ari King Louis XVI and Queen Marie-Antoinette, escorted by soldiers, arrive at a masked ball held to celebrate the birth of their son, the Dauphin. Etching by Jean-Michel Moreau the younger, 1782, after P.L. Moreau-Desproux. By feedproxy.google.com Published On :: [Paris] : [publisher not identified], 1782. Full Article
ari The marriage of King Charles I and Princess Henrietta Maria in Notre Dame cathedral, Paris, 1625. Engraving by N. Dupuis, 1728, after L. Chéron. By feedproxy.google.com Published On :: London : Printed & sold by Thos. & John Bowles, printsellers, [1728] Full Article
ari King Charles I on horseback outside the city walls of Hull: the Parliamentarians inside, led by Sir John Hotham, refuse to surrender the city. Engraving by N. Tardieu after C. Parrocel. By feedproxy.google.com Published On :: London : Printed and sold by Thos. and John Bowles, printsellers, [1728] Full Article
ari The birth of Henri IV at the castle of Pau. Etching by E.J. Ramus after Eugène-François-Marie-Joseph Devéria. By feedproxy.google.com Published On :: Full Article
ari How one NHL team is preparing to reopen its arena By sports.yahoo.com Published On :: Wed, 06 May 2020 05:03:00 GMT The San Jose Sharks are considering different scenarios in how to handle the return of hockey. The questions the Sharks are asking themselves are likely the same ones the Caps are as everyone waits for the end of the coronavirus pandemic. Full Article article Sports
ari Silly Limbig : a tail of bravery / by Naomi Harvey ; illustrations by Daria Danilova. By search.wellcomelibrary.org Published On :: Great Britain : CreateSpace, 2017. Full Article
ari Needle sharing among intravenous drug abusers: national and international perspectives / Editors, Robert J. Battjes, Roy W. Pickens. By search.wellcomelibrary.org Published On :: Rockville, Maryland : National Institute on Drug Abuse, 1988. Full Article
ari Methamphetamine abuse : epidemiologic issues and implications / editors, Marissa A. Miller, Nicholas J. Kozel. By search.wellcomelibrary.org Published On :: Rockville, Maryland : National Institute on Drug Abuse, 1991. Full Article
ari Effect of marihuana and alcohol on visual search performance / H.A. Moskowitz, K. Ziedman, S. Sharma. By search.wellcomelibrary.org Published On :: Washington : Dept. of Transportation, National Highway Traffic Safety Administration, 1976. Full Article
ari Development of tolerance and cross-tolerance to psychomotor effects of benzodiazepines in man / by Kari Aranko. By search.wellcomelibrary.org Published On :: Helsinki : Department of Pharmacology and Toxicology, University of Helsinki, 1985. Full Article
ari Lachlan Macquarie land grant to John Laurie By feedproxy.google.com Published On :: 2/10/2015 12:00:00 AM Full Article
ari Herbert Compton diaries, 17 May – 29 July 1973 By feedproxy.google.com Published On :: 9/10/2015 12:00:00 AM Full Article
ari Aari McDonald on returning for her senior year at Arizona: 'We're ready to set the bar higher' By sports.yahoo.com Published On :: Fri, 10 Apr 2020 00:30:39 GMT Arizona's Aari McDonald and Pac-12 Networks' Ashley Adamson discuss the guard's decision to return for her senior season in Tucson and how she now has the opportunity to be the face of the league. McDonald, the Pac-12 Defensive Player of the Year, was one of the nation's top scorers in 2019-20, averaging 20.6 points per game. Full Article video Sports
ari Nonparametric confidence intervals for conditional quantiles with large-dimensional covariates By projecteuclid.org Published On :: Tue, 05 May 2020 22:00 EDT Laurent Gardes. Source: Electronic Journal of Statistics, Volume 14, Number 1, 661--701.Abstract: The first part of the paper is dedicated to the construction of a $gamma$ - nonparametric confidence interval for a conditional quantile with a level depending on the sample size. When this level tends to 0 or 1 as the sample size increases, the conditional quantile is said to be extreme and is located in the tail of the conditional distribution. The proposed confidence interval is constructed by approximating the distribution of the order statistics selected with a nearest neighbor approach by a Beta distribution. We show that its coverage probability converges to the preselected probability $gamma $ and its accuracy is illustrated on a simulation study. When the dimension of the covariate increases, the coverage probability of the confidence interval can be very different from $gamma $. This is a well known consequence of the data sparsity especially in the tail of the distribution. In a second part, a dimension reduction procedure is proposed in order to select more appropriate nearest neighbors in the right tail of the distribution and in turn to obtain a better coverage probability for extreme conditional quantiles. This procedure is based on the Tail Conditional Independence assumption introduced in (Gardes, Extremes , pp. 57–95, 18(3) , 2018). Full Article
ari Parseval inequalities and lower bounds for variance-based sensitivity indices By projecteuclid.org Published On :: Tue, 05 May 2020 22:00 EDT Olivier Roustant, Fabrice Gamboa, Bertrand Iooss. Source: Electronic Journal of Statistics, Volume 14, Number 1, 386--412.Abstract: The so-called polynomial chaos expansion is widely used in computer experiments. For example, it is a powerful tool to estimate Sobol’ sensitivity indices. In this paper, we consider generalized chaos expansions built on general tensor Hilbert basis. In this frame, we revisit the computation of the Sobol’ indices with Parseval equalities and give general lower bounds for these indices obtained by truncation. The case of the eigenfunctions system associated with a Poincaré differential operator leads to lower bounds involving the derivatives of the analyzed function and provides an efficient tool for variable screening. These lower bounds are put in action both on toy and real life models demonstrating their accuracy. Full Article
