable for statistical methods and statistical experiments we provide an
explicit rate of convergence in the Kolmogorov--Smirnov metric, a numerical
table of the limit law's distribution function and an algorithm for exact
simulation from the limit distribution. We also investigate the limit law's
density. This case study provides a program applicable to other cost measures,
alternative models for the rank selected and more balanced choices of the pivot
element such as median-of- versions of Quickselect as well as further
variations of the algorithm.Comment: Theorem 4.4 revised; accepted for publication in Analytic
Algorithmics and Combinatorics (ANALCO14
On the contraction method with degenerate limit equation
A class of random recursive sequences (Y_n) with slowly varying variances as
arising for parameters of random trees or recursive algorithms leads after
normalizations to degenerate limit equations of the form X\stackrel{L}{=}X.
For nondegenerate limit equations the contraction method is a main tool to
establish convergence of the scaled sequence to the ``unique'' solution of the
limit equation. In this paper we develop an extension of the contraction method
which allows us to derive limit theorems for parameters of algorithms and data
structures with degenerate limit equation. In particular, we establish some new
tools and a general convergence scheme, which transfers information on mean and
variance into a central limit law (with normal limit). We also obtain a
convergence rate result. For the proof we use selfdecomposability properties of
the limit normal distribution which allow us to mimic the recursive sequence by
an accompanying sequence in normal variables.Comment: Published by the Institute of Mathematical Statistics
(http://www.imstat.org) in the Annals of Probability
(http://www.imstat.org/aop/) at http://dx.doi.org/10.1214/00911790400000017
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