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Allegorical tomb of Archduchess Maria Christina of Austria, in the form of a pyramid into which sculpted mourners carry her urn. Engraving by P. Bonato, 1805, after D. Del Frate after A. Canova.

([Rome] : Raffaelle Jacomini impresse)




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Epicharmus of Cos. Lithograph by T. Sauvé after Raphael.

A Paris (rue du Cloître Notre Dame no. 4) : chez Tessari & Cie., [1829]




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Austrian soldiers in Italy carousing in an inn with a monk. Photograph by J. Albert after H.J. Stanley, 1860.

München [Munich] : Jos. Albert K.B. Hof-Photograph, [1860]




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Paul brings herbs to refresh Virginie after she has performed a long walk barefoot. Stipple engraving by J.P. Simon after C.P. Landon.

A Paris (rue St Denis No. 214) : chez Bance aîné, [1810?]




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A woman holding a baby; possibly Victoria Duchess of Kent and Strathearn at the christening of Princess Alexandrina Victoria (subsequently Queen Victoria). Wood engraving by P. Naumann, 18--.




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A Moroccan horseman setting off with a rifle to perform at an equestrian display (fantasia, Tbourida). Etching and drypoint by L.A. Lecouteux after H. Regnault, 1870.




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A lion that has escaped from a circus in Florence picks up a baby in its teeth, but when the baby's mother shouts at it, the lion gives the baby back to the mother unharmed. Watercolour by M. Díez de Bulnes, 1817, after N.A. Monsiau.

[Spain?], An. 1817.




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A road by a river outside a town: a distraught woman lying by the side of a road is recognized by a man who grasps her by the wrist. Engraving by W. Woollett.

London (Sold in Green Street, Leicester Fields) : [W. Woollett?], [between 1760 and 1769?]




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A castle (the Castello Odescalchi di Bracciano?), with a flock of sheep attended by a shepherd. Etching and mezzotint by L. Marvy after Claude Lorraine.

[Paris] : Calcographie du Louvre, Musées Imperiaux, [1849?]




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Grotesque ornament. Engravings by or after J. Androuet du Cerceau.

[Paris?] : [J. Androuet du Cerceau?], [1562?]




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Paraos (praus, boats) off the coast of the Philippines. Engraving by J. Heath, 1798.

London (Pater Noster Row) : G.G. & J. Robinson, Nov.r 1st 1798.




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Morality, supported by Religion, points the way to happiness. Engraving by E. de Ghendt, 1807, after J.M. Moreau.

[Paris], [1807]




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The Raden Temenggung and regent of Lebak, Java, Indonesia. Coloured lithograph by P. Lauters after C.W.M. van der Velde, ca. 1843.

Amsterdam : Uitgegeven by Frans Buffa en Zonen, [between 1843 and 1845]




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The Radja Djajanagara and regent of Serang, Java, Indonesia. Coloured lithograph by P. Lauters after C.W.M. van der Velde, ca. 1843.

Amsterdam : Uitgegeven by Frans Buffa en Zonen, [between 1843 and 1845]




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First report of the British Association Committee on the treatment and utilization of sewage : drawn up at the request of the Committee / by Dr. Benjamin H. Paul.

London : Longmans, Green, Reader and Dyer, 1870.




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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.

[Paris] : [publisher not identified], 1782.




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King Charles I at the battle of Naseby: the Earl of Carnwath leads the king's horse around and back from danger, causing confusion among the Royalist troops. Engraving by N.G. Dupuis after C. Parrocel.

[London] : [Thomas. Bowles] : [John Bowles], [1728]




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The birth of Henri IV at the castle of Pau. Etching by E.J. Ramus after Eugène-François-Marie-Joseph Devéria.




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Michigan Teachers Can Leave the Union at Any Time, Not Just in August, Court Rules

The Michigan ruling could be a signal of what's to come after the case on union fees that's currently being decided by the U.S. Supreme Court.




