2,274 research outputs found

    Patent Law - License Agreements - Royalties Paid Are Not Recoverable by Licensee upon Showing of Patent Invalidity

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    Legislative Conflicts of Interest - An Analysis of the Pennsylvania Legislative Code of Ethics

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    The Paulsen Problem, Continuous Operator Scaling, and Smoothed Analysis

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    The Paulsen problem is a basic open problem in operator theory: Given vectors u1,,unRdu_1, \ldots, u_n \in \mathbb R^d that are ϵ\epsilon-nearly satisfying the Parseval's condition and the equal norm condition, is it close to a set of vectors v1,,vnRdv_1, \ldots, v_n \in \mathbb R^d that exactly satisfy the Parseval's condition and the equal norm condition? Given u1,,unu_1, \ldots, u_n, the squared distance (to the set of exact solutions) is defined as infvi=1nuivi22\inf_{v} \sum_{i=1}^n \| u_i - v_i \|_2^2 where the infimum is over the set of exact solutions. Previous results show that the squared distance of any ϵ\epsilon-nearly solution is at most O(poly(d,n,ϵ))O({\rm{poly}}(d,n,\epsilon)) and there are ϵ\epsilon-nearly solutions with squared distance at least Ω(dϵ)\Omega(d\epsilon). The fundamental open question is whether the squared distance can be independent of the number of vectors nn. We answer this question affirmatively by proving that the squared distance of any ϵ\epsilon-nearly solution is O(d13/2ϵ)O(d^{13/2} \epsilon). Our approach is based on a continuous version of the operator scaling algorithm and consists of two parts. First, we define a dynamical system based on operator scaling and use it to prove that the squared distance of any ϵ\epsilon-nearly solution is O(d2nϵ)O(d^2 n \epsilon). Then, we show that by randomly perturbing the input vectors, the dynamical system will converge faster and the squared distance of an ϵ\epsilon-nearly solution is O(d5/2ϵ)O(d^{5/2} \epsilon) when nn is large enough and ϵ\epsilon is small enough. To analyze the convergence of the dynamical system, we develop some new techniques in lower bounding the operator capacity, a concept introduced by Gurvits to analyze the operator scaling algorithm.Comment: Added Subsection 1.4; Incorporated comments and fixed typos; Minor changes in various place

    Marginal Release Under Local Differential Privacy

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    Many analysis and machine learning tasks require the availability of marginal statistics on multidimensional datasets while providing strong privacy guarantees for the data subjects. Applications for these statistics range from finding correlations in the data to fitting sophisticated prediction models. In this paper, we provide a set of algorithms for materializing marginal statistics under the strong model of local differential privacy. We prove the first tight theoretical bounds on the accuracy of marginals compiled under each approach, perform empirical evaluation to confirm these bounds, and evaluate them for tasks such as modeling and correlation testing. Our results show that releasing information based on (local) Fourier transformations of the input is preferable to alternatives based directly on (local) marginals

    Foundation and empire : a critique of Hardt and Negri

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    In this article, Thompson complements recent critiques of Hardt and Negri's Empire (see Finn Bowring in Capital and Class, no. 83) using the tools of labour process theory to critique the political economy of Empire, and to note its unfortunate similarities to conventional theories of the knowledge economy

    Global Solution to the Three-Dimensional Incompressible Flow of Liquid Crystals

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    The equations for the three-dimensional incompressible flow of liquid crystals are considered in a smooth bounded domain. The existence and uniqueness of the global strong solution with small initial data are established. It is also proved that when the strong solution exists, all the global weak solutions constructed in [16] must be equal to the unique strong solution
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