ed

Red : a zine about periods.

[London] : [publisher not identified], [2019]




ed

Brain on meds.

[London] : [publisher not identified], [2019]




ed

Food & me : a zine about disordered eating.

[London] : [publisher not identified], [2019]




ed

Evil eye : to protect use red thread : images of eyes being attacked.

[London] : [publisher not identified], [2019]




ed

National transportation safety board public forum on alcohol and drug safety education.

Springfield, Virginia : National Technical Information Service, 1986.




ed

The incidence of driving under the influence of drugs, 1985 : an update of the state of knowledge / [Richard P. Compton and Theodore E. Anderson].

Springfield, Virginia : National Technical Information Service, 1985.




ed

Drug abuse treatment evaluation : strategies, progress, and prospects / editors Frank M. Tims, Jacqueline P. Ludford.

Springfield, Virginia. : National Technical Information Service, 1984.




ed

The incidence of drugs in fatally injured drivers : final report / [E. J. Woodhouse].

Springfield, Virginia : National Technical Information Service, 1974.




ed

Evaluating drug information programs / Panel on the Impact of Information on Drug Use and Misuse, National Research Council ; prepared for National Institute of Mental Health.

Springfield, Virginia : National Technical Information Service, 1973.




ed

Survey of drug information needs and problems associated with communications directed to practicing physicians : part III : remedial ad survey / [Arthur Ruskin, M.D.]

Springfield, Virginia : National Technical Information Service, 1974.




ed

Effect of marihuana and alcohol on visual search performance / H.A. Moskowitz, K. Ziedman, S. Sharma.

Washington : Dept. of Transportation, National Highway Traffic Safety Administration, 1976.




ed

The nature and treatment of nonopiate abuse : a review of the literature. Volume 2 / Wynne Associates for Division of Research, National Institute on Drug Abuse, Alcohol, Drug Abuse and Mental Health Administration, Department of Health, Education and Wel

Washington, D.C. : Wynne Associates, 1974.




ed

Drug-related social work in street agencies : a study by the Institute for the Study of Drug Dependence / Nicholas Dorn and Nigel South.

Norwich : University of East Anglia : Social Work Today, 1984.




ed

Swimming upstream : trends and prospects in education for health / Margaret Whitehead.

London : King's Fund Institute, 1989.




ed

Making the connection : health care needs of drug using prostitutes : information pack / by Jean Faugier and Steve Cranfield.

[Manchester] : School of Nursing Studies, University of Manchester, [1995?]




ed

Policy and guidelines for the provision of needle and syringe exchange services to young people / Tom Aldridge and Andrew Preston.

[Dorchester] : Dorset Community NHS Trust, 1997.




ed

The wilderness of mind : sacred plants in cross-cultural perspective / Marlene Dobkin De Rios.

Beverly Hills : Sage Publications, 1976.




ed

O problema do abuso de drogas prevenção através investigação, pesquisa e educação / Murillo de Macedo Pereira, Vera Kühn de Macedo Pereira.

São Paulo : Governo do Estado de Sao Paulo, Secretaria da Segurança Pública, 1975.




ed

Coca : cocaína / Murillo de Macedo Pereira.

São Paulo : Serviço Grafíco da Secretaria da Segurança Pública, 1976.




ed

A pesquisa sobre o problema do abuso de drogas / Murillo de Macedo Pereira.

São Paulo : Serviço Grafíco da Secretaria da Segurança Pública, 1976.




ed

Drug abuse information source book / [Foreword by Edward S. Brady].

[West Point, Pa.] : [Merck Sharp & Dohme], [1977?]




ed

Methadone substitution therapy : policies and practices / edited by Hamid Ghodse, Carmel Clancy, Adenekan Oyefeso.

London : European Collaborating Centres in Addiction Studies, 1998.




ed

New essays on abortion and bioethics / volume editor, Rem B. Edwards.

Greenwich, Conn. : Jai Press Inc., 1997.




ed

Proceedings of the Parapsychological Association.

