pace Don't worry about the rent : choosing new office space to boost business performance / Darren Bilsborough. By www.catalog.slsa.sa.gov.au Published On :: Full Article
pace The Pokémon Go phenomenon : essays on public play in contested spaces / edited by Jamie Henthorn, Andrew Kulak, Kristopher Purzycki and Stephanie Vie. By www.catalog.slsa.sa.gov.au Published On :: Pokémon Go (Game) -- Social aspects. Full Article
pace Electric waves : being researches on the propagation of electric action with finite velocity through space / by Heinrich Hertz ; authorised English translation by D.E. Jones ; with a preface by Lord Kelvin. By feedproxy.google.com Published On :: London : Macmillan, 1893. Full Article
pace Generalized bounds for active subspaces By projecteuclid.org Published On :: Mon, 17 Feb 2020 22:06 EST Mario Teixeira Parente, Jonas Wallin, Barbara Wohlmuth. Source: Electronic Journal of Statistics, Volume 14, Number 1, 917--943.Abstract: In this article, we consider scenarios in which traditional estimates for the active subspace method based on probabilistic Poincaré inequalities are not valid due to unbounded Poincaré constants. Consequently, we propose a framework that allows to derive generalized estimates in the sense that it enables to control the trade-off between the size of the Poincaré constant and a weaker order of the final error bound. In particular, we investigate independently exponentially distributed random variables in dimension two or larger and give explicit expressions for corresponding Poincaré constants showing their dependence on the dimension of the problem. Finally, we suggest possibilities for future work that aim for extending the class of distributions applicable to the active subspace method as we regard this as an opportunity to enlarge its usability. Full Article
pace Universal Latent Space Model Fitting for Large Networks with Edge Covariates By Published On :: 2020 Latent space models are effective tools for statistical modeling and visualization of network data. Due to their close connection to generalized linear models, it is also natural to incorporate covariate information in them. The current paper presents two universal fitting algorithms for networks with edge covariates: one based on nuclear norm penalization and the other based on projected gradient descent. Both algorithms are motivated by maximizing the likelihood function for an existing class of inner-product models, and we establish their statistical rates of convergence for these models. In addition, the theory informs us that both methods work simultaneously for a wide range of different latent space models that allow latent positions to affect edge formation in flexible ways, such as distance models. Furthermore, the effectiveness of the methods is demonstrated on a number of real world network data sets for different statistical tasks, including community detection with and without edge covariates, and network assisted learning. Full Article
pace The Maximum Separation Subspace in Sufficient Dimension Reduction with Categorical Response By Published On :: 2020 Sufficient dimension reduction (SDR) is a very useful concept for exploratory analysis and data visualization in regression, especially when the number of covariates is large. Many SDR methods have been proposed for regression with a continuous response, where the central subspace (CS) is the target of estimation. Various conditions, such as the linearity condition and the constant covariance condition, are imposed so that these methods can estimate at least a portion of the CS. In this paper we study SDR for regression and discriminant analysis with categorical response. Motivated by the exploratory analysis and data visualization aspects of SDR, we propose a new geometric framework to reformulate the SDR problem in terms of manifold optimization and introduce a new concept called Maximum Separation Subspace (MASES). The MASES naturally preserves the “sufficiency” in SDR without imposing additional conditions on the predictor distribution, and directly inspires a semi-parametric estimator. Numerical studies show MASES exhibits superior performance as compared with competing SDR methods in specific settings. Full Article
