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Des maladies du cerveau et de l'innervation d'après Auguste Comte / par M. G. Audiffrent.

Paris : E. Leroux, 1874.




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Des maladies du coeur / par S. Botkin.

Paris : Germer Bailliere, 1870.




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Des maladies foetales qui peuvent faire obstacle à l'accouchement : thèse ... / par Alphonse Herrgott.

Paris : O. Doin, 1878.




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Des maladies mentales et nerveuses : pathologie, médecine légale, administration de asiles d’aliénés, etc. / par E. Billod.

Paris : G. Masson, 1882.




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Des maladies simulées et des moyens de les reconnaître / par Edmond Boisseau.

Paris : Bailliere, 1870.




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Des médications hypothermique et hyperthermique, et des moyens thérapeutiques qui les remplissent. De la pharmacothermogenèse, ou Théories de l'action des médicaments sur la température animale / par P.F. da Costa.

Lisbonne : Impr. de l'Académie royale des sciences, 1881.




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Des stations médicales dans les maladies des enfants; climatothérapie, hydrothérapie, eaux minérales, bains de mer / par Le Dr E. Perier.

Paris : Rueff, 1896.




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Des vésanies, ou maladies mentales / par J.-R. Jacquelin-Dubuisson.

Paris : chez l'auteur, 1816.




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Description des causes et des effets de la maladie connue sous le nom de diabetes / par M. Pharamond.

Paris : Gabon, 1829.




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Descriptive anatomy of the horse and domestic animals / chiefly compiled from the manuscripts of Thomas Strangeways and Professor Goodsir by J. Wilson Johnston and T.J. Call.

Edinburgh : MacLachlan and Stewart, 1870.




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Diagnostic et traitement des maladies du coeur / par Constantin Paul.

Paris : Asselin et Houzeau, 1887.




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Dictionnaire de médecine et de thérapeutique médicale et chirurgicale : comprenant le résumé de toute la médecine et de toute la chirurgie, les indications thérapeutiques de chaque maladie, la médecine opératoi

Paris : G. Bailliere, 1873.




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Die anomalen Articulationen des ersten Rippenpaares / von Hubert Luschka.

[Wien] : [publisher not identified], 1860.




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Die Malaria der afrikanischen Negerbevolkerung : besonders mit Bezug auf die Immunitatsfrage / von Albert Plehn.

Jena : G. Fischer, 1902.




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Die malignen Geschwülste im Kindesalter / von A. Steffen.

Stuttgart : F. Enke, 1905.




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Die paroxysmale Tachycardie; Anfälle von Herzjagen / von August Hoffmann.

Wiesbaden : Bergmann, 1900.




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Die thiericshen [i.e. thierischen] Parasiten des Menschen : im Anhang Tabellen enthaltend die wichtigsten Merkmale der Parasiten, Diagnosen und Angaben über die Therapie der durch die Parasiten hervorgerufenen pathologischen Erscheinungen / bearbeite

Cassel : T. Fischer, 1884.




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Diseases in animals (tick fever) : progress report on teh reproductive forms of the micro-organism of tick fever, with some observations on the relationships and nomenclature of that disease (16th December, 1897) / by J. Sidney Hunt.

[Place of publication not identified] : [publisher not identified], [1897?]




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Dissertation on scientific nomenclature, medical and general : exhibiting the defects, anomalies, errors, and discrepancies of its present condition : with suggestions for its improvement / by R.G. Mayne.

London : J. Churchill, 1849.




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Doubts of hydrophobia, as a specific disease, to be communicated by the bite of a dog ; with experiments on the supposed virus generated in that animal during the complaint termed madness ... / by Robert White.

London : printed for Knight and Lacey, 1826.




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Du decollement premature du placenta insere normalement / par Louis Dumarcet.

Paris : G. Steinheil, 1892.




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Du diagnostic et du traitement des maladies du coeur et en particulier de leur formes anomales / par Germain Sée ; leçons recueillies par F. Labadie-Lagrave.

Paris : V. Adrien Delahaye, 1879.




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Du manuel opératoire de l’hystérectomie vaginale / par M. Malapert.

Paris : Société d’éditions scientifiques, 1893.