Durham, North Carolina : [Duke Station, 1957-[197-?]




ed

Illuminated address presented to Andrew Lynch, 1925




ed

Series 02: Merle Highet sound recordings of Frederick Rose, 1990




ed

Edna Ryan Award records, 2014




ed

Wedding photographs of William Thomas Cadell and Anne Macansh set in Harriet Scott graphic




ed

Selected Poems of Henry Lawson: Correspondence: Vol.1




ed

Sydney in 1848 : illustrated by copper-plate engravings of its principal streets, public buildings, churches, chapels, etc. / from drawings by Joseph Fowles.




ed

Digitisation Officer appointed

Digitisation Officer appointed I am pleased to introduce our new Digitisation Officer, Lauren O'Brien. Her main f




ed

The scanner has arrived

The glass plate scanner has now arrived.  Though officially known as a Kodak IQ3 Smart XY axis transparency scanner, I t




ed

Texas women's basketball coach Karen Aston dismissed

AUSTIN, Texas (AP) -- Texas dismissed women's basketball coach Karen Aston on Friday, ending an eight-year stint that included four straight trips to the NCAA Tournament Sweet 16 from 2015-2018.




ed

Top three Ruthy Hebard moments: NCAA record for consecutive FGs etched her place in history

Over four years in Eugene, Ruthy Hebard has made a name for herself with reliability and dynamic play. She's had many memorable moments in a Duck uniform. But her career day against Washington State (34 points), her moment reaching 2,000 career points and her NCAA record for consecutive made FGs (2018) tops the list. Against the Trojans, she set the record (30) and later extended it to 33.




ed

Sabrina Ionescu, Ruthy Hebard, Satou Sabally on staying connected, WNBA Draft, Oregon's historic season

Pac-12 Networks' Ashley Adamson catches up with Oregon's "Big 3" of Sabrina Ionescu, Ruthy Hebard and Satou Sabally to hear how they're adjusting to the new world without sports while still preparing for the WNBA Draft on April 17. They also share how they're staying hungry for basketball during the hiatus.




ed

Ivey introduced as new Notre Dame coach, succeeding McGraw

Niele Ivey is coming home.




ed

Oregon State women's basketball receives Pac-12 Sportsmanship Award for supporting rival Oregon in tragedy

On the day Kobe Bryant suddenly passed away, the Beavers embraced their rivals at midcourt in a moment of strength to support the Ducks, many of whom had personal connections to Bryant and his daughter, Gigi. For this, Oregon State is the 2020 recipient of the Pac-12 Sportsmanship Award.




ed

Stanford's Tara VanDerveer on Haley Jones' versatile freshman year: 'It was really incredible'

During Friday's "Pac-12 Perspective," Stanford head coach Tara VanDerveer spoke about Haley Jones' positionless game and how the Cardinal used the dynamic freshman in 2019-20. Download and listen wherever you get your podcasts.




ed

The limiting behavior of isotonic and convex regression estimators when the model is misspecified

Eunji Lim.

Source: Electronic Journal of Statistics, Volume 14, Number 1, 2053--2097.

Abstract:
We study the asymptotic behavior of the least squares estimators when the model is possibly misspecified. We consider the setting where we wish to estimate an unknown function $f_{*}:(0,1)^{d} ightarrow mathbb{R}$ from observations $(X,Y),(X_{1},Y_{1}),cdots ,(X_{n},Y_{n})$; our estimator $hat{g}_{n}$ is the minimizer of $sum _{i=1}^{n}(Y_{i}-g(X_{i}))^{2}/n$ over $gin mathcal{G}$ for some set of functions $mathcal{G}$. We provide sufficient conditions on the metric entropy of $mathcal{G}$, under which $hat{g}_{n}$ converges to $g_{*}$ as $n ightarrow infty $, where $g_{*}$ is the minimizer of $|g-f_{*}| riangleq mathbb{E}(g(X)-f_{*}(X))^{2}$ over $gin mathcal{G}$. As corollaries of our theorem, we establish $|hat{g}_{n}-g_{*}| ightarrow 0$ as $n ightarrow infty $ when $mathcal{G}$ is the set of monotone functions or the set of convex functions. We also make a connection between the convergence rate of $|hat{g}_{n}-g_{*}|$ and the metric entropy of $mathcal{G}$. As special cases of our finding, we compute the convergence rate of $|hat{g}_{n}-g_{*}|^{2}$ when $mathcal{G}$ is the set of bounded monotone functions or the set of bounded convex functions.