pace Dynamical Systems as Temporal Feature Spaces By Published On :: 2020 Parametrised state space models in the form of recurrent networks are often used in machine learning to learn from data streams exhibiting temporal dependencies. To break the black box nature of such models it is important to understand the dynamical features of the input-driving time series that are formed in the state space. We propose a framework for rigorous analysis of such state representations in vanishing memory state space models such as echo state networks (ESN). In particular, we consider the state space a temporal feature space and the readout mapping from the state space a kernel machine operating in that feature space. We show that: (1) The usual ESN strategy of randomly generating input-to-state, as well as state coupling leads to shallow memory time series representations, corresponding to cross-correlation operator with fast exponentially decaying coefficients; (2) Imposing symmetry on dynamic coupling yields a constrained dynamic kernel matching the input time series with straightforward exponentially decaying motifs or exponentially decaying motifs of the highest frequency; (3) Simple ring (cycle) high-dimensional reservoir topology specified only through two free parameters can implement deep memory dynamic kernels with a rich variety of matching motifs. We quantify richness of feature representations imposed by dynamic kernels and demonstrate that for dynamic kernel associated with cycle reservoir topology, the kernel richness undergoes a phase transition close to the edge of stability. Full Article
pace Self-paced Multi-view Co-training By Published On :: 2020 Co-training is a well-known semi-supervised learning approach which trains classifiers on two or more different views and exchanges pseudo labels of unlabeled instances in an iterative way. During the co-training process, pseudo labels of unlabeled instances are very likely to be false especially in the initial training, while the standard co-training algorithm adopts a 'draw without replacement' strategy and does not remove these wrongly labeled instances from training stages. Besides, most of the traditional co-training approaches are implemented for two-view cases, and their extensions in multi-view scenarios are not intuitive. These issues not only degenerate their performance as well as available application range but also hamper their fundamental theory. Moreover, there is no optimization model to explain the objective a co-training process manages to optimize. To address these issues, in this study we design a unified self-paced multi-view co-training (SPamCo) framework which draws unlabeled instances with replacement. Two specified co-regularization terms are formulated to develop different strategies for selecting pseudo-labeled instances during training. Both forms share the same optimization strategy which is consistent with the iteration process in co-training and can be naturally extended to multi-view scenarios. A distributed optimization strategy is also introduced to train the classifier of each view in parallel to further improve the efficiency of the algorithm. Furthermore, the SPamCo algorithm is proved to be PAC learnable, supporting its theoretical soundness. Experiments conducted on synthetic, text categorization, person re-identification, image recognition and object detection data sets substantiate the superiority of the proposed method. Full Article
pace Union of Low-Rank Tensor Spaces: Clustering and Completion By Published On :: 2020 We consider the problem of clustering and completing a set of tensors with missing data that are drawn from a union of low-rank tensor spaces. In the clustering problem, given a partially sampled tensor data that is composed of a number of subtensors, each chosen from one of a certain number of unknown tensor spaces, we need to group the subtensors that belong to the same tensor space. We provide a geometrical analysis on the sampling pattern and subsequently derive the sampling rate that guarantees the correct clustering under some assumptions with high probability. Moreover, we investigate the fundamental conditions for finite/unique completability for the union of tensor spaces completion problem. Both deterministic and probabilistic conditions on the sampling pattern to ensure finite/unique completability are obtained. For both the clustering and completion problems, our tensor analysis provides significantly better bound than the bound given by the matrix analysis applied to any unfolding of the tensor data. Full Article
pace Halfspace depth and floating body By projecteuclid.org Published On :: Fri, 21 Jun 2019 22:03 EDT Stanislav Nagy, Carsten Schütt, Elisabeth M. Werner. Source: Statistics Surveys, Volume 13, 52--118.Abstract: Little known relations of the renown concept of the halfspace depth for multivariate data with notions from convex and affine geometry are discussed. Maximum halfspace depth may be regarded as a measure of symmetry for random vectors. As such, the maximum depth stands as a generalization of a measure of symmetry for convex sets, well studied in geometry. Under a mild assumption, the upper level sets of the halfspace depth coincide with the convex floating bodies of measures used in the definition of the affine surface area for convex bodies in Euclidean spaces. These connections enable us to partially resolve some persistent open problems regarding theoretical properties of the depth. Full Article
