4,483 research outputs found

    Hankel Tensors: Associated Hankel Matrices and Vandermonde Decomposition

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    Hankel tensors arise from applications such as signal processing. In this paper, we make an initial study on Hankel tensors. For each Hankel tensor, we associate it with a Hankel matrix and a higher order two-dimensional symmetric tensor, which we call the associated plane tensor. If the associated Hankel matrix is positive semi-definite, we call such a Hankel tensor a strong Hankel tensor. We show that an mm order nn-dimensional tensor is a Hankel tensor if and only if it has a Vandermonde decomposition. We call a Hankel tensor a complete Hankel tensor if it has a Vandermonde decomposition with positive coefficients. We prove that if a Hankel tensor is copositive or an even order Hankel tensor is positive semi-definite, then the associated plane tensor is copositive or positive semi-definite, respectively. We show that even order strong and complete Hankel tensors are positive semi-definite, the Hadamard product of two strong Hankel tensors is a strong Hankel tensor, and the Hadamard product of two complete Hankel tensors is a complete Hankel tensor. We show that all the H-eigenvalue of a complete Hankel tensors (maybe of odd order) are nonnegative. We give some upper bounds and lower bounds for the smallest and the largest Z-eigenvalues of a Hankel tensor, respectively. Further questions on Hankel tensors are raised

    Estimation of nonlinear models with Berkson measurement errors

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    This paper is concerned with general nonlinear regression models where the predictor variables are subject to Berkson-type measurement errors. The measurement errors are assumed to have a general parametric distribution, which is not necessarily normal. In addition, the distribution of the random error in the regression equation is nonparametric. A minimum distance estimator is proposed, which is based on the first two conditional moments of the response variable given the observed predictor variables. To overcome the possible computational difficulty of minimizing an objective function which involves multiple integrals, a simulation-based estimator is constructed. Consistency and asymptotic normality for both estimators are derived under fairly general regularity conditions.Comment: Published at http://dx.doi.org/10.1214/009053604000000670 in the Annals of Statistics (http://www.imstat.org/aos/) by the Institute of Mathematical Statistics (http://www.imstat.org

    The necessary and sufficient conditions of copositive tensors

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    In this paper, it is proved that (strict) copositivity of a symmetric tensor A\mathcal{A} is equivalent to the fact that every principal sub-tensor of A\mathcal{A} has no a (non-positive) negative H++H^{++}-eigenvalue. The necessary and sufficient conditions are also given in terms of the Z++Z^{++}-eigenvalue of the principal sub-tensor of the given tensor. This presents a method of testing (strict) copositivity of a symmetric tensor by means of the lower dimensional tensors. Also the equivalent definition of strictly copositive tensors is given on entire space Rn\mathbb{R}^n.Comment: 13 pages. arXiv admin note: text overlap with arXiv:1302.608

    Convergence of a Second Order Markov Chain

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    In this paper, we consider convergence properties of a second order Markov chain. Similar to a column stochastic matrix is associated to a Markov chain, a so called {\em transition probability tensor} PP of order 3 and dimension nn is associated to a second order Markov chain with nn states. For this PP, define FPF_P as FP(x):=Px2F_P(x):=Px^{2} on the n1n-1 dimensional standard simplex Δn\Delta_n. If 1 is not an eigenvalue of FP\nabla F_P on Δn\Delta_n and PP is irreducible, then there exists a unique fixed point of FPF_P on Δn\Delta_n. In particular, if every entry of PP is greater than 12n\frac{1}{2n}, then 1 is not an eigenvalue of FP\nabla F_P on Δn\Delta_n. Under the latter condition, we further show that the second order power method for finding the unique fixed point of FPF_P on Δn\Delta_n is globally linearly convergent and the corresponding second order Markov process is globally RR-linearly convergent.Comment: 16 pages, 3 figure

    The third homology of the special linear group of a field

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    We prove that for any infinite field homology stability for the third integral homology of the special linear groups SL(n,F)SL(n,F) begins at n=3n=3. When n=2n=2 the cokernel of the map from the third homology of SL(2,F)SL(2,F) to the third homology of SL(3,F)SL(3,F) is naturally isomorphic to the square of Milnor K3K_3. We discuss applications to the indecomposable K3K_3 of the field and to Milnor-Witt K-theory.Comment: PDFLatex, 21 page
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