5,090 research outputs found

    Weighted Random Popular Matchings

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    For a set A of n applicants and a set I of m items, we consider a problem of computing a matching of applicants to items, i.e., a function M mapping A to I; here we assume that each applicant xAx \in A provides a preference list on items in I. We say that an applicant xAx \in A prefers an item p than an item q if p is located at a higher position than q in its preference list, and we say that x prefers a matching M over a matching M' if x prefers M(x) over M'(x). For a given matching problem A, I, and preference lists, we say that M is more popular than M' if the number of applicants preferring M over M' is larger than that of applicants preferring M' over M, and M is called a popular matching if there is no other matching that is more popular than M. Here we consider the situation that A is partitioned into A1,A2,...,AkA_{1},A_{2},...,A_{k}, and that each AiA_{i} is assigned a weight wi>0w_{i}>0 such that w_{1}>w_{2}>...>w_{k}>0.Forsuchamatchingproblem,wesaythatMismorepopularthanMifthetotalweightofapplicantspreferringMoverMislargerthanthatofapplicantspreferringMoverM,andwecallMankweightedpopularmatchingifthereisnoothermatchingthatismorepopularthanM.Inthispaper,weanalyzethe2weightedmatchingproblem,andweshowthat(lowerbound)if. For such a matching problem, we say that M is more popular than M' if the total weight of applicants preferring M over M' is larger than that of applicants preferring M' over M, and we call M an k-weighted popular matching if there is no other matching that is more popular than M. In this paper, we analyze the 2-weighted matching problem, and we show that (lower bound) if m/n^{4/3}=o(1),thenarandominstanceofthe2weightedmatchingproblemwith, then a random instance of the 2-weighted matching problem with w_{1} \geq 2w_{2}hasa2weightedpopularmatchingwithprobabilityo(1);and(upperbound)if has a 2-weighted popular matching with probability o(1); and (upper bound) if n^{4/3}/m = o(1),thenarandominstanceofthe2weightedmatchingproblemwith, then a random instance of the 2-weighted matching problem with w_{1} \geq 2w_{2}$ has a 2-weighted popular matching with probability 1-o(1).Comment: 13 pages, 2 figure

    Linear Programming Relaxations for Goldreich's Generators over Non-Binary Alphabets

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    Goldreich suggested candidates of one-way functions and pseudorandom generators included in NC0\mathsf{NC}^0. It is known that randomly generated Goldreich's generator using (r1)(r-1)-wise independent predicates with nn input variables and m=Cnr/2m=C n^{r/2} output variables is not pseudorandom generator with high probability for sufficiently large constant CC. Most of the previous works assume that the alphabet is binary and use techniques available only for the binary alphabet. In this paper, we deal with non-binary generalization of Goldreich's generator and derives the tight threshold for linear programming relaxation attack using local marginal polytope for randomly generated Goldreich's generators. We assume that u(n)ω(1)o(n)u(n)\in \omega(1)\cap o(n) input variables are known. In that case, we show that when r3r\ge 3, there is an exact threshold μc(k,r):=(kr)1(r2)r2r(r1)r1\mu_\mathrm{c}(k,r):=\binom{k}{r}^{-1}\frac{(r-2)^{r-2}}{r(r-1)^{r-1}} such that for m=μnr1u(n)r2m=\mu\frac{n^{r-1}}{u(n)^{r-2}}, the LP relaxation can determine linearly many input variables of Goldreich's generator if μ>μc(k,r)\mu>\mu_\mathrm{c}(k,r), and that the LP relaxation cannot determine 1r2u(n)\frac1{r-2} u(n) input variables of Goldreich's generator if μ<μc(k,r)\mu<\mu_\mathrm{c}(k,r). This paper uses characterization of LP solutions by combinatorial structures called stopping sets on a bipartite graph, which is related to a simple algorithm called peeling algorithm.Comment: 14 pages, 1 figur

    A role of constraint in self-organization

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    In this paper we introduce a neural network model of self-organization. This model uses a variation of Hebb rule for updating its synaptic weights, and surely converges to the equilibrium status. The key point of the convergence is the update rule that constrains the total synaptic weight and this seems to make the model stable. We investigate the role of the constraint and show that it is the constraint that makes the model stable. For analyzing this setting, we propose a simple probabilistic game that models the neural network and the self-organization process. Then, we investigate the characteristics of this game, namely, the probability that the game becomes stable and the number of the steps it takes.Comment: To appear in the Proc. RANDOM'98, Oct. 199
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