2,615 research outputs found

    CR eigenvalue estimate and Kohn-Rossi cohomology

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    Let XX be a compact connected CR manifold with a transversal CR S1S^1-action of dimension 2nβˆ’12n-1, which is only assumed to be weakly pseudoconvex. Let β–‘b\Box_b be the βˆ‚β€Ύb\overline{\partial}_b-Laplacian. Eigenvalue estimate of β–‘b\Box_b is a fundamental issue both in CR geometry and analysis. In this paper, we are able to obtain a sharp estimate of the number of eigenvalues smaller than or equal to Ξ»\lambda of β–‘b\Box_b acting on the mm-th Fourier components of smooth (nβˆ’1,q)(n-1,q)-forms on XX, where m∈Z+m\in \mathbb{Z}_+ and q=0,1,⋯ ,nβˆ’1q=0,1,\cdots, n-1. Here the sharp means the growth order with respect to mm is sharp. In particular, when Ξ»=0\lambda=0, we obtain the asymptotic estimate of the growth for mm-th Fourier components Hb,mnβˆ’1,q(X)H^{n-1,q}_{b,m}(X) of Hbnβˆ’1,q(X)H^{n-1,q}_b(X) as mβ†’+∞m \rightarrow +\infty. Furthermore, we establish a Serre type duality theorem for Fourier components of Kohn-Rossi cohomology which is of independent interest. As a byproduct, the asymptotic growth of the dimensions of the Fourier components Hb,βˆ’m0,q(X)H^{0,q}_{b,-m}(X) for m∈Z+ m\in \mathbb{Z}_+ is established. Compared with previous results in this field, the estimate for Ξ»=0\lambda=0 already improves very much the corresponding estimate of Hsiao and Li . We also give appilcations of our main results, including Morse type inequalities, asymptotic Riemann-Roch type theorem, Grauert-Riemenscheider type criterion, and an orbifold version of our main results which answers an open problem.Comment: 39 pages, submitted on January 17, 2018. Comments welcome! arXiv admin note: text overlap with arXiv:1506.06459, arXiv:1502.02365 by other author

    No penalty no tears: Least squares in high-dimensional linear models

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    Ordinary least squares (OLS) is the default method for fitting linear models, but is not applicable for problems with dimensionality larger than the sample size. For these problems, we advocate the use of a generalized version of OLS motivated by ridge regression, and propose two novel three-step algorithms involving least squares fitting and hard thresholding. The algorithms are methodologically simple to understand intuitively, computationally easy to implement efficiently, and theoretically appealing for choosing models consistently. Numerical exercises comparing our methods with penalization-based approaches in simulations and data analyses illustrate the great potential of the proposed algorithms.Comment: Added results for non-sparse models; Added results for elliptical distribution; Added simulations for adaptive lass
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