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The Latest: Reno Rodeo canceled because of coronavirus

The century-old Reno Rodeo has canceled the 10-day event in June because of the coronavirus pandemic. Reno Rodeo President Craig Downie said in a letter to the rodeo’s board of directors that canceling the event scheduled for June 18-27 was necessary to ensure the safety of participants, fans, vendors, sponsors and volunteers. General Manager George Combs said it was a difficult decision, made in consultation with health experts as well as the Professional Rodeo Cowboys Association.




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XIV. Salicylsäure, salicylsaures Natron und Thymol in ihrem Einfluss auf Krankheiten / Dr Bälz

[Place of publication not identified] : [publisher not identified], [18--?]




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Étude hygienique sur la profession de mouleur en cuivre : pour servir a l'histoire des professions exposées aux poussières inorganiques / par Ambroise Tardieu.

Paris, [France] : J.B. Baillière, Libraire de l'Académie Impériale de Médicine, 1854.




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Parce que, travestis et transgenres, notre regard sur le mode et les autres se veut teinté de respect et de douceur / Hommefleur.

Châtillon, France : Association Hommefleur, [date of publication not identified]




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burnt out zine ~ how to cope with autistic burnout // autism, asd, aspergers, neurodivergent

2019




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Oh Luna Fortuna : the story of how the ethics of polyamory helped my rescue dog and me heal from trauma / graphic memoir comic by Stacy Bias.

London : Stacy Bias, 2019.




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Veränderbarkeit des Genoms : Herausforderungen für die Zukunft : Vorträge anlässlich der Jahresversammlung am 22. und 23. September 2017 in Halle (Saale) / herausgegeben von: Jörg Hacker.

Halle (Saale) : Deutsche Akademie der Naturforscher Leopoldina - Nationale Akademie der Wissenschaften ; Stuttgart : Wissenschaftliche Verlagsgesellschaft, 2019.




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Rx: 3 x/week LAAM : alternative to methadone / editors, Jack D. Blaine, Pierre F. Renault.

Rockville, Maryland : The National Institute on Drug Abuse, 1976.




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Narcotic antagonists : naltrexone : progress report / editors, Demetrios Julius, Pierre Renault.

Rockville, Maryland : U.S. Dept. of Health, Education, and Welfare, Public Health Service, Alcohol, Drug Abuse and Mental Health Administration, 1976.




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Women and drugs : a new era for research / editors, Barbara A. Ray, Monique C. Braude.

Rockville, Maryland : National Institute on Drug Abuse, 1986.




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Strategies for research on the interactions of drugs of abuse / editors, Monique C. Braude, Harold M. Ginzburg.

Rockville, Maryland : National Institute on Drug Abuse, 1986.




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Drug abuse treatment client characteristics and pretreatment behaviors : 1979-1981 TOPS admission cohorts / Robert L. Hubbard, Robert M. Bray, Elizabeth R. Cavanaugh, J. Valley Rachal, S. Gail Craddock, James J. Collins, Margaret Allison ; Research Triang

Rockville, Maryland : National Institute on Drug Abuse, 1986.




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Addict aftercare : recovery training and self-help / Fred Zackon, William E. McAuliffe, James M.N. Ch'ien.




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Professional and paraprofessional drug abuse counselors : three reports / Leonard A. LoSciuto, Leona S. Aiken, Mary Ann Ausetts ; [compiled, written, and prepared for publication by the Institute for Survey Research, Temple University].

Rockville, Maryland : National Institute on Drug Abuse, 1979.




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Breast exams : (for when you're getting them cut off) : (because you want to)

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




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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?]




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Jeu instructif des peuples, 1815 / Paul-André Basset




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Archive of the Association Culturelle Franco-Australienne




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Lachlan Macquarie land grant to John Laurie




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John Laurie land grant, 8 October 1816




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Series 02 Part 01: Sir Augustus Charles Gregory letterbook, 1852-1854




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Statistical convergence of the EM algorithm on Gaussian mixture models

Ruofei Zhao, Yuanzhi Li, Yuekai Sun.

Source: Electronic Journal of Statistics, Volume 14, Number 1, 632--660.