ari Univariate mean change point detection: Penalization, CUSUM and optimality By projecteuclid.org Published On :: Mon, 27 Apr 2020 22:02 EDT Daren Wang, Yi Yu, Alessandro Rinaldo. Source: Electronic Journal of Statistics, Volume 14, Number 1, 1917--1961.Abstract: The problem of univariate mean change point detection and localization based on a sequence of $n$ independent observations with piecewise constant means has been intensively studied for more than half century, and serves as a blueprint for change point problems in more complex settings. We provide a complete characterization of this classical problem in a general framework in which the upper bound $sigma ^{2}$ on the noise variance, the minimal spacing $Delta $ between two consecutive change points and the minimal magnitude $kappa $ of the changes, are allowed to vary with $n$. We first show that consistent localization of the change points is impossible in the low signal-to-noise ratio regime $frac{kappa sqrt{Delta }}{sigma }preceq sqrt{log (n)}$. In contrast, when $frac{kappa sqrt{Delta }}{sigma }$ diverges with $n$ at the rate of at least $sqrt{log (n)}$, we demonstrate that two computationally-efficient change point estimators, one based on the solution to an $ell _{0}$-penalized least squares problem and the other on the popular wild binary segmentation algorithm, are both consistent and achieve a localization rate of the order $frac{sigma ^{2}}{kappa ^{2}}log (n)$. We further show that such rate is minimax optimal, up to a $log (n)$ term. Full Article
ari Bayesian variance estimation in the Gaussian sequence model with partial information on the means By projecteuclid.org Published On :: Mon, 27 Apr 2020 22:02 EDT Gianluca Finocchio, Johannes Schmidt-Hieber. Source: Electronic Journal of Statistics, Volume 14, Number 1, 239--271.Abstract: Consider the Gaussian sequence model under the additional assumption that a fixed fraction of the means is known. We study the problem of variance estimation from a frequentist Bayesian perspective. The maximum likelihood estimator (MLE) for $sigma^{2}$ is biased and inconsistent. This raises the question whether the posterior is able to correct the MLE in this case. By developing a new proving strategy that uses refined properties of the posterior distribution, we find that the marginal posterior is inconsistent for any i.i.d. prior on the mean parameters. In particular, no assumption on the decay of the prior needs to be imposed. Surprisingly, we also find that consistency can be retained for a hierarchical prior based on Gaussian mixtures. In this case we also establish a limiting shape result and determine the limit distribution. In contrast to the classical Bernstein-von Mises theorem, the limit is non-Gaussian. We show that the Bayesian analysis leads to new statistical estimators outperforming the correctly calibrated MLE in a numerical simulation study. Full Article
ari Bias correction in conditional multivariate extremes By projecteuclid.org Published On :: Wed, 22 Apr 2020 04:02 EDT Mikael Escobar-Bach, Yuri Goegebeur, Armelle Guillou. Source: Electronic Journal of Statistics, Volume 14, Number 1, 1773--1795.Abstract: We consider bias-corrected estimation of the stable tail dependence function in the regression context. To this aim, we first estimate the bias of a smoothed estimator of the stable tail dependence function, and then we subtract it from the estimator. The weak convergence, as a stochastic process, of the resulting asymptotically unbiased estimator of the conditional stable tail dependence function, correctly normalized, is established under mild assumptions, the covariate argument being fixed. The finite sample behaviour of our asymptotically unbiased estimator is then illustrated on a simulation study and compared to two alternatives, which are not bias corrected. Finally, our methodology is applied to a dataset of air pollution measurements. Full Article
ari A fast and consistent variable selection method for high-dimensional multivariate linear regression with a large number of explanatory variables By projecteuclid.org Published On :: Fri, 27 Mar 2020 22:00 EDT Ryoya Oda, Hirokazu Yanagihara. Source: Electronic Journal of Statistics, Volume 14, Number 1, 1386--1412.Abstract: We put forward a variable selection method for selecting explanatory variables in a normality-assumed multivariate linear regression. It is cumbersome to calculate variable selection criteria for all subsets of explanatory variables when the number of explanatory variables is large. Therefore, we propose a fast and consistent variable selection method based on a generalized $C_{p}$ criterion. The consistency of the method is provided by a high-dimensional asymptotic framework such that the sample size and the sum of the dimensions of response vectors and explanatory vectors divided by the sample size tend to infinity and some positive constant which are less than one, respectively. Through numerical simulations, it is shown that the proposed method has a high probability of selecting the true subset of explanatory variables and is fast under a moderate sample size even when the number of dimensions is large. Full Article
ari Computing the degrees of freedom of rank-regularized estimators and cousins By projecteuclid.org Published On :: Thu, 26 Mar 2020 22:03 EDT Rahul Mazumder, Haolei Weng. Source: Electronic Journal of Statistics, Volume 14, Number 1, 1348--1385.Abstract: Estimating a low rank matrix from its linear measurements is a problem of central importance in contemporary statistical analysis. The choice of tuning parameters for estimators remains an important challenge from a theoretical and practical perspective. To this end, Stein’s Unbiased Risk Estimate (SURE) framework provides a well-grounded statistical framework for degrees of freedom estimation. In this paper, we use the SURE framework to obtain degrees of freedom estimates for a general class of spectral regularized matrix estimators—our results generalize beyond the class of estimators that have been studied thus far. To this end, we use a result due to Shapiro (2002) pertaining to the differentiability of symmetric matrix valued functions, developed in the context of semidefinite optimization algorithms. We rigorously verify the applicability of Stein’s Lemma towards the derivation of degrees of freedom estimates; and also present new techniques based on Gaussian convolution to estimate the degrees of freedom of a class of spectral estimators, for which Stein’s Lemma does not directly apply. Full Article