ed

Generalised cepstral models for the spectrum of vector time series

Maddalena Cavicchioli.

Source: Electronic Journal of Statistics, Volume 14, Number 1, 605--631.

Abstract:
The paper treats the modeling of stationary multivariate stochastic processes via a frequency domain model expressed in terms of cepstrum theory. The proposed model nests the vector exponential model of [20] as a special case, and extends the generalised cepstral model of [36] to the multivariate setting, answering a question raised by the last authors in their paper. Contemporarily, we extend the notion of generalised autocovariance function of [35] to vector time series. Then we derive explicit matrix formulas connecting generalised cepstral and autocovariance matrices of the process, and prove the consistency and asymptotic properties of the Whittle likelihood estimators of model parameters. Asymptotic theory for the special case of the vector exponential model is a significant addition to the paper of [20]. We also provide a mathematical machinery, based on matrix differentiation, and computational methods to derive our results, which differ significantly from those employed in the univariate case. The utility of the proposed model is illustrated through Monte Carlo simulation from a bivariate process characterized by a high dynamic range, and an empirical application on time varying minimum variance hedge ratios through the second moments of future and spot prices in the corn commodity market.




ed

Gaussian field on the symmetric group: Prediction and learning

François Bachoc, Baptiste Broto, Fabrice Gamboa, Jean-Michel Loubes.

Source: Electronic Journal of Statistics, Volume 14, Number 1, 503--546.

Abstract:
In the framework of the supervised learning of a real function defined on an abstract space $mathcal{X}$, Gaussian processes are widely used. The Euclidean case for $mathcal{X}$ is well known and has been widely studied. In this paper, we explore the less classical case where $mathcal{X}$ is the non commutative finite group of permutations (namely the so-called symmetric group $S_{N}$). We provide an application to Gaussian process based optimization of Latin Hypercube Designs. We also extend our results to the case of partial rankings.




ed

On polyhedral estimation of signals via indirect observations

Anatoli Juditsky, Arkadi Nemirovski.

Source: Electronic Journal of Statistics, Volume 14, Number 1, 458--502.

Abstract:
We consider the problem of recovering linear image of unknown signal belonging to a given convex compact signal set from noisy observation of another linear image of the signal. We develop a simple generic efficiently computable non linear in observations “polyhedral” estimate along with computation-friendly techniques for its design and risk analysis. We demonstrate that under favorable circumstances the resulting estimate is provably near-optimal in the minimax sense, the “favorable circumstances” being less restrictive than the weakest known so far assumptions ensuring near-optimality of estimates which are linear in observations.




ed

Parseval inequalities and lower bounds for variance-based sensitivity indices

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.




ed

Asymptotic properties of the maximum likelihood and cross validation estimators for transformed Gaussian processes

François Bachoc, José Betancourt, Reinhard Furrer, Thierry Klein.

Source: Electronic Journal of Statistics, Volume 14, Number 1, 1962--2008.