Abstract:
We study the convergence behavior of the Expectation Maximization (EM) algorithm on Gaussian mixture models with an arbitrary number of mixture components and mixing weights. We show that as long as the means of the components are separated by at least $Omega (sqrt{min {M,d}})$, where $M$ is the number of components and $d$ is the dimension, the EM algorithm converges locally to the global optimum of the log-likelihood. Further, we show that the convergence rate is linear and characterize the size of the basin of attraction to the global optimum.




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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.




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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.




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Bayesian variance estimation in the Gaussian sequence model with partial information on the means

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.




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A Bayesian approach to disease clustering using restricted Chinese restaurant processes

Claudia Wehrhahn, Samuel Leonard, Abel Rodriguez, Tatiana Xifara.

Source: Electronic Journal of Statistics, Volume 14, Number 1, 1449--1478.

Abstract:
Identifying disease clusters (areas with an unusually high incidence of a particular disease) is a common problem in epidemiology and public health. We describe a Bayesian nonparametric mixture model for disease clustering that constrains clusters to be made of adjacent areal units. This is achieved by modifying the exchangeable partition probability function associated with the Ewen’s sampling distribution. We call the resulting prior the Restricted Chinese Restaurant Process, as the associated full conditional distributions resemble those associated with the standard Chinese Restaurant Process. The model is illustrated using synthetic data sets and in an application to oral cancer mortality in Germany.




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Nonconcave penalized estimation in sparse vector autoregression model

Xuening Zhu.

Source: Electronic Journal of Statistics, Volume 14, Number 1, 1413--1448.

Abstract:
High dimensional time series receive considerable attention recently, whose temporal and cross-sectional dependency could be captured by the vector autoregression (VAR) model. To tackle with the high dimensionality, penalization methods are widely employed. However, theoretically, the existing studies of the penalization methods mainly focus on $i.i.d$ data, therefore cannot quantify the effect of the dependence level on the convergence rate. In this work, we use the spectral properties of the time series to quantify the dependence and derive a nonasymptotic upper bound for the estimation errors. By focusing on the nonconcave penalization methods, we manage to establish the oracle properties of the penalized VAR model estimation by considering the effects of temporal and cross-sectional dependence. Extensive numerical studies are conducted to compare the finite sample performance using different penalization functions. Lastly, an air pollution data of mainland China is analyzed for illustration purpose.




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Causal Discovery Toolbox: Uncovering causal relationships in Python

This paper presents a new open source Python framework for causal discovery from observational data and domain background knowledge, aimed at causal graph and causal mechanism modeling. The cdt package implements an end-to-end approach, recovering the direct dependencies (the skeleton of the causal graph) and the causal relationships between variables. It includes algorithms from the `Bnlearn' and `Pcalg' packages, together with algorithms for pairwise causal discovery such as ANM.




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Learning Linear Non-Gaussian Causal Models in the Presence of Latent Variables

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.




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Switching Regression Models and Causal Inference in the Presence of Discrete Latent Variables

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.




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Learning Causal Networks via Additive Faithfulness

In this paper we introduce a statistical model, called additively faithful directed acyclic graph (AFDAG), for causal learning from observational data. Our approach is based on additive conditional independence (ACI), a recently proposed three-way statistical relation that shares many similarities with conditional independence but without resorting to multi-dimensional kernels. This distinct feature strikes a balance between a parametric model and a fully nonparametric model, which makes the proposed model attractive for handling large networks. We develop an estimator for AFDAG based on a linear operator that characterizes ACI, and establish the consistency and convergence rates of this estimator, as well as the uniform consistency of the estimated DAG. Moreover, we introduce a modified PC-algorithm to implement the estimating procedure efficiently, so that its complexity is determined by the level of sparseness rather than the dimension of the network. Through simulation studies we show that our method outperforms existing methods when commonly assumed conditions such as Gaussian or Gaussian copula distributions do not hold. Finally, the usefulness of AFDAG formulation is demonstrated through an application to a proteomics data set.