9,022 research outputs found

    Finite 33-connected homogeneous graphs

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    A finite graph \G is said to be {\em (G,3)(G,3)-((connected)) homogeneous} if every isomorphism between any two isomorphic (connected) subgraphs of order at most 33 extends to an automorphism g∈Gg\in G of the graph, where GG is a group of automorphisms of the graph. In 1985, Cameron and Macpherson determined all finite (G,3)(G, 3)-homogeneous graphs. In this paper, we develop a method for characterising (G,3)(G,3)-connected homogeneous graphs. It is shown that for a finite (G,3)(G,3)-connected homogeneous graph \G=(V, E), either G_v^{\G(v)} is 22--transitive or G_v^{\G(v)} is of rank 33 and \G has girth 33, and that the class of finite (G,3)(G,3)-connected homogeneous graphs is closed under taking normal quotients. This leads us to study graphs where GG is quasiprimitive on VV. We determine the possible quasiprimitive types for GG in this case and give new constructions of examples for some possible types

    A Max-Norm Constrained Minimization Approach to 1-Bit Matrix Completion

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    We consider in this paper the problem of noisy 1-bit matrix completion under a general non-uniform sampling distribution using the max-norm as a convex relaxation for the rank. A max-norm constrained maximum likelihood estimate is introduced and studied. The rate of convergence for the estimate is obtained. Information-theoretical methods are used to establish a minimax lower bound under the general sampling model. The minimax upper and lower bounds together yield the optimal rate of convergence for the Frobenius norm loss. Computational algorithms and numerical performance are also discussed.Comment: 33 pages, 3 figure

    Small Covers over Prisms

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    In this paper we calculate the number of equivariant diffeomorphism classes of small covers over a prism

    Matrix Completion via Max-Norm Constrained Optimization

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    Matrix completion has been well studied under the uniform sampling model and the trace-norm regularized methods perform well both theoretically and numerically in such a setting. However, the uniform sampling model is unrealistic for a range of applications and the standard trace-norm relaxation can behave very poorly when the underlying sampling scheme is non-uniform. In this paper we propose and analyze a max-norm constrained empirical risk minimization method for noisy matrix completion under a general sampling model. The optimal rate of convergence is established under the Frobenius norm loss in the context of approximately low-rank matrix reconstruction. It is shown that the max-norm constrained method is minimax rate-optimal and yields a unified and robust approximate recovery guarantee, with respect to the sampling distributions. The computational effectiveness of this method is also discussed, based on first-order algorithms for solving convex optimizations involving max-norm regularization.Comment: 33 page
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