ari Differential network inference via the fused D-trace loss with cross variables By projecteuclid.org Published On :: Tue, 24 Mar 2020 22:01 EDT Yichong Wu, Tiejun Li, Xiaoping Liu, Luonan Chen. Source: Electronic Journal of Statistics, Volume 14, Number 1, 1269--1301.Abstract: Detecting the change of biological interaction networks is of great importance in biological and medical research. We proposed a simple loss function, named as CrossFDTL, to identify the network change or differential network by estimating the difference between two precision matrices under Gaussian assumption. The CrossFDTL is a natural fusion of the D-trace loss for the considered two networks by imposing the $ell _{1}$ penalty to the differential matrix to ensure sparsity. The key point of our method is to utilize the cross variables, which correspond to the sum and difference of two precision matrices instead of using their original forms. Moreover, we developed an efficient minimization algorithm for the proposed loss function and further rigorously proved its convergence. Numerical results showed that our method outperforms the existing methods in both accuracy and convergence speed for the simulated and real data. Full Article
ari Conditional density estimation with covariate measurement error By projecteuclid.org Published On :: Wed, 19 Feb 2020 22:06 EST Xianzheng Huang, Haiming Zhou. Source: Electronic Journal of Statistics, Volume 14, Number 1, 970--1023.Abstract: We consider estimating the density of a response conditioning on an error-prone covariate. Motivated by two existing kernel density estimators in the absence of covariate measurement error, we propose a method to correct the existing estimators for measurement error. Asymptotic properties of the resultant estimators under different types of measurement error distributions are derived. Moreover, we adjust bandwidths readily available from existing bandwidth selection methods developed for error-free data to obtain bandwidths for the new estimators. Extensive simulation studies are carried out to compare the proposed estimators with naive estimators that ignore measurement error, which also provide empirical evidence for the effectiveness of the proposed bandwidth selection methods. A real-life data example is used to illustrate implementation of these methods under practical scenarios. An R package, lpme, is developed for implementing all considered methods, which we demonstrate via an R code example in Appendix B.2. Full Article
ari Reduction problems and deformation approaches to nonstationary covariance functions over spheres By projecteuclid.org Published On :: Tue, 11 Feb 2020 22:03 EST Emilio Porcu, Rachid Senoussi, Enner Mendoza, Moreno Bevilacqua. Source: Electronic Journal of Statistics, Volume 14, Number 1, 890--916.Abstract: The paper considers reduction problems and deformation approaches for nonstationary covariance functions on the $(d-1)$-dimensional spheres, $mathbb{S}^{d-1}$, embedded in the $d$-dimensional Euclidean space. Given a covariance function $C$ on $mathbb{S}^{d-1}$, we chase a pair $(R,Psi)$, for a function $R:[-1,+1] o mathbb{R}$ and a smooth bijection $Psi$, such that $C$ can be reduced to a geodesically isotropic one: $C(mathbf{x},mathbf{y})=R(langle Psi (mathbf{x}),Psi (mathbf{y}) angle )$, with $langle cdot ,cdot angle $ denoting the dot product. The problem finds motivation in recent statistical literature devoted to the analysis of global phenomena, defined typically over the sphere of $mathbb{R}^{3}$. The application domains considered in the manuscript makes the problem mathematically challenging. We show the uniqueness of the representation in the reduction problem. Then, under some regularity assumptions, we provide an inversion formula to recover the bijection $Psi$, when it exists, for a given $C$. We also give sufficient conditions for reducibility. Full Article
ari 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
ari Convergences of Regularized Algorithms and Stochastic Gradient Methods with Random Projections By Published On :: 2020 We study the least-squares regression problem over a Hilbert space, covering nonparametric regression over a reproducing kernel Hilbert space as a special case. We first investigate regularized algorithms adapted to a projection operator on a closed subspace of the Hilbert space. We prove convergence results with respect to variants of norms, under a capacity assumption on the hypothesis space and a regularity condition on the target function. As a result, we obtain optimal rates for regularized algorithms with randomized sketches, provided that the sketch dimension is proportional to the effective dimension up to a logarithmic factor. As a byproduct, we obtain similar results for Nystr"{o}m regularized algorithms. Our results provide optimal, distribution-dependent rates that do not have any saturation effect for sketched/Nystr"{o}m regularized algorithms, considering both the attainable and non-attainable cases, in the well-conditioned regimes. We then study stochastic gradient methods with projection over the subspace, allowing multi-pass over the data and minibatches, and we derive similar optimal statistical convergence results. Full Article