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Du traitement des maladies du coeur par la méthode des Drs Schott, de Nauheim / par le docteur Moeller, médecin praticien à Bruxelles, membre titulaire de l'Académie royale de médecine de Belgique, etc / par la methode des drs

Bruxelles : A. Manceaux, 1893.




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The earliest recorded discovery of thermal springs / by Prosser James.

London : John Bale, 1897.




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An elementary treatise on the function of vision and its anomalies / by Dr. Giraud-Teulon ; translated from the second French edition by Lloyd Owen.

London : Bailliere, Tindall, & Cox, 1880.




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An enquiry into the source from whence the symptoms of the scurvy and of putrid fevers, arise : and into the seat which those affections occupy in the animal oeconomy; with a view of ascertaining a more just idea of putrid diseases than has generally been

London : printed for J. Dodsley, 1782.




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Epidemic cerebro-spinal meningitis and its relation to other forms of meningitis : a report to the State Board of Health of Massachusetts / Report made by W.T. Councilman, F.B. Mallory, and J.H. Wright.

Boston : Wright & Potter Printing Co, 1898.




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Epidemiology, or, The remote cause of epidemic diseases in the animal and in the vegetable creation ... Part 1 / by John Parkin.

London : J. & A. Churchill, 1873.




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Esperienze e riflessioni sopra la carie de'denti umani, coll'aggiunta di un nuovo saggio su la riproduzione dei denti negli animali rosicanti / di Francesco Lavagna.

Genova : G. Bonaudo, 1812.




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Essai sur l’alcalinitè du sang dans l’état de santé et dans quelques maladies / par J. Canard.

Paris : A. Parent, 1878.




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Essai sur l'application de la chimie a l'étude physiologique du sang de l'homme : et a l'étude physiologico-pathologique, hygiénique et thérapeutique des maladies de cette humeur / par P.S. Denis.

Paris : Béchet jeune, 1838.




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Essai sur le typhus, ou sur les fièvres dites malignes, putrides, bilieuses, muqueuses, jaune, la peste. Exposition analytique et expérimentale de la nature des fièvres en général ... / par J.F. Hernandez.

Paris : chez Mequignon-Marvis, 1816.




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An Idaho School Reopens. Are Its Precautions the 'New Normal'?

A private pre-K-12 school in Idaho welcomes students back after its coronavirus shutdown, but with shortened days, a closed cafeteria, no bus service, and other signs that things aren't back to normal.




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Where They Are: The Nation's Small But Growing Population of Black English-Learners

In five northern U.S. states, black students comprise more than a fifth of ELL enrollment.




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Observationes et historiae omnes & singulae è Guiljelmi Harvei libello De generatione animalium excerptae ... : Item Wilhelmi Langly De generatione animalium observationes quaedam. Accedunt Ovi faecundi singulis ab incubatione diebus factae inspe

Amstelodami : Typis A. Wolfgang, 1674.




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Column: More normality from NFL. Will it happen on time?

Spanking new stadiums in Los Angeles and Las Vegas unveiled in prime time. Business as usual, and you really can't blame the NFL for that. “The release of the NFL schedule is something our fans eagerly anticipate every year, as they look forward with hope and optimism to the season ahead,” Commissioner Roger Goodell said.




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Biman Mullick / Amal Ghosh.

[Place of publication unknown] : [publisher unknown], [198-?]




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Radioactive Animals




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Geschichte der Appendizitis : von der Entdeckung des Organs bis hin zur minimalinvasiven Appendektomie / Mali Kallenberger.

Berlin : Peter Lang [2019]




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Echelet picumne and echelet grimpeur, male / by Jean Gabriel Prêtre, 1824




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Univariate mean change point detection: Penalization, CUSUM and optimality

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.




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Asymptotics and optimal bandwidth for nonparametric estimation of density level sets

Wanli Qiao.

Source: Electronic Journal of Statistics, Volume 14, Number 1, 302--344.

Abstract:
Bandwidth selection is crucial in the kernel estimation of density level sets. A risk based on the symmetric difference between the estimated and true level sets is usually used to measure their proximity. In this paper we provide an asymptotic $L^{p}$ approximation to this risk, where $p$ is characterized by the weight function in the risk. In particular the excess risk corresponds to an $L^{2}$ type of risk, and is adopted to derive an optimal bandwidth for nonparametric level set estimation of $d$-dimensional density functions ($dgeq 1$). A direct plug-in bandwidth selector is developed for kernel density level set estimation and its efficacy is verified in numerical studies.