Abstract:
The asymptotic analysis of covariance parameter estimation of Gaussian processes has been subject to intensive investigation. However, this asymptotic analysis is very scarce for non-Gaussian processes. In this paper, we study a class of non-Gaussian processes obtained by regular non-linear transformations of Gaussian processes. We provide the increasing-domain asymptotic properties of the (Gaussian) maximum likelihood and cross validation estimators of the covariance parameters of a non-Gaussian process of this class. We show that these estimators are consistent and asymptotically normal, although they are defined as if the process was Gaussian. They do not need to model or estimate the non-linear transformation. Our results can thus be interpreted as a robustness of (Gaussian) maximum likelihood and cross validation towards non-Gaussianity. Our proofs rely on two technical results that are of independent interest for the increasing-domain asymptotic literature of spatial processes. First, we show that, under mild assumptions, coefficients of inverses of large covariance matrices decay at an inverse polynomial rate as a function of the corresponding observation location distances. Second, we provide a general central limit theorem for quadratic forms obtained from transformed Gaussian processes. Finally, our asymptotic results are illustrated by numerical simulations.




ed

Sparse equisigned PCA: Algorithms and performance bounds in the noisy rank-1 setting

Arvind Prasadan, Raj Rao Nadakuditi, Debashis Paul.

Source: Electronic Journal of Statistics, Volume 14, Number 1, 345--385.

Abstract:
Singular value decomposition (SVD) based principal component analysis (PCA) breaks down in the high-dimensional and limited sample size regime below a certain critical eigen-SNR that depends on the dimensionality of the system and the number of samples. Below this critical eigen-SNR, the estimates returned by the SVD are asymptotically uncorrelated with the latent principal components. We consider a setting where the left singular vector of the underlying rank one signal matrix is assumed to be sparse and the right singular vector is assumed to be equisigned, that is, having either only nonnegative or only nonpositive entries. We consider six different algorithms for estimating the sparse principal component based on different statistical criteria and prove that by exploiting sparsity, we recover consistent estimates in the low eigen-SNR regime where the SVD fails. Our analysis reveals conditions under which a coordinate selection scheme based on a sum-type decision statistic outperforms schemes that utilize the $ell _{1}$ and $ell _{2}$ norm-based statistics. We derive lower bounds on the size of detectable coordinates of the principal left singular vector and utilize these lower bounds to derive lower bounds on the worst-case risk. Finally, we verify our findings with numerical simulations and a illustrate the performance with a video data where the interest is in identifying objects.




ed

Assessing prediction error at interpolation and extrapolation points

Assaf Rabinowicz, Saharon Rosset.

Source: Electronic Journal of Statistics, Volume 14, Number 1, 272--301.

Abstract:
Common model selection criteria, such as $AIC$ and its variants, are based on in-sample prediction error estimators. However, in many applications involving predicting at interpolation and extrapolation points, in-sample error does not represent the relevant prediction error. In this paper new prediction error estimators, $tAI$ and $Loss(w_{t})$ are introduced. These estimators generalize previous error estimators, however are also applicable for assessing prediction error in cases involving interpolation and extrapolation. Based on these prediction error estimators, two model selection criteria with the same spirit as $AIC$ and Mallow’s $C_{p}$ are suggested. The advantages of our suggested methods are demonstrated in a simulation and a real data analysis of studies involving interpolation and extrapolation in linear mixed model and Gaussian process regression.




ed

Model-based clustering with envelopes

Wenjing Wang, Xin Zhang, Qing Mai.

Source: Electronic Journal of Statistics, Volume 14, Number 1, 82--109.

Abstract:
Clustering analysis is an important unsupervised learning technique in multivariate statistics and machine learning. In this paper, we propose a set of new mixture models called CLEMM (in short for Clustering with Envelope Mixture Models) that is based on the widely used Gaussian mixture model assumptions and the nascent research area of envelope methodology. Formulated mostly for regression models, envelope methodology aims for simultaneous dimension reduction and efficient parameter estimation, and includes a very recent formulation of envelope discriminant subspace for classification and discriminant analysis. Motivated by the envelope discriminant subspace pursuit in classification, we consider parsimonious probabilistic mixture models where the cluster analysis can be improved by projecting the data onto a latent lower-dimensional subspace. The proposed CLEMM framework and the associated envelope-EM algorithms thus provide foundations for envelope methods in unsupervised and semi-supervised learning problems. Numerical studies on simulated data and two benchmark data sets show significant improvement of our propose methods over the classical methods such as Gaussian mixture models, K-means and hierarchical clustering algorithms. An R package is available at https://github.com/kusakehan/CLEMM.




ed

Simultaneous transformation and rounding (STAR) models for integer-valued data

Daniel R. Kowal, Antonio Canale.