ari Targeted Fused Ridge Estimation of Inverse Covariance Matrices from Multiple High-Dimensional Data Classes By Published On :: 2020 We consider the problem of jointly estimating multiple inverse covariance matrices from high-dimensional data consisting of distinct classes. An $ell_2$-penalized maximum likelihood approach is employed. The suggested approach is flexible and generic, incorporating several other $ell_2$-penalized estimators as special cases. In addition, the approach allows specification of target matrices through which prior knowledge may be incorporated and which can stabilize the estimation procedure in high-dimensional settings. The result is a targeted fused ridge estimator that is of use when the precision matrices of the constituent classes are believed to chiefly share the same structure while potentially differing in a number of locations of interest. It has many applications in (multi)factorial study designs. We focus on the graphical interpretation of precision matrices with the proposed estimator then serving as a basis for integrative or meta-analytic Gaussian graphical modeling. Situations are considered in which the classes are defined by data sets and subtypes of diseases. The performance of the proposed estimator in the graphical modeling setting is assessed through extensive simulation experiments. Its practical usability is illustrated by the differential network modeling of 12 large-scale gene expression data sets of diffuse large B-cell lymphoma subtypes. The estimator and its related procedures are incorporated into the R-package rags2ridges. Full Article
ari Graph-Dependent Implicit Regularisation for Distributed Stochastic Subgradient Descent By Published On :: 2020 We propose graph-dependent implicit regularisation strategies for synchronised distributed stochastic subgradient descent (Distributed SGD) for convex problems in multi-agent learning. Under the standard assumptions of convexity, Lipschitz continuity, and smoothness, we establish statistical learning rates that retain, up to logarithmic terms, single-machine serial statistical guarantees through implicit regularisation (step size tuning and early stopping) with appropriate dependence on the graph topology. Our approach avoids the need for explicit regularisation in decentralised learning problems, such as adding constraints to the empirical risk minimisation rule. Particularly for distributed methods, the use of implicit regularisation allows the algorithm to remain simple, without projections or dual methods. To prove our results, we establish graph-independent generalisation bounds for Distributed SGD that match the single-machine serial SGD setting (using algorithmic stability), and we establish graph-dependent optimisation bounds that are of independent interest. We present numerical experiments to show that the qualitative nature of the upper bounds we derive can be representative of real behaviours. Full Article
ari Learning Linear Non-Gaussian Causal Models in the Presence of Latent Variables By Published On :: 2020 We consider the problem of learning causal models from observational data generated by linear non-Gaussian acyclic causal models with latent variables. Without considering the effect of latent variables, the inferred causal relationships among the observed variables are often wrong. Under faithfulness assumption, we propose a method to check whether there exists a causal path between any two observed variables. From this information, we can obtain the causal order among the observed variables. The next question is whether the causal effects can be uniquely identified as well. We show that causal effects among observed variables cannot be identified uniquely under mere assumptions of faithfulness and non-Gaussianity of exogenous noises. However, we are able to propose an efficient method that identifies the set of all possible causal effects that are compatible with the observational data. We present additional structural conditions on the causal graph under which causal effects among observed variables can be determined uniquely. Furthermore, we provide necessary and sufficient graphical conditions for unique identification of the number of variables in the system. Experiments on synthetic data and real-world data show the effectiveness of our proposed algorithm for learning causal models. Full Article
ari Switching Regression Models and Causal Inference in the Presence of Discrete Latent Variables By Published On :: 2020 Given a response $Y$ and a vector $X = (X^1, dots, X^d)$ of $d$ predictors, we investigate the problem of inferring direct causes of $Y$ among the vector $X$. Models for $Y$ that use all of its causal covariates as predictors enjoy the property of being invariant across different environments or interventional settings. Given data from such environments, this property has been exploited for causal discovery. Here, we extend this inference principle to situations in which some (discrete-valued) direct causes of $ Y $ are unobserved. Such cases naturally give rise to switching regression models. We provide sufficient conditions for the existence, consistency and asymptotic normality of the MLE in linear switching regression models with Gaussian noise, and construct a test for the equality of such models. These results allow us to prove that the proposed causal discovery method obtains asymptotic false discovery control under mild conditions. We provide an algorithm, make available code, and test our method on simulated data. It is robust against model violations and outperforms state-of-the-art approaches. We further apply our method to a real data set, where we show that it does not only output causal predictors, but also a process-based clustering of data points, which could be of additional interest to practitioners. Full Article
ari Greedy Attack and Gumbel Attack: Generating Adversarial Examples for Discrete Data By Published On :: 2020 We present a probabilistic framework for studying adversarial attacks on discrete data. Based on this framework, we derive a perturbation-based method, Greedy Attack, and a scalable learning-based method, Gumbel Attack, that illustrate various tradeoffs in the design of attacks. We demonstrate the effectiveness of these methods using both quantitative metrics and human evaluation on various state-of-the-art models for text classification, including a word-based CNN, a character-based CNN and an LSTM. As an example of our results, we show that the accuracy of character-based convolutional networks drops to the level of random selection by modifying only five characters through Greedy Attack. Full Article
