tri Training and Classification using a Restricted Boltzmann Machine on the D-Wave 2000Q. (arXiv:2005.03247v1 [cs.LG]) By arxiv.org Published On :: Restricted Boltzmann Machine (RBM) is an energy based, undirected graphical model. It is commonly used for unsupervised and supervised machine learning. Typically, RBM is trained using contrastive divergence (CD). However, training with CD is slow and does not estimate exact gradient of log-likelihood cost function. In this work, the model expectation of gradient learning for RBM has been calculated using a quantum annealer (D-Wave 2000Q), which is much faster than Markov chain Monte Carlo (MCMC) used in CD. Training and classification results are compared with CD. The classification accuracy results indicate similar performance of both methods. Image reconstruction as well as log-likelihood calculations are used to compare the performance of quantum and classical algorithms for RBM training. It is shown that the samples obtained from quantum annealer can be used to train a RBM on a 64-bit `bars and stripes' data set with classification performance similar to a RBM trained with CD. Though training based on CD showed improved learning performance, training using a quantum annealer eliminates computationally expensive MCMC steps of CD. Full Article
tri Fast multivariate empirical cumulative distribution function with connection to kernel density estimation. (arXiv:2005.03246v1 [cs.DS]) By arxiv.org Published On :: This paper revisits the problem of computing empirical cumulative distribution functions (ECDF) efficiently on large, multivariate datasets. Computing an ECDF at one evaluation point requires $mathcal{O}(N)$ operations on a dataset composed of $N$ data points. Therefore, a direct evaluation of ECDFs at $N$ evaluation points requires a quadratic $mathcal{O}(N^2)$ operations, which is prohibitive for large-scale problems. Two fast and exact methods are proposed and compared. The first one is based on fast summation in lexicographical order, with a $mathcal{O}(N{log}N)$ complexity and requires the evaluation points to lie on a regular grid. The second one is based on the divide-and-conquer principle, with a $mathcal{O}(Nlog(N)^{(d-1){vee}1})$ complexity and requires the evaluation points to coincide with the input points. The two fast algorithms are described and detailed in the general $d$-dimensional case, and numerical experiments validate their speed and accuracy. Secondly, the paper establishes a direct connection between cumulative distribution functions and kernel density estimation (KDE) for a large class of kernels. This connection paves the way for fast exact algorithms for multivariate kernel density estimation and kernel regression. Numerical tests with the Laplacian kernel validate the speed and accuracy of the proposed algorithms. A broad range of large-scale multivariate density estimation, cumulative distribution estimation, survival function estimation and regression problems can benefit from the proposed numerical methods. Full Article
tri Classification of pediatric pneumonia using chest X-rays by functional regression. (arXiv:2005.03243v1 [stat.AP]) By arxiv.org Published On :: An accurate and prompt diagnosis of pediatric pneumonia is imperative for successful treatment intervention. One approach to diagnose pneumonia cases is using radiographic data. In this article, we propose a novel parsimonious scalar-on-image classification model adopting the ideas of functional data analysis. Our main idea is to treat images as functional measurements and exploit underlying covariance structures to select basis functions; these bases are then used in approximating both image profiles and corresponding regression coefficient. We re-express the regression model into a standard generalized linear model where the functional principal component scores are treated as covariates. We apply the method to (1) classify pneumonia against healthy and viral against bacterial pneumonia patients, and (2) test the null effect about the association between images and responses. Extensive simulation studies show excellent numerical performance in terms of classification, hypothesis testing, and efficient computation. Full Article
tri Model Reduction and Neural Networks for Parametric PDEs. (arXiv:2005.03180v1 [math.NA]) By arxiv.org Published On :: We develop a general framework for data-driven approximation of input-output maps between infinite-dimensional spaces. The proposed approach is motivated by the recent successes of neural networks and deep learning, in combination with ideas from model reduction. This combination results in a neural network approximation which, in principle, is defined on infinite-dimensional spaces and, in practice, is robust to the dimension of finite-dimensional approximations of these spaces required for computation. For a class of input-output maps, and suitably chosen probability measures on the inputs, we prove convergence of the proposed approximation methodology. Numerically we demonstrate the effectiveness of the method on a class of parametric elliptic PDE problems, showing convergence and robustness of the approximation scheme with respect to the size of the discretization, and compare our method with existing algorithms from the literature. Full Article