pace The theory and application of penalized methods or Reproducing Kernel Hilbert Spaces made easy By projecteuclid.org Published On :: Tue, 16 Oct 2012 09:36 EDT Nancy HeckmanSource: Statist. Surv., Volume 6, 113--141.Abstract: The popular cubic smoothing spline estimate of a regression function arises as the minimizer of the penalized sum of squares $sum_{j}(Y_{j}-mu(t_{j}))^{2}+lambda int_{a}^{b}[mu''(t)]^{2},dt$, where the data are $t_{j},Y_{j}$, $j=1,ldots,n$. The minimization is taken over an infinite-dimensional function space, the space of all functions with square integrable second derivatives. But the calculations can be carried out in a finite-dimensional space. The reduction from minimizing over an infinite dimensional space to minimizing over a finite dimensional space occurs for more general objective functions: the data may be related to the function $mu$ in another way, the sum of squares may be replaced by a more suitable expression, or the penalty, $int_{a}^{b}[mu''(t)]^{2},dt$, might take a different form. This paper reviews the Reproducing Kernel Hilbert Space structure that provides a finite-dimensional solution for a general minimization problem. Particular attention is paid to the construction and study of the Reproducing Kernel Hilbert Space corresponding to a penalty based on a linear differential operator. In this case, one can often calculate the minimizer explicitly, using Green’s functions. Full Article
pace Data-Space Inversion Using a Recurrent Autoencoder for Time-Series Parameterization. (arXiv:2005.00061v2 [stat.ML] UPDATED) By arxiv.org Published On :: Data-space inversion (DSI) and related procedures represent a family of methods applicable for data assimilation in subsurface flow settings. These methods differ from model-based techniques in that they provide only posterior predictions for quantities (time series) of interest, not posterior models with calibrated parameters. DSI methods require a large number of flow simulations to first be performed on prior geological realizations. Given observed data, posterior predictions can then be generated directly. DSI operates in a Bayesian setting and provides posterior samples of the data vector. In this work we develop and evaluate a new approach for data parameterization in DSI. Parameterization reduces the number of variables to determine in the inversion, and it maintains the physical character of the data variables. The new parameterization uses a recurrent autoencoder (RAE) for dimension reduction, and a long-short-term memory (LSTM) network to represent flow-rate time series. The RAE-based parameterization is combined with an ensemble smoother with multiple data assimilation (ESMDA) for posterior generation. Results are presented for two- and three-phase flow in a 2D channelized system and a 3D multi-Gaussian model. The RAE procedure, along with existing DSI treatments, are assessed through comparison to reference rejection sampling (RS) results. The new DSI methodology is shown to consistently outperform existing approaches, in terms of statistical agreement with RS results. The method is also shown to accurately capture derived quantities, which are computed from variables considered directly in DSI. This requires correlation and covariance between variables to be properly captured, and accuracy in these relationships is demonstrated. The RAE-based parameterization developed here is clearly useful in DSI, and it may also find application in other subsurface flow problems. Full Article
pace Covariance Matrix Adaptation for the Rapid Illumination of Behavior Space. (arXiv:1912.02400v2 [cs.LG] UPDATED) By arxiv.org Published On :: We focus on the challenge of finding a diverse collection of quality solutions on complex continuous domains. While quality diver-sity (QD) algorithms like Novelty Search with Local Competition (NSLC) and MAP-Elites are designed to generate a diverse range of solutions, these algorithms require a large number of evaluations for exploration of continuous spaces. Meanwhile, variants of the Covariance Matrix Adaptation Evolution Strategy (CMA-ES) are among the best-performing derivative-free optimizers in single-objective continuous domains. This paper proposes a new QD algorithm called Covariance Matrix Adaptation MAP-Elites (CMA-ME). Our new algorithm combines the self-adaptation techniques of CMA-ES with archiving and mapping techniques for maintaining diversity in QD. Results from experiments based on standard continuous optimization benchmarks show that CMA-ME finds better-quality solutions than MAP-Elites; similarly, results on the strategic game Hearthstone show that CMA-ME finds both a higher overall quality and broader diversity of strategies than both CMA-ES and MAP-Elites. Overall, CMA-ME more than doubles the performance of MAP-Elites using standard QD performance metrics. These results suggest that QD algorithms augmented by operators from state-of-the-art optimization algorithms can yield high-performing methods for simultaneously exploring and optimizing continuous search spaces, with significant applications to design, testing, and reinforcement learning among other domains. Full Article
