Abstract.We consider generalizations of the classical Polya urn problem: Given finitely many
bins each containing one ball, suppose that additional balls arrive one at a time. For each new ball,
with probability p, create a new bin and place the ball in that
bin; with probability 1−p, place the ball in an existing
bin, such that the probability that the ball is placed in a bin is proportional to
$ m^\gamma $, where m is the number of balls in that bin. For
p=0, the number of bins is fixed and finite,
and the behavior of the process depends on whether γ is greater than, equal to, or less than 1.
We survey the known results and give new proofs for all three cases. We then consider the case
p>0. When γ=1, this is equivalent to the so-called
preferential attachment scheme which leads to power law
distribution for bin sizes. When γ>1, we prove that a single bin dominates, i.e., as
the number of balls goes to infinity, the probability that any new ball either goes into that bin or
creates a new bin converges to 1. When p > 0 and γ < 1, we show that under the assumption that
certain limits exist, the fraction of bins having m balls shrinks
exponentially as a function of m. We then discuss further
generalizations and pose several open problems.
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