tri Entries open for State Library’s $20,000 short film competition By feedproxy.google.com Published On :: Thu, 21 Nov 2019 05:39:54 +0000 Thursday 21 November 2019 The State Library of NSW is inviting entries for its short film prize Shortstacks, with a total of $20,000 on offer across two categories. Full Article
tri Entries now open for the 2020 National Biography Award By feedproxy.google.com Published On :: Mon, 09 Dec 2019 23:38:42 +0000 Tuesday 10 December 2019 Entries are now open for the 2020 National Biography Award – Australia's richest prize for biography and memoir writing. Full Article
tri Entries open for $40,000 award for female scriptwriters By feedproxy.google.com Published On :: Thu, 05 Mar 2020 23:11:18 +0000 Friday 6 March 2020 Nominations opened for the 2020 Mona Brand Award for Women Stage and Screen Writers. Full Article
tri Semi-Parametric Joint Modeling of Survival and Longitudinal Data: The R Package JSM By www.jstatsoft.org Published On :: Sat, 18 Apr 2020 03:35:08 +0000 This paper is devoted to the R package JSM which performs joint statistical modeling of survival and longitudinal data. In biomedical studies it has been increasingly common to collect both baseline and longitudinal covariates along with a possibly censored survival time. Instead of analyzing the survival and longitudinal outcomes separately, joint modeling approaches have attracted substantive attention in the recent literature and have been shown to correct biases from separate modeling approaches and enhance information. Most existing approaches adopt a linear mixed effects model for the longitudinal component and the Cox proportional hazards model for the survival component. We extend the Cox model to a more general class of transformation models for the survival process, where the baseline hazard function is completely unspecified leading to semiparametric survival models. We also offer a non-parametric multiplicative random effects model for the longitudinal process in JSM in addition to the linear mixed effects model. In this paper, we present the joint modeling framework that is implemented in JSM, as well as the standard error estimation methods, and illustrate the package with two real data examples: a liver cirrhosis data and a Mayo Clinic primary biliary cirrhosis data. Full Article
tri Theranostics approaches to gastric and colon cancer By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Callnumber: OnlineISBN: 9789811520174 (electronic bk.) Full Article
tri Terrestrial hermit crab populations in the Maldives : ecology, distribution and anthropogenic impact By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Author: Steibl, Sebastian, authorCallnumber: OnlineISBN: 9783658295417 (electronic bk.) Full Article
tri Sustainability of the food system : sovereignty, waste, and nutrients bioavailability By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Callnumber: OnlineISBN: 9780128182949 (electronic bk.) Full Article
tri Staying out of trouble in pediatric orthopaedics By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Author: Skaggs, David L., author.Callnumber: OnlineISBN: 9781975103958 (hardback) Full Article
tri Salt, fat and sugar reduction : sensory approaches for nutritional reformulation of foods and beverages By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Author: O'Sullivan, Maurice G., authorCallnumber: OnlineISBN: 9780128226124 (electronic bk.) Full Article
tri Pediatric surgery : a quick guide to decision-making By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Author: Roy Choudhury, Subhasis, author.Callnumber: OnlineISBN: 9789811063046 (electronic bk.) Full Article
tri Pediatric restorative dentistry By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Callnumber: OnlineISBN: 9783319934266 (electronic bk.) Full Article
tri Pediatric radiation oncology By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Callnumber: OnlineISBN: 9783319435459 (electronic bk.) Full Article
tri Pediatric pelvic and proximal femoral osteotomies By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Callnumber: OnlineISBN: 9783319780337 978-3-319-78033-7 Full Article
tri Pediatric liver intensive care By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Callnumber: OnlineISBN: 9789811313042 (electronic bk.) Full Article
tri Pediatric injectable drugs : the teddy bear book By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Callnumber: OnlineISBN: 9781585285402 (electronic bk.) Full Article
tri Pediatric critical care : current controversies By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Callnumber: OnlineISBN: 9783319964997 (electronic bk.) Full Article
tri Pediatric allergy : a case-based collection with MCQs. By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Callnumber: OnlineISBN: 9783030182823 (electronic bk.) Full Article