pace State Library creates a new space for Aboriginal communities to connect with their cultural heritage By feedproxy.google.com Published On :: Wed, 19 Feb 2020 23:11:15 +0000 Thursday 20 February 2020 In an Australian first, the State Library of NSW launched a new digital space for Aboriginal communities to connect with their histories and cultures. Full Article
pace Space information networks : 4th International Conference, SINC 2019, Wuzhen, China, September 19-20, 2019, Revised Selected Papers By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Author: SINC (Conference) (4th : 2019 : Wuzhen, China)Callnumber: OnlineISBN: 9789811534423 (electronic bk.) Full Article
pace Distributed estimation of principal eigenspaces By projecteuclid.org Published On :: Wed, 30 Oct 2019 22:03 EDT Jianqing Fan, Dong Wang, Kaizheng Wang, Ziwei Zhu. Source: The Annals of Statistics, Volume 47, Number 6, 3009--3031.Abstract: Principal component analysis (PCA) is fundamental to statistical machine learning. It extracts latent principal factors that contribute to the most variation of the data. When data are stored across multiple machines, however, communication cost can prohibit the computation of PCA in a central location and distributed algorithms for PCA are thus needed. This paper proposes and studies a distributed PCA algorithm: each node machine computes the top $K$ eigenvectors and transmits them to the central server; the central server then aggregates the information from all the node machines and conducts a PCA based on the aggregated information. We investigate the bias and variance for the resulting distributed estimator of the top $K$ eigenvectors. In particular, we show that for distributions with symmetric innovation, the empirical top eigenspaces are unbiased, and hence the distributed PCA is “unbiased.” We derive the rate of convergence for distributed PCA estimators, which depends explicitly on the effective rank of covariance, eigengap, and the number of machines. We show that when the number of machines is not unreasonably large, the distributed PCA performs as well as the whole sample PCA, even without full access of whole data. The theoretical results are verified by an extensive simulation study. We also extend our analysis to the heterogeneous case where the population covariance matrices are different across local machines but share similar top eigenstructures. Full Article
pace The two-to-infinity norm and singular subspace geometry with applications to high-dimensional statistics By projecteuclid.org Published On :: Fri, 02 Aug 2019 22:04 EDT Joshua Cape, Minh Tang, Carey E. Priebe. Source: The Annals of Statistics, Volume 47, Number 5, 2405--2439.Abstract: The singular value matrix decomposition plays a ubiquitous role throughout statistics and related fields. Myriad applications including clustering, classification, and dimensionality reduction involve studying and exploiting the geometric structure of singular values and singular vectors. This paper provides a novel collection of technical and theoretical tools for studying the geometry of singular subspaces using the two-to-infinity norm. Motivated by preliminary deterministic Procrustes analysis, we consider a general matrix perturbation setting in which we derive a new Procrustean matrix decomposition. Together with flexible machinery developed for the two-to-infinity norm, this allows us to conduct a refined analysis of the induced perturbation geometry with respect to the underlying singular vectors even in the presence of singular value multiplicity. Our analysis yields singular vector entrywise perturbation bounds for a range of popular matrix noise models, each of which has a meaningful associated statistical inference task. In addition, we demonstrate how the two-to-infinity norm is the preferred norm in certain statistical settings. Specific applications discussed in this paper include covariance estimation, singular subspace recovery, and multiple graph inference. Both our Procrustean matrix decomposition and the technical machinery developed for the two-to-infinity norm may be of independent interest. Full Article
pace Measuring human activity spaces from GPS data with density ranking and summary curves By projecteuclid.org Published On :: Wed, 15 Apr 2020 22:05 EDT Yen-Chi Chen, Adrian Dobra. Source: The Annals of Applied Statistics, Volume 14, Number 1, 409--432.Abstract: Activity spaces are fundamental to the assessment of individuals’ dynamic exposure to social and environmental risk factors associated with multiple spatial contexts that are visited during activities of daily living. In this paper we survey existing approaches for measuring the geometry, size and structure of activity spaces, based on GPS data, and explain their limitations. We propose addressing these shortcomings through a nonparametric approach called density ranking and also through three summary curves: the mass-volume curve, the Betti number curve and the persistence curve. We introduce a novel mixture model for human activity spaces and study its asymptotic properties. We prove that the kernel density estimator, which at the present time, is one of the most widespread methods for measuring activity spaces, is not a stable estimator of their structure. We illustrate the practical value of our methods with a simulation study and with a recently collected GPS dataset that comprises the locations visited by 10 individuals over a six months period. Full Article
