16,273 research outputs found

    EigenGP: Gaussian Process Models with Adaptive Eigenfunctions

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    Gaussian processes (GPs) provide a nonparametric representation of functions. However, classical GP inference suffers from high computational cost for big data. In this paper, we propose a new Bayesian approach, EigenGP, that learns both basis dictionary elements--eigenfunctions of a GP prior--and prior precisions in a sparse finite model. It is well known that, among all orthogonal basis functions, eigenfunctions can provide the most compact representation. Unlike other sparse Bayesian finite models where the basis function has a fixed form, our eigenfunctions live in a reproducing kernel Hilbert space as a finite linear combination of kernel functions. We learn the dictionary elements--eigenfunctions--and the prior precisions over these elements as well as all the other hyperparameters from data by maximizing the model marginal likelihood. We explore computational linear algebra to simplify the gradient computation significantly. Our experimental results demonstrate improved predictive performance of EigenGP over alternative sparse GP methods as well as relevance vector machine.Comment: Accepted by IJCAI 201

    f(T)f(T) Theories and Varying Fine Structure Constant

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    In analogy to f(R)f(R) theory, recently a new modified gravity theory, namely the so-called f(T)f(T) theory, has been proposed to drive the current accelerated expansion without invoking dark energy. In the present work, by extending Bisabr's idea, we try to constrain f(T)f(T) theories with the varying fine structure "constant", αe2/c\alpha\equiv e^2/\hbar c. We find that the constraints on f(T)f(T) theories from the observational Δα/α\Delta\alpha/\alpha data are very severe. In fact, they make f(T)f(T) theories almost indistinguishable from Λ\LambdaCDM model.Comment: 12 pages, 4 figures, 1 table, revtex4; v2: discussions added, Phys. Lett. B in press; v3: published versio

    On Frankl and Furedi's conjecture for 3-uniform hypergraphs

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    The Lagrangian of a hypergraph has been a useful tool in hypergraph extremal problems. In most applications, we need an upper bound for the Lagrangian of a hypergraph. Frankl and Furedi in \cite{FF} conjectured that the rr-graph with mm edges formed by taking the first mm sets in the colex ordering of N(r){\mathbb N}^{(r)} has the largest Lagrangian of all rr-graphs with mm edges. In this paper, we give some partial results for this conjecture.Comment: 19 pages, 1 figure. arXiv admin note: substantial text overlap with arXiv:1211.650
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