tri Nutritional and health aspects of food in South Asian countries By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Callnumber: OnlineISBN: 9780128200124 (electronic bk.) Full Article
tri Lovell and Winter's pediatric orthopaedics By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Callnumber: OnlineISBN: 9781975108663 (hardcover) Full Article
tri Information retrieval technology : 15th Asia Information Retrieval Societies Conference, AIRS 2019, Hong Kong, China, November 7-9, 2019, proceedings By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Author: Asia Information Retrieval Societies Conference (15th : 2019 : Hong Kong, China)Callnumber: OnlineISBN: 9783030428358 Full Article
tri Handbook of optimization in electric power distribution systems By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Callnumber: OnlineISBN: 9783030361150 Full Article
tri Geriatric Medicine : a Problem-Based Approach By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Callnumber: OnlineISBN: 9789811032530 Full Article
tri Feed additives : aromatic plants and herbs in animal nutrition and health By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Callnumber: OnlineISBN: 9780128147016 (electronic bk.) Full Article
tri Cutaneous biometrics By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Callnumber: OnlineISBN: 9783319565910 (electronic bk.) Full Article
tri Biosystematics of Triticeae. By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Author: Yen, Chi, authorCallnumber: OnlineISBN: 9789811399312 (electronic bk.) Full Article
tri Aquatic biopolymers : understanding their industrial significance and environmental implications By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Author: Olatunji, Ololade.Callnumber: OnlineISBN: 9783030347093 (electronic bk.) Full Article
tri Agri-food industry strategies for healthy diets and sustainability : new challenges in nutrition and public health By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Callnumber: OnlineISBN: 9780128172261 Full Article
tri Advanced age geriatric care : a comprehensive guide By dal.novanet.ca Published On :: Fri, 1 May 2020 19:44:43 -0300 Callnumber: OnlineISBN: 9783319969985 (electronic bk.) Full Article
tri Averages of unlabeled networks: Geometric characterization and asymptotic behavior By projecteuclid.org Published On :: Mon, 17 Feb 2020 04:02 EST Eric D. Kolaczyk, Lizhen Lin, Steven Rosenberg, Jackson Walters, Jie Xu. Source: The Annals of Statistics, Volume 48, Number 1, 514--538.Abstract: It is becoming increasingly common to see large collections of network data objects, that is, data sets in which a network is viewed as a fundamental unit of observation. As a result, there is a pressing need to develop network-based analogues of even many of the most basic tools already standard for scalar and vector data. In this paper, our focus is on averages of unlabeled, undirected networks with edge weights. Specifically, we (i) characterize a certain notion of the space of all such networks, (ii) describe key topological and geometric properties of this space relevant to doing probability and statistics thereupon, and (iii) use these properties to establish the asymptotic behavior of a generalized notion of an empirical mean under sampling from a distribution supported on this space. Our results rely on a combination of tools from geometry, probability theory and statistical shape analysis. In particular, the lack of vertex labeling necessitates working with a quotient space modding out permutations of labels. This results in a nontrivial geometry for the space of unlabeled networks, which in turn is found to have important implications on the types of probabilistic and statistical results that may be obtained and the techniques needed to obtain them. Full Article
tri The multi-armed bandit problem: An efficient nonparametric solution By projecteuclid.org Published On :: Mon, 17 Feb 2020 04:02 EST Hock Peng Chan. Source: The Annals of Statistics, Volume 48, Number 1, 346--373.Abstract: Lai and Robbins ( Adv. in Appl. Math. 6 (1985) 4–22) and Lai ( Ann. Statist. 15 (1987) 1091–1114) provided efficient parametric solutions to the multi-armed bandit problem, showing that arm allocation via upper confidence bounds (UCB) achieves minimum regret. These bounds are constructed from the Kullback–Leibler information of the reward distributions, estimated from specified parametric families. In recent years, there has been renewed interest in the multi-armed bandit problem due to new applications in machine learning algorithms and data analytics. Nonparametric arm allocation procedures like $epsilon $-greedy, Boltzmann exploration and BESA were studied, and modified versions of the UCB procedure were also analyzed under nonparametric settings. However, unlike UCB these nonparametric procedures are not efficient under general parametric settings. In this paper, we propose efficient nonparametric procedures. Full Article