pace Principal nested shape space analysis of molecular dynamics data By projecteuclid.org Published On :: Wed, 27 Nov 2019 22:01 EST Ian L. Dryden, Kwang-Rae Kim, Charles A. Laughton, Huiling Le. Source: The Annals of Applied Statistics, Volume 13, Number 4, 2213--2234.Abstract: Molecular dynamics simulations produce huge datasets of temporal sequences of molecules. It is of interest to summarize the shape evolution of the molecules in a succinct, low-dimensional representation. However, Euclidean techniques such as principal components analysis (PCA) can be problematic as the data may lie far from in a flat manifold. Principal nested spheres gives a fundamentally different decomposition of data from the usual Euclidean subspace based PCA [ Biometrika 99 (2012) 551–568]. Subspaces of successively lower dimension are fitted to the data in a backwards manner with the aim of retaining signal and dispensing with noise at each stage. We adapt the methodology to 3D subshape spaces and provide some practical fitting algorithms. The methodology is applied to cluster analysis of peptides, where different states of the molecules can be identified. Also, the temporal transitions between cluster states are explored. Full Article
pace Exponential integrability and exit times of diffusions on sub-Riemannian and metric measure spaces By projecteuclid.org Published On :: Mon, 27 Apr 2020 04:02 EDT Anton Thalmaier, James Thompson. Source: Bernoulli, Volume 26, Number 3, 2202--2225.Abstract: In this article, we derive moment estimates, exponential integrability, concentration inequalities and exit times estimates for canonical diffusions firstly on sub-Riemannian limits of Riemannian foliations and secondly in the nonsmooth setting of $operatorname{RCD}^{*}(K,N)$ spaces. In each case, the necessary ingredients are Itô’s formula and a comparison theorem for the Laplacian, for which we refer to the recent literature. As an application, we derive pointwise Carmona-type estimates on eigenfunctions of Schrödinger operators. Full Article
pace Kernel and wavelet density estimators on manifolds and more general metric spaces By projecteuclid.org Published On :: Mon, 27 Apr 2020 04:02 EDT Galatia Cleanthous, Athanasios G. Georgiadis, Gerard Kerkyacharian, Pencho Petrushev, Dominique Picard. Source: Bernoulli, Volume 26, Number 3, 1832--1862.Abstract: We consider the problem of estimating the density of observations taking values in classical or nonclassical spaces such as manifolds and more general metric spaces. Our setting is quite general but also sufficiently rich in allowing the development of smooth functional calculus with well localized spectral kernels, Besov regularity spaces, and wavelet type systems. Kernel and both linear and nonlinear wavelet density estimators are introduced and studied. Convergence rates for these estimators are established and discussed. Full Article
pace Dynamic linear discriminant analysis in high dimensional space By projecteuclid.org Published On :: Fri, 31 Jan 2020 04:06 EST Binyan Jiang, Ziqi Chen, Chenlei Leng. Source: Bernoulli, Volume 26, Number 2, 1234--1268.Abstract: High-dimensional data that evolve dynamically feature predominantly in the modern data era. As a partial response to this, recent years have seen increasing emphasis to address the dimensionality challenge. However, the non-static nature of these datasets is largely ignored. This paper addresses both challenges by proposing a novel yet simple dynamic linear programming discriminant (DLPD) rule for binary classification. Different from the usual static linear discriminant analysis, the new method is able to capture the changing distributions of the underlying populations by modeling their means and covariances as smooth functions of covariates of interest. Under an approximate sparse condition, we show that the conditional misclassification rate of the DLPD rule converges to the Bayes risk in probability uniformly over the range of the variables used for modeling the dynamics, when the dimensionality is allowed to grow exponentially with the sample size. The minimax lower bound of the estimation of the Bayes risk is also established, implying that the misclassification rate of our proposed rule is minimax-rate optimal. The promising performance of the DLPD rule is illustrated via extensive simulation studies and the analysis of a breast cancer dataset. Full Article