ari Sparse and low-rank multivariate Hawkes processes By Published On :: 2020 We consider the problem of unveiling the implicit network structure of node interactions (such as user interactions in a social network), based only on high-frequency timestamps. Our inference is based on the minimization of the least-squares loss associated with a multivariate Hawkes model, penalized by $ell_1$ and trace norm of the interaction tensor. We provide a first theoretical analysis for this problem, that includes sparsity and low-rank inducing penalizations. This result involves a new data-driven concentration inequality for matrix martingales in continuous time with observable variance, which is a result of independent interest and a broad range of possible applications since it extends to matrix martingales former results restricted to the scalar case. A consequence of our analysis is the construction of sharply tuned $ell_1$ and trace-norm penalizations, that leads to a data-driven scaling of the variability of information available for each users. Numerical experiments illustrate the significant improvements achieved by the use of such data-driven penalizations. Full Article
ari Identifiability of Additive Noise Models Using Conditional Variances By Published On :: 2020 This paper considers a new identifiability condition for additive noise models (ANMs) in which each variable is determined by an arbitrary Borel measurable function of its parents plus an independent error. It has been shown that ANMs are fully recoverable under some identifiability conditions, such as when all error variances are equal. However, this identifiable condition could be restrictive, and hence, this paper focuses on a relaxed identifiability condition that involves not only error variances, but also the influence of parents. This new class of identifiable ANMs does not put any constraints on the form of dependencies, or distributions of errors, and allows different error variances. It further provides a statistically consistent and computationally feasible structure learning algorithm for the identifiable ANMs based on the new identifiability condition. The proposed algorithm assumes that all relevant variables are observed, while it does not assume faithfulness or a sparse graph. Demonstrated through extensive simulated and real multivariate data is that the proposed algorithm successfully recovers directed acyclic graphs. Full Article
ari Multi-Player Bandits: The Adversarial Case By Published On :: 2020 We consider a setting where multiple players sequentially choose among a common set of actions (arms). Motivated by an application to cognitive radio networks, we assume that players incur a loss upon colliding, and that communication between players is not possible. Existing approaches assume that the system is stationary. Yet this assumption is often violated in practice, e.g., due to signal strength fluctuations. In this work, we design the first multi-player Bandit algorithm that provably works in arbitrarily changing environments, where the losses of the arms may even be chosen by an adversary. This resolves an open problem posed by Rosenski et al. (2016). Full Article
ari Stein characterizations for linear combinations of gamma random variables By projecteuclid.org Published On :: Mon, 04 May 2020 04:00 EDT Benjamin Arras, Ehsan Azmoodeh, Guillaume Poly, Yvik Swan. Source: Brazilian Journal of Probability and Statistics, Volume 34, Number 2, 394--413.Abstract: In this paper we propose a new, simple and explicit mechanism allowing to derive Stein operators for random variables whose characteristic function satisfies a simple ODE. We apply this to study random variables which can be represented as linear combinations of (not necessarily independent) gamma distributed random variables. The connection with Malliavin calculus for random variables in the second Wiener chaos is detailed. An application to McKay Type I random variables is also outlined. Full Article
ari Application of weighted and unordered majorization orders in comparisons of parallel systems with exponentiated generalized gamma components By projecteuclid.org Published On :: Mon, 03 Feb 2020 04:00 EST Abedin Haidari, Amir T. Payandeh Najafabadi, Narayanaswamy Balakrishnan. Source: Brazilian Journal of Probability and Statistics, Volume 34, Number 1, 150--166.Abstract: Consider two parallel systems, say $A$ and $B$, with respective lifetimes $T_{1}$ and $T_{2}$ wherein independent component lifetimes of each system follow exponentiated generalized gamma distribution with possibly different exponential shape and scale parameters. We show here that $T_{2}$ is smaller than $T_{1}$ with respect to the usual stochastic order (reversed hazard rate order) if the vector of logarithm (the main vector) of scale parameters of System $B$ is weakly weighted majorized by that of System $A$, and if the vector of exponential shape parameters of System $A$ is unordered mojorized by that of System $B$. By means of some examples, we show that the above results can not be extended to the hazard rate and likelihood ratio orders. However, when the scale parameters of each system divide into two homogeneous groups, we verify that the usual stochastic and reversed hazard rate orders can be extended, respectively, to the hazard rate and likelihood ratio orders. The established results complete and strengthen some of the known results in the literature. Full Article
ari Multivariate normal approximation of the maximum likelihood estimator via the delta method By projecteuclid.org Published On :: Mon, 03 Feb 2020 04:00 EST Andreas Anastasiou, Robert E. Gaunt. Source: Brazilian Journal of Probability and Statistics, Volume 34, Number 1, 136--149.Abstract: We use the delta method and Stein’s method to derive, under regularity conditions, explicit upper bounds for the distributional distance between the distribution of the maximum likelihood estimator (MLE) of a $d$-dimensional parameter and its asymptotic multivariate normal distribution. Our bounds apply in situations in which the MLE can be written as a function of a sum of i.i.d. $t$-dimensional random vectors. We apply our general bound to establish a bound for the multivariate normal approximation of the MLE of the normal distribution with unknown mean and variance. Full Article
