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This paper investigates the notion of negative dependence amongst random variables and attempts to advocate its use as a simple and unifying paradigm forthe analysis of random structures and algorithms. The assumption of independence between random variables is often very convenient for the several reasons. Firstly, it makes analyses and calculations much simpler. Secondly, one has at hand a whole array of powerful mathematical concepts and tools from classical probability theory for the analysis, such as laws of large numbers, central limit theorems and large deviation bounds which are usually derived under the assumption of independence. Unfortunately, the analysis of most randomized algorithms involves random variables that are not independent. In this case, classical tools from standard probabilitytheory like large deviation theorems, that are valid under the assumption of independence between the random variables involved, cannot be used as such. It isthen necessary to determine under what conditions of dependence one can still use the classical tools. It has been observed before 32, 33, 38, 8, that in some situations, even though the variables involved are not independent, one can still apply some of the standardtools that are valid for independent variables (directly or in suitably modified form), provided that the variables are dependent in specific ways. Unfortunately, itappears that in most cases somewhat ad hoc strategems have been devised, tailored to the specific situation at hand, and that a unifying underlying theory that delvesdeeper into the nature of dependence amongst the variables involved is lacking. A frequently occurring scenario underlying the analysis of many randomisedalgorithms and processes involves random variables that are, intuitively, dependent in the following negative way: if one subset of the variables is "high" then a disjointsubset of the variables is "low". In this paper, we bring to the forefront and systematize some precise notions of negative dependence in the literature, analysetheir properties, compare them relative to each other, and illustrate them with several applications. One specific paradigm involving negative dependence is the classical "balls and bins" experiment. Suppose we throw m balls into n bins independently at random. For i in n, let Bi be the random variable denoting the number of balls in the ith bin. We will often refer to these variables as occupancy numbers. This is aclassical probabilistic paradigm 16, 22, 26 (see also 31, sec. 3. 1) that underlies theanalysis of many probabilistic algorithms and processes. In the case when the ballsare identical, this gives rise to the well-known multinomial distribution 16, sec VI. 9: there are m repeated independent trials (balls) where each trial (ball) can result in one of the outcomes E1,. . . , En (bins). The probability of the realisation of event Ei is pi for i in n for each trial. (Of course the probabilities are subject to the conditionSumᵢ pi = 1. ) Under the multinomial distribution, for any integersm1,. . . , mn such thatSumᵢ mi = m the probability that for each i in n, event Eioccurs mi times is m!m1!: : : mn!pm11: : : pmnn: The balls and bins experiment is a generalisation of the multinomial distribution: in the general case, one can have an arbitrary set of probabilities for each ball: theprobability that ball k goes into bin i is pi;k, subject only to the natural restrictionthat for each ball k, Pi pi;k = 1. The joint distribution function correspondinglyhas a more complicated form. A fundamental natural question of interest is: how are these Bi related? Notethat even though the balls are thrown independently of each other, the Bi variables are not independent; in particular, their sum is fixed to m. Intuitively, the Bi'sare negatively dependent on each other in the manner described above: if one setof variables is "high", a disjoint set is "low". However, establishing such assertionsprecisely by a direct calculation from the joint distribution function, though possiblein principle, appears to be quite a formidable task, even in the case where the balls are assumed to be identical. One of the major contributions of this paper is establishing that the the Bi are negatively dependent in a very strong sense. In particular, we show that the Bi variables satisfy negative association and negative regression, two strong notions of negative dependence that we define precisely below. All the intuitively obvious assertions of negative dependence in the balls and bins experiment follow as easy corollaries. We illustrate the usefulness of these results by showing how to streamline and simplify many existing probabilistic analyses in literature.
Dubhashi et al. (Thu,) studied this question.
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