159 research outputs found

    Bounding basic characteristics of spatial epidemics with a new percolation model

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    We introduce a new percolation model to describe and analyze the spread of an epidemic on a general directed and locally finite graph. We assign a two-dimensional random weight vector to each vertex of the graph in such a way that the weights of different vertices are i.i.d., but the two entries of the vector assigned to a vertex need not be independent. The probability for an edge to be open depends on the weights of its end vertices, but conditionally on the weights, the states of the edges are independent of each other. In an epidemiological setting, the vertices of a graph represent the individuals in a (social) network and the edges represent the connections in the network. The weights assigned to an individual denote its (random) infectivity and susceptibility, respectively. We show that one can bound the percolation probability and the expected size of the cluster of vertices that can be reached by an open path starting at a given vertex from above and below by the corresponding quantities for respectively independent bond and site percolation with certain densities; this generalizes a result of Kuulasmaa. Many models in the literature are special cases of our general model.Comment: 15 page

    Assessing forensic evidence by computing belief functions

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    We first discuss certain problems with the classical probabilistic approach for assessing forensic evidence, in particular its inability to distinguish between lack of belief and disbelief, and its inability to model complete ignorance within a given population. We then discuss Shafer belief functions, a generalization of probability distributions, which can deal with both these objections. We use a calculus of belief functions which does not use the much criticized Dempster rule of combination, but only the very natural Dempster-Shafer conditioning. We then apply this calculus to some classical forensic problems like the various island problems and the problem of parental identification. If we impose no prior knowledge apart from assuming that the culprit or parent belongs to a given population (something which is possible in our setting), then our answers differ from the classical ones when uniform or other priors are imposed. We can actually retrieve the classical answers by imposing the relevant priors, so our setup can and should be interpreted as a generalization of the classical methodology, allowing more flexibility. We show how our calculus can be used to develop an analogue of Bayes' rule, with belief functions instead of classical probabilities. We also discuss consequences of our theory for legal practice.Comment: arXiv admin note: text overlap with arXiv:1512.01249. Accepted for publication in Law, Probability and Ris

    Uniquely determined uniform probability on the natural numbers

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    In this paper, we address the problem of constructing a uniform probability measure on N\mathbb{N}. Of course, this is not possible within the bounds of the Kolmogorov axioms and we have to violate at least one axiom. We define a probability measure as a finitely additive measure assigning probability 11 to the whole space, on a domain which is closed under complements and finite disjoint unions. We introduce and motivate a notion of uniformity which we call weak thinnability, which is strictly stronger than extension of natural density. We construct a weakly thinnable probability measure and we show that on its domain, which contains sets without natural density, probability is uniquely determined by weak thinnability. In this sense, we can assign uniform probabilities in a canonical way. We generalize this result to uniform probability measures on other metric spaces, including Rn\mathbb{R}^n.Comment: We added a discussion of coherent probability measures and some explanation regarding the operator we study. We changed the title to a more descriptive one. Further, we tidied up the proofs and corrected and simplified some minor issue

    Phase transition and uniqueness of levelset percolation

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    The main purpose of this paper is to introduce and establish basic results of a natural extension of the classical Boolean percolation model (also known as the Gilbert disc model). We replace the balls of that model by a positive non-increasing attenuation function l:(0,)(0,)l:(0,\infty) \to (0,\infty) to create the random field Ψ(y)=xηl(xy),\Psi(y)=\sum_{x\in \eta}l(|x-y|), where η\eta is a homogeneous Poisson process in Rd.{\mathbb R}^d. The field Ψ\Psi is then a random potential field with infinite range dependencies whenever the support of the function ll is unbounded. In particular, we study the level sets Ψh(y)\Psi_{\geq h}(y) containing the points yRdy\in {\mathbb R}^d such that Ψ(y)h.\Psi(y)\geq h. In the case where ll has unbounded support, we give, for any d2,d\geq 2, exact conditions on ll for Ψh(y)\Psi_{\geq h}(y) to have a percolative phase transition as a function of h.h. We also prove that when ll is continuous then so is Ψ\Psi almost surely. Moreover, in this case and for d=2,d=2, we prove uniqueness of the infinite component of Ψh\Psi_{\geq h} when such exists, and we also show that the so-called percolation function is continuous below the critical value hch_c.Comment: 25 page

    Bounds for avalanche critical values of the Bak-Sneppen model

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    We study the Bak-Sneppen model on locally finite transitive graphs GG, in particular on Z^d and on T_Delta, the regular tree with common degree Delta. We show that the avalanches of the Bak-Sneppen model dominate independent site percolation, in a sense to be made precise. Since avalanches of the Bak-Sneppen model are dominated by a simple branching process, this yields upper and lower bounds for the so-called avalanche critical value pcBS(G)p_c^{BS}(G). Our main results imply that 1/(Delta+1) <= \leq p_c^{BS}(T_Delta) \leq 1/(Delta -1),andthat, and that 1/(2d+1)\leq p_c^{BS}(Z^d)\leq 1/(2d)+ 1/(2d)^2+O(d^{-3}), as d\to\infty.Comment: 19 page

    Long-range percolation on the hierarchical lattice

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    We study long-range percolation on the hierarchical lattice of order NN, where any edge of length kk is present with probability pk=1exp(βkα)p_k=1-\exp(-\beta^{-k} \alpha), independently of all other edges. For fixed β\beta, we show that the critical value αc(β)\alpha_c(\beta) is non-trivial if and only if N<β<N2N < \beta < N^2. Furthermore, we show uniqueness of the infinite component and continuity of the percolation probability and of αc(β)\alpha_c(\beta) as a function of β\beta. This means that the phase diagram of this model is well understood.Comment: 24 page

    Existence and uniqueness of the stationary measure in the continuous Abelian sandpile

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    Let \Lambda be a finite subset of Z^d. We study the following sandpile model on \Lambda. The height at any given vertex x of \Lambda is a positive real number, and additions are uniformly distributed on some interval [a,b], which is a subset of [0,1]. The threshold value is 1; when the height at a given vertex exceeds 1, it topples, that is, its height is reduced by 1, and the heights of all its neighbours in \Lambda increase by 1/2d. We first establish that the uniform measure \mu on the so called "allowed configurations" is invariant under the dynamics. When a < b, we show with coupling ideas that starting from any initial configuration of heights, the process converges in distribution to \mu, which therefore is the unique invariant measure for the process. When a = b, that is, when the addition amount is non-random, and a is rational, it is still the case that \mu is the unique invariant probability measure, but in this case we use random ergodic theory to prove this; this proof proceeds in a very different way. Indeed, the coupling approach cannot work in this case since we also show the somewhat surprising fact that when a = b is rational, the process does not converge in distribution at all starting from any initial configuration.Comment: 22 page
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