pace Convergence and concentration of empirical measures under Wasserstein distance in unbounded functional spaces By projecteuclid.org Published On :: Tue, 26 Nov 2019 04:00 EST Jing Lei. Source: Bernoulli, Volume 26, Number 1, 767--798.Abstract: We provide upper bounds of the expected Wasserstein distance between a probability measure and its empirical version, generalizing recent results for finite dimensional Euclidean spaces and bounded functional spaces. Such a generalization can cover Euclidean spaces with large dimensionality, with the optimal dependence on the dimensionality. Our method also covers the important case of Gaussian processes in separable Hilbert spaces, with rate-optimal upper bounds for functional data distributions whose coordinates decay geometrically or polynomially. Moreover, our bounds of the expected value can be combined with mean-concentration results to yield improved exponential tail probability bounds for the Wasserstein error of empirical measures under Bernstein-type or log Sobolev-type conditions. Full Article
pace Subspace perspective on canonical correlation analysis: Dimension reduction and minimax rates By projecteuclid.org Published On :: Tue, 26 Nov 2019 04:00 EST Zhuang Ma, Xiaodong Li. Source: Bernoulli, Volume 26, Number 1, 432--470.Abstract: Canonical correlation analysis (CCA) is a fundamental statistical tool for exploring the correlation structure between two sets of random variables. In this paper, motivated by the recent success of applying CCA to learn low dimensional representations of high dimensional objects, we propose two losses based on the principal angles between the model spaces spanned by the sample canonical variates and their population correspondents, respectively. We further characterize the non-asymptotic error bounds for the estimation risks under the proposed error metrics, which reveal how the performance of sample CCA depends adaptively on key quantities including the dimensions, the sample size, the condition number of the covariance matrices and particularly the population canonical correlation coefficients. The optimality of our uniform upper bounds is also justified by lower-bound analysis based on stringent and localized parameter spaces. To the best of our knowledge, for the first time our paper separates $p_{1}$ and $p_{2}$ for the first order term in the upper bounds without assuming the residual correlations are zeros. More significantly, our paper derives $(1-lambda_{k}^{2})(1-lambda_{k+1}^{2})/(lambda_{k}-lambda_{k+1})^{2}$ for the first time in the non-asymptotic CCA estimation convergence rates, which is essential to understand the behavior of CCA when the leading canonical correlation coefficients are close to $1$. Full Article
pace SPDEs with fractional noise in space: Continuity in law with respect to the Hurst index By projecteuclid.org Published On :: Tue, 26 Nov 2019 04:00 EST Luca M. Giordano, Maria Jolis, Lluís Quer-Sardanyons. Source: Bernoulli, Volume 26, Number 1, 352--386.Abstract: In this article, we consider the quasi-linear stochastic wave and heat equations on the real line and with an additive Gaussian noise which is white in time and behaves in space like a fractional Brownian motion with Hurst index $Hin (0,1)$. The drift term is assumed to be globally Lipschitz. We prove that the solution of each of the above equations is continuous in terms of the index $H$, with respect to the convergence in law in the space of continuous functions. Full Article
pace Model Criticism in Latent Space By projecteuclid.org Published On :: Tue, 11 Jun 2019 04:00 EDT Sohan Seth, Iain Murray, Christopher K. I. Williams. Source: Bayesian Analysis, Volume 14, Number 3, 703--725.Abstract: Model criticism is usually carried out by assessing if replicated data generated under the fitted model looks similar to the observed data, see e.g. Gelman, Carlin, Stern, and Rubin (2004, p. 165). This paper presents a method for latent variable models by pulling back the data into the space of latent variables, and carrying out model criticism in that space. Making use of a model's structure enables a more direct assessment of the assumptions made in the prior and likelihood. We demonstrate the method with examples of model criticism in latent space applied to factor analysis, linear dynamical systems and Gaussian processes. Full Article