tri Spectral and matrix factorization methods for consistent community detection in multi-layer networks By projecteuclid.org Published On :: Mon, 17 Feb 2020 04:02 EST Subhadeep Paul, Yuguo Chen. Source: The Annals of Statistics, Volume 48, Number 1, 230--250.Abstract: We consider the problem of estimating a consensus community structure by combining information from multiple layers of a multi-layer network using methods based on the spectral clustering or a low-rank matrix factorization. As a general theme, these “intermediate fusion” methods involve obtaining a low column rank matrix by optimizing an objective function and then using the columns of the matrix for clustering. However, the theoretical properties of these methods remain largely unexplored. In the absence of statistical guarantees on the objective functions, it is difficult to determine if the algorithms optimizing the objectives will return good community structures. We investigate the consistency properties of the global optimizer of some of these objective functions under the multi-layer stochastic blockmodel. For this purpose, we derive several new asymptotic results showing consistency of the intermediate fusion techniques along with the spectral clustering of mean adjacency matrix under a high dimensional setup, where the number of nodes, the number of layers and the number of communities of the multi-layer graph grow. Our numerical study shows that the intermediate fusion techniques outperform late fusion methods, namely spectral clustering on aggregate spectral kernel and module allegiance matrix in sparse networks, while they outperform the spectral clustering of mean adjacency matrix in multi-layer networks that contain layers with both homophilic and heterophilic communities. Full Article
tri Two-step semiparametric empirical likelihood inference By projecteuclid.org Published On :: Mon, 17 Feb 2020 04:02 EST Francesco Bravo, Juan Carlos Escanciano, Ingrid Van Keilegom. Source: The Annals of Statistics, Volume 48, Number 1, 1--26.Abstract: In both parametric and certain nonparametric statistical models, the empirical likelihood ratio satisfies a nonparametric version of Wilks’ theorem. For many semiparametric models, however, the commonly used two-step (plug-in) empirical likelihood ratio is not asymptotically distribution-free, that is, its asymptotic distribution contains unknown quantities, and hence Wilks’ theorem breaks down. This article suggests a general approach to restore Wilks’ phenomenon in two-step semiparametric empirical likelihood inferences. The main insight consists in using as the moment function in the estimating equation the influence function of the plug-in sample moment. The proposed method is general; it leads to a chi-squared limiting distribution with known degrees of freedom; it is efficient; it does not require undersmoothing; and it is less sensitive to the first-step than alternative methods, which is particularly appealing for high-dimensional settings. Several examples and simulation studies illustrate the general applicability of the procedure and its excellent finite sample performance relative to competing methods. Full Article
tri Intrinsic Riemannian functional data analysis By projecteuclid.org Published On :: Wed, 30 Oct 2019 22:03 EDT Zhenhua Lin, Fang Yao. Source: The Annals of Statistics, Volume 47, Number 6, 3533--3577.Abstract: In this work we develop a novel and foundational framework for analyzing general Riemannian functional data, in particular a new development of tensor Hilbert spaces along curves on a manifold. Such spaces enable us to derive Karhunen–Loève expansion for Riemannian random processes. This framework also features an approach to compare objects from different tensor Hilbert spaces, which paves the way for asymptotic analysis in Riemannian functional data analysis. Built upon intrinsic geometric concepts such as vector field, Levi-Civita connection and parallel transport on Riemannian manifolds, the developed framework applies to not only Euclidean submanifolds but also manifolds without a natural ambient space. As applications of this framework, we develop intrinsic Riemannian functional principal component analysis (iRFPCA) and intrinsic Riemannian functional linear regression (iRFLR) that are distinct from their traditional and ambient counterparts. We also provide estimation procedures for iRFPCA and iRFLR, and investigate their asymptotic properties within the intrinsic geometry. Numerical performance is illustrated by simulated and real examples. Full Article
tri Joint convergence of sample autocovariance matrices when $p/n o 0$ with application By projecteuclid.org Published On :: Wed, 30 Oct 2019 22:03 EDT Monika Bhattacharjee, Arup Bose. Source: The Annals of Statistics, Volume 47, Number 6, 3470--3503.Abstract: Consider a high-dimensional linear time series model where the dimension $p$ and the sample size $n$ grow in such a way that $p/n o 0$. Let $hat{Gamma }_{u}$ be the $u$th order sample autocovariance matrix. We first show that the LSD of any symmetric polynomial in ${hat{Gamma }_{u},hat{Gamma }_{u}^{*},ugeq 0}$ exists under independence and moment assumptions on the driving sequence together with weak assumptions on the coefficient matrices. This LSD result, with some additional effort, implies the asymptotic normality of the trace of any polynomial in ${hat{Gamma }_{u},hat{Gamma }_{u}^{*},ugeq 0}$. We also study similar results for several independent MA processes. We show applications of the above results to statistical inference problems such as in estimation of the unknown order of a high-dimensional MA process and in graphical and significance tests for hypotheses on coefficient matrices of one or several such independent processes. Full Article