ari Option pricing with bivariate risk-neutral density via copula and heteroscedastic model: A Bayesian approach By projecteuclid.org Published On :: Mon, 26 Aug 2019 04:00 EDT Lucas Pereira Lopes, Vicente Garibay Cancho, Francisco Louzada. Source: Brazilian Journal of Probability and Statistics, Volume 33, Number 4, 801--825.Abstract: Multivariate options are adequate tools for multi-asset risk management. The pricing models derived from the pioneer Black and Scholes method under the multivariate case consider that the asset-object prices follow a Brownian geometric motion. However, the construction of such methods imposes some unrealistic constraints on the process of fair option calculation, such as constant volatility over the maturity time and linear correlation between the assets. Therefore, this paper aims to price and analyze the fair price behavior of the call-on-max (bivariate) option considering marginal heteroscedastic models with dependence structure modeled via copulas. Concerning inference, we adopt a Bayesian perspective and computationally intensive methods based on Monte Carlo simulations via Markov Chain (MCMC). A simulation study examines the bias, and the root mean squared errors of the posterior means for the parameters. Real stocks prices of Brazilian banks illustrate the approach. For the proposed method is verified the effects of strike and dependence structure on the fair price of the option. The results show that the prices obtained by our heteroscedastic model approach and copulas differ substantially from the prices obtained by the model derived from Black and Scholes. Empirical results are presented to argue the advantages of our strategy. Full Article
ari Bayesian modelling of the abilities in dichotomous IRT models via regression with missing values in the covariates By projecteuclid.org Published On :: Mon, 26 Aug 2019 04:00 EDT Flávio B. Gonçalves, Bárbara C. C. Dias. Source: Brazilian Journal of Probability and Statistics, Volume 33, Number 4, 782--800.Abstract: Educational assessment usually considers a contextual questionnaire to extract relevant information from the applicants. This may include items related to socio-economical profile as well as items to extract other characteristics potentially related to applicant’s performance in the test. A careful analysis of the questionnaires jointly with the test’s results may evidence important relations between profiles and test performance. The most coherent way to perform this task in a statistical context is to use the information from the questionnaire to help explain the variability of the abilities in a joint model-based approach. Nevertheless, the responses to the questionnaire typically present missing values which, in some cases, may be missing not at random. This paper proposes a statistical methodology to model the abilities in dichotomous IRT models using the information of the contextual questionnaires via linear regression. The proposed methodology models the missing data jointly with the all the observed data, which allows for the estimation of the former. The missing data modelling is flexible enough to allow the specification of missing not at random structures. Furthermore, even if those structures are not assumed a priori, they can be estimated from the posterior results when assuming missing (completely) at random structures a priori. Statistical inference is performed under the Bayesian paradigm via an efficient MCMC algorithm. Simulated and real examples are presented to investigate the efficiency and applicability of the proposed methodology. Full Article
ari Time series of count data: A review, empirical comparisons and data analysis By projecteuclid.org Published On :: Mon, 26 Aug 2019 04:00 EDT Glaura C. Franco, Helio S. Migon, Marcos O. Prates. Source: Brazilian Journal of Probability and Statistics, Volume 33, Number 4, 756--781.Abstract: Observation and parameter driven models are commonly used in the literature to analyse time series of counts. In this paper, we study the characteristics of a variety of models and point out the main differences and similarities among these procedures, concerning parameter estimation, model fitting and forecasting. Alternatively to the literature, all inference was performed under the Bayesian paradigm. The models are fitted with a latent AR($p$) process in the mean, which accounts for autocorrelation in the data. An extensive simulation study shows that the estimates for the covariate parameters are remarkably similar across the different models. However, estimates for autoregressive coefficients and forecasts of future values depend heavily on the underlying process which generates the data. A real data set of bankruptcy in the United States is also analysed. Full Article
ari Fractional backward stochastic variational inequalities with non-Lipschitz coefficient By projecteuclid.org Published On :: Mon, 10 Jun 2019 04:04 EDT Katarzyna Jańczak-Borkowska. Source: Brazilian Journal of Probability and Statistics, Volume 33, Number 3, 480--497.Abstract: We prove the existence and uniqueness of the solution of backward stochastic variational inequalities with respect to fractional Brownian motion and with non-Lipschitz coefficient. We assume that $H>1/2$. Full Article