pace The Geometry of Continuous Latent Space Models for Network Data By projecteuclid.org Published On :: Fri, 11 Oct 2019 04:03 EDT Anna L. Smith, Dena M. Asta, Catherine A. Calder. Source: Statistical Science, Volume 34, Number 3, 428--453.Abstract: We review the class of continuous latent space (statistical) models for network data, paying particular attention to the role of the geometry of the latent space. In these models, the presence/absence of network dyadic ties are assumed to be conditionally independent given the dyads’ unobserved positions in a latent space. In this way, these models provide a probabilistic framework for embedding network nodes in a continuous space equipped with a geometry that facilitates the description of dependence between random dyadic ties. Specifically, these models naturally capture homophilous tendencies and triadic clustering, among other common properties of observed networks. In addition to reviewing the literature on continuous latent space models from a geometric perspective, we highlight the important role the geometry of the latent space plays on properties of networks arising from these models via intuition and simulation. Finally, we discuss results from spectral graph theory that allow us to explore the role of the geometry of the latent space, independent of network size. We conclude with conjectures about how these results might be used to infer the appropriate latent space geometry from observed networks. Full Article
pace A Kernel Regression Procedure in the 3D Shape Space with an Application to Online Sales of Children’s Wear By projecteuclid.org Published On :: Thu, 18 Jul 2019 22:01 EDT Gregorio Quintana-Ortí, Amelia Simó. Source: Statistical Science, Volume 34, Number 2, 236--252.Abstract: This paper is focused on kernel regression when the response variable is the shape of a 3D object represented by a configuration matrix of landmarks. Regression methods on this shape space are not trivial because this space has a complex finite-dimensional Riemannian manifold structure (non-Euclidean). Papers about it are scarce in the literature, the majority of them are restricted to the case of a single explanatory variable, and many of them are based on the approximated tangent space. In this paper, there are several methodological innovations. The first one is the adaptation of the general method for kernel regression analysis in manifold-valued data to the three-dimensional case of Kendall’s shape space. The second one is its generalization to the multivariate case and the addressing of the curse-of-dimensionality problem. Finally, we propose bootstrap confidence intervals for prediction. A simulation study is carried out to check the goodness of the procedure, and a comparison with a current approach is performed. Then, it is applied to a 3D database obtained from an anthropometric survey of the Spanish child population with a potential application to online sales of children’s wear. Full Article
pace Quinoa breaches the boundaries of outer space By www.fao.org Published On :: Wed, 15 Apr 2015 00:00:00 GMT It’s been around for thousands of years; the UN General Assembly named an international year for it in 2013; and now it has been sent into space. Quinoa is a superfood in more ways than one. It is a good source of protein, the highest of all the whole grains; and its edible seeds provide all of the essential amino acids the body [...] Full Article
pace I Was Among the Lucky Few to Walk in Space By www.smithsonianmag.com Published On :: Thu, 08 Jan 2015 20:35:57 +0000 On July 31, 1971, Al Worden performed the first deep-space extra-vehicular activity. "No one in all of history" saw what he saw that day Full Article
pace Why Microsoft Word Now Considers Two Spaces After a Period an Error By www.smithsonianmag.com Published On :: Mon, 27 Apr 2020 14:27:05 +0000 Traditionalist "two-spacers" can still disable the function Full Article
pace How to Watch the National Air and Space Museum's Free Virtual Concert By www.smithsonianmag.com Published On :: Thu, 30 Apr 2020 11:00:00 +0000 Catch the musical event, featuring Sting, Death Cab for Cutie front man Ben Gibbard and other artists, on YouTube tonight at 8 p.m. Eastern time Full Article
pace Rockets!: Disney's Man in Space Remix [2m00s] By www.youtube.com Published On :: Follow Disney on Twitter: http://bit.ly/FollowDisney 3, 2, 1...Blast off! Enter Tomorrowland and join Walt Disney in space. This never-before-seen [...] Full Article
pace Disneyland - 1.20 - Man in Space - Part 1 of 4 [15m00s] By www.youtube.com Published On :: Walt Disney began hosting his own television show for ABC in 1954 in an unusual contract: Disney provided ABC with a weekly hour-long television [...] Full Article
pace Space for God to speak By feedproxy.google.com Published On :: Fri, 09 Aug 2019 05:45:44 +0000 The Art Zone is a place where teens can creatively express themselves and their worship for God. For Saskia, art is a way to quiet her mind and let God speak. Full Article
pace See the Full Flower Moon, last supermoon of 2020, bloom in these stunning photos – Space.com By rss-newsfeed.india-meets-classic.net Published On :: Fri, 08 May 2020 22:02:00 +0000 See the Full Flower Moon, last supermoon of 2020, bloom in these stunning photos Space.comIn Pictures: 'Full-flower supermoon' amid coronavirus lockdowns Aljazeera.comIn pics | Last supermoon in 2020: Stunning views from around th... Full Article IMC News Feed