tri Hypothesis testing on linear structures of high-dimensional covariance matrix By projecteuclid.org Published On :: Wed, 30 Oct 2019 22:03 EDT Shurong Zheng, Zhao Chen, Hengjian Cui, Runze Li. Source: The Annals of Statistics, Volume 47, Number 6, 3300--3334.Abstract: This paper is concerned with test of significance on high-dimensional covariance structures, and aims to develop a unified framework for testing commonly used linear covariance structures. We first construct a consistent estimator for parameters involved in the linear covariance structure, and then develop two tests for the linear covariance structures based on entropy loss and quadratic loss used for covariance matrix estimation. To study the asymptotic properties of the proposed tests, we study related high-dimensional random matrix theory, and establish several highly useful asymptotic results. With the aid of these asymptotic results, we derive the limiting distributions of these two tests under the null and alternative hypotheses. We further show that the quadratic loss based test is asymptotically unbiased. We conduct Monte Carlo simulation study to examine the finite sample performance of the two tests. Our simulation results show that the limiting null distributions approximate their null distributions quite well, and the corresponding asymptotic critical values keep Type I error rate very well. Our numerical comparison implies that the proposed tests outperform existing ones in terms of controlling Type I error rate and power. Our simulation indicates that the test based on quadratic loss seems to have better power than the test based on entropy loss. Full Article
tri Adaptive estimation of the rank of the coefficient matrix in high-dimensional multivariate response regression models By projecteuclid.org Published On :: Wed, 30 Oct 2019 22:03 EDT Xin Bing, Marten H. Wegkamp. Source: The Annals of Statistics, Volume 47, Number 6, 3157--3184.Abstract: We consider the multivariate response regression problem with a regression coefficient matrix of low, unknown rank. In this setting, we analyze a new criterion for selecting the optimal reduced rank. This criterion differs notably from the one proposed in Bunea, She and Wegkamp ( Ann. Statist. 39 (2011) 1282–1309) in that it does not require estimation of the unknown variance of the noise, nor does it depend on a delicate choice of a tuning parameter. We develop an iterative, fully data-driven procedure, that adapts to the optimal signal-to-noise ratio. This procedure finds the true rank in a few steps with overwhelming probability. At each step, our estimate increases, while at the same time it does not exceed the true rank. Our finite sample results hold for any sample size and any dimension, even when the number of responses and of covariates grow much faster than the number of observations. We perform an extensive simulation study that confirms our theoretical findings. The new method performs better and is more stable than the procedure of Bunea, She and Wegkamp ( Ann. Statist. 39 (2011) 1282–1309) in both low- and high-dimensional settings. Full Article
tri Active ranking from pairwise comparisons and when parametric assumptions do not help By projecteuclid.org Published On :: Wed, 30 Oct 2019 22:03 EDT Reinhard Heckel, Nihar B. Shah, Kannan Ramchandran, Martin J. Wainwright. Source: The Annals of Statistics, Volume 47, Number 6, 3099--3126.Abstract: We consider sequential or active ranking of a set of $n$ items based on noisy pairwise comparisons. Items are ranked according to the probability that a given item beats a randomly chosen item, and ranking refers to partitioning the items into sets of prespecified sizes according to their scores. This notion of ranking includes as special cases the identification of the top-$k$ items and the total ordering of the items. We first analyze a sequential ranking algorithm that counts the number of comparisons won, and uses these counts to decide whether to stop, or to compare another pair of items, chosen based on confidence intervals specified by the data collected up to that point. We prove that this algorithm succeeds in recovering the ranking using a number of comparisons that is optimal up to logarithmic factors. This guarantee does depend on whether or not the underlying pairwise probability matrix, satisfies a particular structural property, unlike a significant body of past work on pairwise ranking based on parametric models such as the Thurstone or Bradley–Terry–Luce models. It has been a long-standing open question as to whether or not imposing these parametric assumptions allows for improved ranking algorithms. For stochastic comparison models, in which the pairwise probabilities are bounded away from zero, our second contribution is to resolve this issue by proving a lower bound for parametric models. This shows, perhaps surprisingly, that these popular parametric modeling choices offer at most logarithmic gains for stochastic comparisons. Full Article