ari Influence measures for the Waring regression model By projecteuclid.org Published On :: Mon, 04 Mar 2019 04:00 EST Luisa Rivas, Manuel Galea. Source: Brazilian Journal of Probability and Statistics, Volume 33, Number 2, 402--424.Abstract: In this paper, we present a regression model where the response variable is a count data that follows a Waring distribution. The Waring regression model allows for analysis of phenomena where the Geometric regression model is inadequate, because the probability of success on each trial, $p$, is different for each individual and $p$ has an associated distribution. Estimation is performed by maximum likelihood, through the maximization of the $Q$-function using EM algorithm. Diagnostic measures are calculated for this model. To illustrate the results, an application to real data is presented. Some specific details are given in the Appendix of the paper. Full Article
ari The coreset variational Bayes (CVB) algorithm for mixture analysis By projecteuclid.org Published On :: Mon, 04 Mar 2019 04:00 EST Qianying Liu, Clare A. McGrory, Peter W. J. Baxter. Source: Brazilian Journal of Probability and Statistics, Volume 33, Number 2, 267--279.Abstract: The pressing need for improved methods for analysing and coping with big data has opened up a new area of research for statisticians. Image analysis is an area where there is typically a very large number of data points to be processed per image, and often multiple images are captured over time. These issues make it challenging to design methodology that is reliable and yet still efficient enough to be of practical use. One promising emerging approach for this problem is to reduce the amount of data that actually has to be processed by extracting what we call coresets from the full dataset; analysis is then based on the coreset rather than the whole dataset. Coresets are representative subsamples of data that are carefully selected via an adaptive sampling approach. We propose a new approach called coreset variational Bayes (CVB) for mixture modelling; this is an algorithm which can perform a variational Bayes analysis of a dataset based on just an extracted coreset of the data. We apply our algorithm to weed image analysis. Full Article
ari Flexible, boundary adapted, nonparametric methods for the estimation of univariate piecewise-smooth functions By projecteuclid.org Published On :: Tue, 04 Feb 2020 04:00 EST Umberto Amato, Anestis Antoniadis, Italia De Feis. Source: Statistics Surveys, Volume 14, 32--70.Abstract: We present and compare some nonparametric estimation methods (wavelet and/or spline-based) designed to recover a one-dimensional piecewise-smooth regression function in both a fixed equidistant or not equidistant design regression model and a random design model. Wavelet methods are known to be very competitive in terms of denoising and compression, due to the simultaneous localization property of a function in time and frequency. However, boundary assumptions, such as periodicity or symmetry, generate bias and artificial wiggles which degrade overall accuracy. Simple methods have been proposed in the literature for reducing the bias at the boundaries. We introduce new ones based on adaptive combinations of two estimators. The underlying idea is to combine a highly accurate method for non-regular functions, e.g., wavelets, with one well behaved at boundaries, e.g., Splines or Local Polynomial. We provide some asymptotic optimal results supporting our approach. All the methods can handle data with a random design. We also sketch some generalization to the multidimensional setting. To study the performance of the proposed approaches we have conducted an extensive set of simulations on synthetic data. An interesting regression analysis of two real data applications using these procedures unambiguously demonstrates their effectiveness. Full Article
ari PLS for Big Data: A unified parallel algorithm for regularised group PLS By projecteuclid.org Published On :: Mon, 02 Sep 2019 04:00 EDT Pierre Lafaye de Micheaux, Benoît Liquet, Matthew Sutton. Source: Statistics Surveys, Volume 13, 119--149.Abstract: Partial Least Squares (PLS) methods have been heavily exploited to analyse the association between two blocks of data. These powerful approaches can be applied to data sets where the number of variables is greater than the number of observations and in the presence of high collinearity between variables. Different sparse versions of PLS have been developed to integrate multiple data sets while simultaneously selecting the contributing variables. Sparse modeling is a key factor in obtaining better estimators and identifying associations between multiple data sets. The cornerstone of the sparse PLS methods is the link between the singular value decomposition (SVD) of a matrix (constructed from deflated versions of the original data) and least squares minimization in linear regression. We review four popular PLS methods for two blocks of data. A unified algorithm is proposed to perform all four types of PLS including their regularised versions. We present various approaches to decrease the computation time and show how the whole procedure can be scalable to big data sets. The bigsgPLS R package implements our unified algorithm and is available at https://github.com/matt-sutton/bigsgPLS . Full Article
ari Pitfalls of significance testing and $p$-value variability: An econometrics perspective By projecteuclid.org Published On :: Wed, 03 Oct 2018 22:00 EDT Norbert Hirschauer, Sven Grüner, Oliver Mußhoff, Claudia Becker. Source: Statistics Surveys, Volume 12, 136--172.Abstract: Data on how many scientific findings are reproducible are generally bleak and a wealth of papers have warned against misuses of the $p$-value and resulting false findings in recent years. This paper discusses the question of what we can(not) learn from the $p$-value, which is still widely considered as the gold standard of statistical validity. We aim to provide a non-technical and easily accessible resource for statistical practitioners who wish to spot and avoid misinterpretations and misuses of statistical significance tests. For this purpose, we first classify and describe the most widely discussed (“classical”) pitfalls of significance testing, and review published work on these misuses with a focus on regression-based “confirmatory” study. This includes a description of the single-study bias and a simulation-based illustration of how proper meta-analysis compares to misleading significance counts (“vote counting”). Going beyond the classical pitfalls, we also use simulation to provide intuition that relying on the statistical estimate “$p$-value” as a measure of evidence without considering its sample-to-sample variability falls short of the mark even within an otherwise appropriate interpretation. We conclude with a discussion of the exigencies of informed approaches to statistical inference and corresponding institutional reforms. Full Article