pace Canadian Duvernay-Tardif reworks contract to give NFL's Chiefs cap space By www.cbc.ca Published On :: Thu, 23 Apr 2020 12:38:37 EDT Laurent Duvernay-Tardif and the Kansas City Chiefs have agreed to a restructured deal for the Canadian offensive lineman. Full Article Sports/Football/NFL
pace Squarespace By www.pcmag.com Published On :: Squarespace offers numerous useful tools for building attractive, functional sites for personal and small business use. Users will need to rebuild their sites if they want to upgrade to the latest version of the service, however. Full Article
pace She talks for the animals: as Veganuary gathers pace, PETA founder Ingrid Newkirk on her 40 year fight for their rights and why her new book shows the way ahead By www.heraldscotland.com Published On :: Sun, 19 Jan 2020 05:02:51 +0000 Ingrid Newkirk isn’t sure exactly how many times she has been arrested. “Definitely a few dozen,” she’ll say, if you ask. I’ve just done exactly that, so right now the British-born founder of People for the Ethical Treatment of Animals (PETA) is running me through a sort of greatest hits of her law-baiting exploits and the jailtime they have brought her in the name of animal rights. Full Article
pace Millie Small set the pace By www.jamaicaobserver.com Published On :: Thu, 7, May, 2020 07:01:00 GMT Millie Small, who died Tuesday at age 73 in London, was the first Jamaican artiste to score a hit on the British pop chart. Her version of My Boy Lollipop reached number two in 1964 and was also successful in the United States, Ireland, Canada, Australia, and New Zealand. Full Article Entertainment Local Entertainment Music Slider
pace Coronavirus: Scottish Government urged to help allocate more space for cyclists on roads By www.heraldscotland.com Published On :: Tue, 28 Apr 2020 05:00:00 +0100 THE SCOTTISH Government has been urged to empower the country’s towns and cities can be transformed into healthier hubs for walking and cycling amid the Covid-19 pandemic. Full Article
pace Teacher-Candidates Get a Safe Space to Air Touchy Issues of Identity By feedproxy.google.com Published On :: Tue, 03 Mar 2020 00:00:00 +0000 Affinity groups known as caucuses let teacher-candidates at the University of Washington gather with others who share part of their identity, such as race, ethnicity, gender, or sexual orientation. Full Article Diversity
pace Ed-Tech Trends to Look for in 2015: Project-Based Learning, Maker Spaces By feedproxy.google.com Published On :: Mon, 29 Jun 2015 00:00:00 +0000 Maker-spaces, adaptive learning, and wearable technologies are among the ed-tech trends to keep an eye on in the next few years, a new report says. Full Article Entrepreneurship
pace Closely Spaced Pregnancies Are Associated With Increased Odds of Autism in California Sibling Births By pediatrics.aappublications.org Published On :: 2011-01-10T04:01:22-08:00 Autism has been associated with pregnancy and birth complications that may indicate a suboptimal prenatal environment. Although the interpregnancy interval (IPI) may affect the prenatal environment, the association between the IPI and risk for autism is not known. Using full-sibling pairs from a large population, the authors examined the association between autism and IPIs. Second-born children conceived after an IPI of <12 months had more than threefold increased odds of autism relative to those with IPIs of ≥36 months. (Read the full article) Full Article
pace Cremer group developing sensors to detect coronavirus in enclosed spaces By news.psu.edu Published On :: Tue, 28 Apr 2020 10:06 -0400 Professor of Chemistry Paul Cremer is developing a biosensor platform that could be used to perform real-time, continuous detection of SARS-CoV-2, the virus that causes COVID-19. Full Article
pace Fin24.com | Gold bars fight coronavirus kits for space on the plane By www.fin24.com Published On :: Sun, 03 May 2020 12:27:11 +0200 Swiss refiner Valcambi SA tried for five straight days last month to move a shipment of gold out of Hong Kong. Twice the metal was packed carefully onto a plane, only to be offloaded again. Full Article
pace Penn State Health resumes construction to convert space to outpatient care By news.psu.edu Published On :: Mon, 20 Apr 2020 14:50 -0400 Penn State Health today resumed construction of Penn State Health Cocoa Outpatient Center, an expansion of medical services at the former CocoaPlex Center location. Full Article
pace How to Free Up Space on Your Apple Watch By www.pcmag.com Published On :: If you're running out of room on your Apple Watch, get rid of specific apps and content you no longer need. Here's how to free up space from the Watch app and the device. Full Article
pace SpaceX's Satellite Internet Plans for Mid-2020 Launch in the US By www.pcmag.com Published On :: The company's goal is to launch six to eight additional batches of satellites over the next months so that the broadband service has sufficient coverage for the US market. Full Article