tri 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
tri Projected spline estimation of the nonparametric function in high-dimensional partially linear models for massive data By projecteuclid.org Published On :: Fri, 02 Aug 2019 22:04 EDT Heng Lian, Kaifeng Zhao, Shaogao Lv. Source: The Annals of Statistics, Volume 47, Number 5, 2922--2949.Abstract: In this paper, we consider the local asymptotics of the nonparametric function in a partially linear model, within the framework of the divide-and-conquer estimation. Unlike the fixed-dimensional setting in which the parametric part does not affect the nonparametric part, the high-dimensional setting makes the issue more complicated. In particular, when a sparsity-inducing penalty such as lasso is used to make the estimation of the linear part feasible, the bias introduced will propagate to the nonparametric part. We propose a novel approach for estimation of the nonparametric function and establish the local asymptotics of the estimator. The result is useful for massive data with possibly different linear coefficients in each subpopulation but common nonparametric function. Some numerical illustrations are also presented. Full Article
tri Test for high-dimensional correlation matrices By projecteuclid.org Published On :: Fri, 02 Aug 2019 22:04 EDT Shurong Zheng, Guanghui Cheng, Jianhua Guo, Hongtu Zhu. Source: The Annals of Statistics, Volume 47, Number 5, 2887--2921.Abstract: Testing correlation structures has attracted extensive attention in the literature due to both its importance in real applications and several major theoretical challenges. The aim of this paper is to develop a general framework of testing correlation structures for the one , two and multiple sample testing problems under a high-dimensional setting when both the sample size and data dimension go to infinity. Our test statistics are designed to deal with both the dense and sparse alternatives. We systematically investigate the asymptotic null distribution, power function and unbiasedness of each test statistic. Theoretically, we make great efforts to deal with the nonindependency of all random matrices of the sample correlation matrices. We use simulation studies and real data analysis to illustrate the versatility and practicability of our test statistics. Full Article
tri Eigenvalue distributions of variance components estimators in high-dimensional random effects models By projecteuclid.org Published On :: Fri, 02 Aug 2019 22:04 EDT Zhou Fan, Iain M. Johnstone. Source: The Annals of Statistics, Volume 47, Number 5, 2855--2886.Abstract: We study the spectra of MANOVA estimators for variance component covariance matrices in multivariate random effects models. When the dimensionality of the observations is large and comparable to the number of realizations of each random effect, we show that the empirical spectra of such estimators are well approximated by deterministic laws. The Stieltjes transforms of these laws are characterized by systems of fixed-point equations, which are numerically solvable by a simple iterative procedure. Our proof uses operator-valued free probability theory, and we establish a general asymptotic freeness result for families of rectangular orthogonally invariant random matrices, which is of independent interest. Our work is motivated in part by the estimation of components of covariance between multiple phenotypic traits in quantitative genetics, and we specialize our results to common experimental designs that arise in this application. Full Article
tri An operator theoretic approach to nonparametric mixture models By projecteuclid.org Published On :: Fri, 02 Aug 2019 22:04 EDT Robert A. Vandermeulen, Clayton D. Scott. Source: The Annals of Statistics, Volume 47, Number 5, 2704--2733.Abstract: When estimating finite mixture models, it is common to make assumptions on the mixture components, such as parametric assumptions. In this work, we make no distributional assumptions on the mixture components and instead assume that observations from the mixture model are grouped, such that observations in the same group are known to be drawn from the same mixture component. We precisely characterize the number of observations $n$ per group needed for the mixture model to be identifiable, as a function of the number $m$ of mixture components. In addition to our assumption-free analysis, we also study the settings where the mixture components are either linearly independent or jointly irreducible. Furthermore, our analysis considers two kinds of identifiability, where the mixture model is the simplest one explaining the data, and where it is the only one. As an application of these results, we precisely characterize identifiability of multinomial mixture models. Our analysis relies on an operator-theoretic framework that associates mixture models in the grouped-sample setting with certain infinite-dimensional tensors. Based on this framework, we introduce a general spectral algorithm for recovering the mixture components. Full Article