Source: Electronic Journal of Statistics, Volume 14, Number 1, 1744--1772.

Abstract:
We propose a simple yet powerful framework for modeling integer-valued data, such as counts, scores, and rounded data. The data-generating process is defined by Simultaneously Transforming and Rounding (STAR) a continuous-valued process, which produces a flexible family of integer-valued distributions capable of modeling zero-inflation, bounded or censored data, and over- or underdispersion. The transformation is modeled as unknown for greater distributional flexibility, while the rounding operation ensures a coherent integer-valued data-generating process. An efficient MCMC algorithm is developed for posterior inference and provides a mechanism for adaptation of successful Bayesian models and algorithms for continuous data to the integer-valued data setting. Using the STAR framework, we design a new Bayesian Additive Regression Tree model for integer-valued data, which demonstrates impressive predictive distribution accuracy for both synthetic data and a large healthcare utilization dataset. For interpretable regression-based inference, we develop a STAR additive model, which offers greater flexibility and scalability than existing integer-valued models. The STAR additive model is applied to study the recent decline in Amazon river dolphins.




ed

On the predictive potential of kernel principal components

Ben Jones, Andreas Artemiou, Bing Li.

Source: Electronic Journal of Statistics, Volume 14, Number 1, 1--23.

Abstract:
We give a probabilistic analysis of a phenomenon in statistics which, until recently, has not received a convincing explanation. This phenomenon is that the leading principal components tend to possess more predictive power for a response variable than lower-ranking ones despite the procedure being unsupervised. Our result, in its most general form, shows that the phenomenon goes far beyond the context of linear regression and classical principal components — if an arbitrary distribution for the predictor $X$ and an arbitrary conditional distribution for $Yvert X$ are chosen then any measureable function $g(Y)$, subject to a mild condition, tends to be more correlated with the higher-ranking kernel principal components than with the lower-ranking ones. The “arbitrariness” is formulated in terms of unitary invariance then the tendency is explicitly quantified by exploring how unitary invariance relates to the Cauchy distribution. The most general results, for technical reasons, are shown for the case where the kernel space is finite dimensional. The occurency of this tendency in real world databases is also investigated to show that our results are consistent with observation.




ed

Posterior contraction and credible sets for filaments of regression functions

Wei Li, Subhashis Ghosal.

Source: Electronic Journal of Statistics, Volume 14, Number 1, 1707--1743.

Abstract:
A filament consists of local maximizers of a smooth function $f$ when moving in a certain direction. A filamentary structure is an important feature of the shape of an object and is also considered as an important lower dimensional characterization of multivariate data. There have been some recent theoretical studies of filaments in the nonparametric kernel density estimation context. This paper supplements the current literature in two ways. First, we provide a Bayesian approach to the filament estimation in regression context and study the posterior contraction rates using a finite random series of B-splines basis. Compared with the kernel-estimation method, this has a theoretical advantage as the bias can be better controlled when the function is smoother, which allows obtaining better rates. Assuming that $f:mathbb{R}^{2}mapsto mathbb{R}$ belongs to an isotropic Hölder class of order $alpha geq 4$, with the optimal choice of smoothing parameters, the posterior contraction rates for the filament points on some appropriately defined integral curves and for the Hausdorff distance of the filament are both $(n/log n)^{(2-alpha )/(2(1+alpha ))}$. Secondly, we provide a way to construct a credible set with sufficient frequentist coverage for the filaments. We demonstrate the success of our proposed method in simulations and one application to earthquake data.