12,108 research outputs found

    Sublinear Communication Protocols for Multi-Party Pointer Jumping and a Related Lower Bound

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    We study the one-way number-on-the-forehead (NOF) communication complexity of the kk-layer pointer jumping problem with nn vertices per layer. This classic problem, which has connections to many aspects of complexity theory, has seen a recent burst of research activity, seemingly preparing the ground for an Ω(n)\Omega(n) lower bound, for constant kk. Our first result is a surprising sublinear -- i.e., o(n)o(n) -- upper bound for the problem that holds for k3k \ge 3, dashing hopes for such a lower bound. A closer look at the protocol achieving the upper bound shows that all but one of the players involved are collapsing, i.e., their messages depend only on the composition of the layers ahead of them. We consider protocols for the pointer jumping problem where all players are collapsing. Our second result shows that a strong nO(logn)n - O(\log n) lower bound does hold in this case. Our third result is another upper bound showing that nontrivial protocols for (a non-Boolean version of) pointer jumping are possible even when all players are collapsing. Our lower bound result uses a novel proof technique, different from those of earlier lower bounds that had an information-theoretic flavor. We hope this is useful in further study of the problem

    Mixed-Integer Convex Nonlinear Optimization with Gradient-Boosted Trees Embedded

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    Decision trees usefully represent sparse, high dimensional and noisy data. Having learned a function from this data, we may want to thereafter integrate the function into a larger decision-making problem, e.g., for picking the best chemical process catalyst. We study a large-scale, industrially-relevant mixed-integer nonlinear nonconvex optimization problem involving both gradient-boosted trees and penalty functions mitigating risk. This mixed-integer optimization problem with convex penalty terms broadly applies to optimizing pre-trained regression tree models. Decision makers may wish to optimize discrete models to repurpose legacy predictive models, or they may wish to optimize a discrete model that particularly well-represents a data set. We develop several heuristic methods to find feasible solutions, and an exact, branch-and-bound algorithm leveraging structural properties of the gradient-boosted trees and penalty functions. We computationally test our methods on concrete mixture design instance and a chemical catalysis industrial instance

    Centroidal bases in graphs

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    We introduce the notion of a centroidal locating set of a graph GG, that is, a set LL of vertices such that all vertices in GG are uniquely determined by their relative distances to the vertices of LL. A centroidal locating set of GG of minimum size is called a centroidal basis, and its size is the centroidal dimension CD(G)CD(G). This notion, which is related to previous concepts, gives a new way of identifying the vertices of a graph. The centroidal dimension of a graph GG is lower- and upper-bounded by the metric dimension and twice the location-domination number of GG, respectively. The latter two parameters are standard and well-studied notions in the field of graph identification. We show that for any graph GG with nn vertices and maximum degree at least~2, (1+o(1))lnnlnlnnCD(G)n1(1+o(1))\frac{\ln n}{\ln\ln n}\leq CD(G) \leq n-1. We discuss the tightness of these bounds and in particular, we characterize the set of graphs reaching the upper bound. We then show that for graphs in which every pair of vertices is connected via a bounded number of paths, CD(G)=Ω(E(G))CD(G)=\Omega\left(\sqrt{|E(G)|}\right), the bound being tight for paths and cycles. We finally investigate the computational complexity of determining CD(G)CD(G) for an input graph GG, showing that the problem is hard and cannot even be approximated efficiently up to a factor of o(logn)o(\log n). We also give an O(nlnn)O\left(\sqrt{n\ln n}\right)-approximation algorithm

    Superposition frames for adaptive time-frequency analysis and fast reconstruction

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    In this article we introduce a broad family of adaptive, linear time-frequency representations termed superposition frames, and show that they admit desirable fast overlap-add reconstruction properties akin to standard short-time Fourier techniques. This approach stands in contrast to many adaptive time-frequency representations in the extant literature, which, while more flexible than standard fixed-resolution approaches, typically fail to provide efficient reconstruction and often lack the regular structure necessary for precise frame-theoretic analysis. Our main technical contributions come through the development of properties which ensure that this construction provides for a numerically stable, invertible signal representation. Our primary algorithmic contributions come via the introduction and discussion of specific signal adaptation criteria in deterministic and stochastic settings, based respectively on time-frequency concentration and nonstationarity detection. We conclude with a short speech enhancement example that serves to highlight potential applications of our approach.Comment: 16 pages, 6 figures; revised versio
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