tri The middle-scale asymptotics of Wishart matrices By projecteuclid.org Published On :: Fri, 02 Aug 2019 22:04 EDT Didier Chételat, Martin T. Wells. Source: The Annals of Statistics, Volume 47, Number 5, 2639--2670.Abstract: We study the behavior of a real $p$-dimensional Wishart random matrix with $n$ degrees of freedom when $n,p ightarrowinfty$ but $p/n ightarrow0$. We establish the existence of phase transitions when $p$ grows at the order $n^{(K+1)/(K+3)}$ for every $Kinmathbb{N}$, and derive expressions for approximating densities between every two phase transitions. To do this, we make use of a novel tool we call the $mathcal{F}$-conjugate of an absolutely continuous distribution, which is obtained from the Fourier transform of the square root of its density. In the case of the normalized Wishart distribution, this represents an extension of the $t$-distribution to the space of real symmetric matrices. Full Article
tri Semiparametrically point-optimal hybrid rank tests for unit roots By projecteuclid.org Published On :: Fri, 02 Aug 2019 22:04 EDT Bo Zhou, Ramon van den Akker, Bas J. M. Werker. Source: The Annals of Statistics, Volume 47, Number 5, 2601--2638.Abstract: We propose a new class of unit root tests that exploits invariance properties in the Locally Asymptotically Brownian Functional limit experiment associated to the unit root model. The invariance structures naturally suggest tests that are based on the ranks of the increments of the observations, their average and an assumed reference density for the innovations. The tests are semiparametric in the sense that they are valid, that is, have the correct (asymptotic) size, irrespective of the true innovation density. For a correctly specified reference density, our test is point-optimal and nearly efficient. For arbitrary reference densities, we establish a Chernoff–Savage-type result, that is, our test performs as well as commonly used tests under Gaussian innovations but has improved power under other, for example, fat-tailed or skewed, innovation distributions. To avoid nonparametric estimation, we propose a simplified version of our test that exhibits the same asymptotic properties, except for the Chernoff–Savage result that we are only able to demonstrate by means of simulations. Full Article
tri On deep learning as a remedy for the curse of dimensionality in nonparametric regression By projecteuclid.org Published On :: Tue, 21 May 2019 04:00 EDT Benedikt Bauer, Michael Kohler. Source: The Annals of Statistics, Volume 47, Number 4, 2261--2285.Abstract: Assuming that a smoothness condition and a suitable restriction on the structure of the regression function hold, it is shown that least squares estimates based on multilayer feedforward neural networks are able to circumvent the curse of dimensionality in nonparametric regression. The proof is based on new approximation results concerning multilayer feedforward neural networks with bounded weights and a bounded number of hidden neurons. The estimates are compared with various other approaches by using simulated data. Full Article
tri Estimating and forecasting the smoking-attributable mortality fraction for both genders jointly in over 60 countries By projecteuclid.org Published On :: Wed, 15 Apr 2020 22:05 EDT Yicheng Li, Adrian E. Raftery. Source: The Annals of Applied Statistics, Volume 14, Number 1, 381--408.Abstract: Smoking is one of the leading preventable threats to human health and a major risk factor for lung cancer, upper aerodigestive cancer and chronic obstructive pulmonary disease. Estimating and forecasting the smoking attributable fraction (SAF) of mortality can yield insights into smoking epidemics and also provide a basis for more accurate mortality and life expectancy projection. Peto et al. ( Lancet 339 (1992) 1268–1278) proposed a method to estimate the SAF using the lung cancer mortality rate as an indicator of exposure to smoking in the population of interest. Here, we use the same method to estimate the all-age SAF (ASAF) for both genders for over 60 countries. We document a strong and cross-nationally consistent pattern of the evolution of the SAF over time. We use this as the basis for a new Bayesian hierarchical model to project future male and female ASAF from over 60 countries simultaneously. This gives forecasts as well as predictive distributions that can be used to find uncertainty intervals for any quantity of interest. We assess the model using out-of-sample predictive validation and find that it provides good forecasts and well-calibrated forecast intervals, comparing favorably with other methods. Full Article