76 research outputs found

    Likelihood test in permutations with bias. Premier League and La Liga: surprises during the last 25 seasons

    Get PDF
    In this paper, we introduce the models of permutations with bias, which are random permutations of a set, biased by some preference values. We present a new parametric test, together with an efficient way to calculate its p-value. The final tables of the English and Spanish major soccer leagues are tested according to this new procedure, to discover whether these results were aligned with expectations.Comment: Bibliography updated. Thanks to Prof Karlsson to have suggested the paper [8] H. Stern. Models for distributions on permutations. JASA (1990

    A canonical form for Gaussian periodic processes

    Full text link
    This article provides a representation theorem for a set of Gaussian processes; this theorem allows to build Gaussian processes with arbitrary regularity and to write them as limit of random trigonometric series. We show via Karhunen-Love theorem that this set is isometrically equivalent to l2. We then prove that regularity of trajectory path of anyone of such processes can be detected just by looking at decrease rate of l2 sequence associated to him via isometry.Comment: 11 pages, 1 figur

    A clustering algorithm for multivariate data streams with correlated components

    Get PDF
    Common clustering algorithms require multiple scans of all the data to achieve convergence, and this is prohibitive when large databases, with data arriving in streams, must be processed. Some algorithms to extend the popular K-means method to the analysis of streaming data are present in literature since 1998 (Bradley et al. in Scaling clustering algorithms to large databases. In: KDD. p. 9-15, 1998; O'Callaghan et al. in Streaming-data algorithms for high-quality clustering. In: Proceedings of IEEE international conference on data engineering. p. 685, 2001), based on the memorization and recursive update of a small number of summary statistics, but they either don't take into account the specific variability of the clusters, or assume that the random vectors which are processed and grouped have uncorrelated components. Unfortunately this is not the case in many practical situations. We here propose a new algorithm to process data streams, with data having correlated components and coming from clusters with different covariance matrices. Such covariance matrices are estimated via an optimal double shrinkage method, which provides positive definite estimates even in presence of a few data points, or of data having components with small variance. This is needed to invert the matrices and compute the Mahalanobis distances that we use for the data assignment to the clusters. We also estimate the total number of clusters from the data.Comment: title changed, rewritte

    A decomposition theorem for fuzzy set-valued random variables and a characterization of fuzzy random translation

    Get PDF
    Let XX be a fuzzy set--valued random variable (\frv{}), and \huku{X} the family of all fuzzy sets BB for which the Hukuhara difference X\HukuDiff B exists P\mathbb{P}--almost surely. In this paper, we prove that XX can be decomposed as X(\omega)=C\Mink Y(\omega) for P\mathbb{P}--almost every ω∈Ω\omega\in\Omega, CC is the unique deterministic fuzzy set that minimizes E[d2(X,B)2]\mathbb{E}[d_2(X,B)^2] as BB is varying in \huku{X}, and YY is a centered \frv{} (i.e. its generalized Steiner point is the origin). This decomposition allows us to characterize all \frv{} translation (i.e. X(\omega) = M \Mink \indicator{\xi(\omega)} for some deterministic fuzzy convex set MM and some random element in \Banach). In particular, XX is an \frv{} translation if and only if the Aumann expectation EX\mathbb{E}X is equal to CC up to a translation. Examples, such as the Gaussian case, are provided.Comment: 12 pages, 1 figure. v2: minor revision. v3: minor revision; references, affiliation and acknowledgments added. Submitted versio

    A new nonlocal nonlinear diffusion equation for image denoising and data analysis

    Get PDF
    In this paper we introduce and study a new feature-preserving nonlinear anisotropic diffusion for denoising signals. The proposed partial differential equation is based on a novel diffusivity coefficient that uses a nonlocal automatically detected parameter related to the local bounded variation and the local oscillating pattern of the noisy input signal. We provide a mathematical analysis of the existence of the solution of our nonlinear and nonlocal diffusion equation in the two dimensional case (images processing). Finally, we propose a numerical scheme with some numerical experiments which demonstrate the effectiveness of the new method

    Fractional Poisson Fields and Martingales

    Get PDF
    We present new properties for the Fractional Poisson process and the Fractional Poisson field on the plane. A martingale characterization for Fractional Poisson processes is given. We extend this result to Fractional Poisson fields, obtaining some other characterizations. The fractional differential equations are studied. We consider a more general Mixed-Fractional Poisson process and show that this process is the stochastic solution of a system of fractional differential-difference equations. Finally, we give some simulations of the Fractional Poisson field on the plane
    • …
    corecore