ari A review of dynamic network models with latent variables By projecteuclid.org Published On :: Mon, 03 Sep 2018 04:01 EDT Bomin Kim, Kevin H. Lee, Lingzhou Xue, Xiaoyue Niu. Source: Statistics Surveys, Volume 12, 105--135.Abstract: We present a selective review of statistical modeling of dynamic networks. We focus on models with latent variables, specifically, the latent space models and the latent class models (or stochastic blockmodels), which investigate both the observed features and the unobserved structure of networks. We begin with an overview of the static models, and then we introduce the dynamic extensions. For each dynamic model, we also discuss its applications that have been studied in the literature, with the data source listed in Appendix. Based on the review, we summarize a list of open problems and challenges in dynamic network modeling with latent variables. Full Article
ari Variable selection methods for model-based clustering By projecteuclid.org Published On :: Thu, 26 Apr 2018 04:00 EDT Michael Fop, Thomas Brendan Murphy. Source: Statistics Surveys, Volume 12, 18--65.Abstract: Model-based clustering is a popular approach for clustering multivariate data which has seen applications in numerous fields. Nowadays, high-dimensional data are more and more common and the model-based clustering approach has adapted to deal with the increasing dimensionality. In particular, the development of variable selection techniques has received a lot of attention and research effort in recent years. Even for small size problems, variable selection has been advocated to facilitate the interpretation of the clustering results. This review provides a summary of the methods developed for variable selection in model-based clustering. Existing R packages implementing the different methods are indicated and illustrated in application to two data analysis examples. Full Article
ari Measuring multivariate association and beyond By projecteuclid.org Published On :: Wed, 16 Nov 2016 22:00 EST Julie Josse, Susan Holmes. Source: Statistics Surveys, Volume 10, 132--167.Abstract: Simple correlation coefficients between two variables have been generalized to measure association between two matrices in many ways. Coefficients such as the RV coefficient, the distance covariance (dCov) coefficient and kernel based coefficients are being used by different research communities. Scientists use these coefficients to test whether two random vectors are linked. Once it has been ascertained that there is such association through testing, then a next step, often ignored, is to explore and uncover the association’s underlying patterns. This article provides a survey of various measures of dependence between random vectors and tests of independence and emphasizes the connections and differences between the various approaches. After providing definitions of the coefficients and associated tests, we present the recent improvements that enhance their statistical properties and ease of interpretation. We summarize multi-table approaches and provide scenarii where the indices can provide useful summaries of heterogeneous multi-block data. We illustrate these different strategies on several examples of real data and suggest directions for future research. Full Article
ari A comparison of spatial predictors when datasets could be very large By projecteuclid.org Published On :: Tue, 19 Jul 2016 14:13 EDT Jonathan R. Bradley, Noel Cressie, Tao Shi. Source: Statistics Surveys, Volume 10, 100--131.Abstract: In this article, we review and compare a number of methods of spatial prediction, where each method is viewed as an algorithm that processes spatial data. To demonstrate the breadth of available choices, we consider both traditional and more-recently-introduced spatial predictors. Specifically, in our exposition we review: traditional stationary kriging, smoothing splines, negative-exponential distance-weighting, fixed rank kriging, modified predictive processes, a stochastic partial differential equation approach, and lattice kriging. This comparison is meant to provide a service to practitioners wishing to decide between spatial predictors. Hence, we provide technical material for the unfamiliar, which includes the definition and motivation for each (deterministic and stochastic) spatial predictor. We use a benchmark dataset of $mathrm{CO}_{2}$ data from NASA’s AIRS instrument to address computational efficiencies that include CPU time and memory usage. Furthermore, the predictive performance of each spatial predictor is assessed empirically using a hold-out subset of the AIRS data. Full Article
ari $M$-functionals of multivariate scatter By projecteuclid.org Published On :: Fri, 20 Mar 2015 09:11 EDT Lutz Dümbgen, Markus Pauly, Thomas Schweizer. Source: Statistics Surveys, Volume 9, 32--105.Abstract: This survey provides a self-contained account of $M$-estimation of multivariate scatter. In particular, we present new proofs for existence of the underlying $M$-functionals and discuss their weak continuity and differentiability. This is done in a rather general framework with matrix-valued random variables. By doing so we reveal a connection between Tyler’s (1987a) $M$-functional of scatter and the estimation of proportional covariance matrices. Moreover, this general framework allows us to treat a new class of scatter estimators, based on symmetrizations of arbitrary order. Finally these results are applied to $M$-estimation of multivariate location and scatter via multivariate $t$-distributions. Full Article