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Perspective maximum likelihood-type estimation via proximal decomposition

Patrick L. Combettes, Christian L. Müller.

Source: Electronic Journal of Statistics, Volume 14, Number 1, 207--238.

Abstract:
We introduce a flexible optimization model for maximum likelihood-type estimation (M-estimation) that encompasses and generalizes a large class of existing statistical models, including Huber’s concomitant M-estimator, Owen’s Huber/Berhu concomitant estimator, the scaled lasso, support vector machine regression, and penalized estimation with structured sparsity. The model, termed perspective M-estimation, leverages the observation that convex M-estimators with concomitant scale as well as various regularizers are instances of perspective functions, a construction that extends a convex function to a jointly convex one in terms of an additional scale variable. These nonsmooth functions are shown to be amenable to proximal analysis, which leads to principled and provably convergent optimization algorithms via proximal splitting. We derive novel proximity operators for several perspective functions of interest via a geometrical approach based on duality. We then devise a new proximal splitting algorithm to solve the proposed M-estimation problem and establish the convergence of both the scale and regression iterates it produces to a solution. Numerical experiments on synthetic and real-world data illustrate the broad applicability of the proposed framework.




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Rate optimal Chernoff bound and application to community detection in the stochastic block models

Zhixin Zhou, Ping Li.

Source: Electronic Journal of Statistics, Volume 14, Number 1, 1302--1347.

Abstract:
The Chernoff coefficient is known to be an upper bound of Bayes error probability in classification problem. In this paper, we will develop a rate optimal Chernoff bound on the Bayes error probability. The new bound is not only an upper bound but also a lower bound of Bayes error probability up to a constant factor. Moreover, we will apply this result to community detection in the stochastic block models. As a clustering problem, the optimal misclassification rate of community detection problem can be characterized by our rate optimal Chernoff bound. This can be formalized by deriving a minimax error rate over certain parameter space of stochastic block models, then achieving such an error rate by a feasible algorithm employing multiple steps of EM type updates.




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Consistency and asymptotic normality of Latent Block Model estimators

Vincent Brault, Christine Keribin, Mahendra Mariadassou.

Source: Electronic Journal of Statistics, Volume 14, Number 1, 1234--1268.

Abstract:
The Latent Block Model (LBM) is a model-based method to cluster simultaneously the $d$ columns and $n$ rows of a data matrix. Parameter estimation in LBM is a difficult and multifaceted problem. Although various estimation strategies have been proposed and are now well understood empirically, theoretical guarantees about their asymptotic behavior is rather sparse and most results are limited to the binary setting. We prove here theoretical guarantees in the valued settings. We show that under some mild conditions on the parameter space, and in an asymptotic regime where $log (d)/n$ and $log (n)/d$ tend to $0$ when $n$ and $d$ tend to infinity, (1) the maximum-likelihood estimate of the complete model (with known labels) is consistent and (2) the log-likelihood ratios are equivalent under the complete and observed (with unknown labels) models. This equivalence allows us to transfer the asymptotic consistency, and under mild conditions, asymptotic normality, to the maximum likelihood estimate under the observed model. Moreover, the variational estimator is also consistent and, under the same conditions, asymptotically normal.




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On the Complexity Analysis of the Primal Solutions for the Accelerated Randomized Dual Coordinate Ascent

Dual first-order methods are essential techniques for large-scale constrained convex optimization. However, when recovering the primal solutions, we need $T(epsilon^{-2})$ iterations to achieve an $epsilon$-optimal primal solution when we apply an algorithm to the non-strongly convex dual problem with $T(epsilon^{-1})$ iterations to achieve an $epsilon$-optimal dual solution, where $T(x)$ can be $x$ or $sqrt{x}$. In this paper, we prove that the iteration complexity of the primal solutions and dual solutions have the same $Oleft(frac{1}{sqrt{epsilon}} ight)$ order of magnitude for the accelerated randomized dual coordinate ascent. When the dual function further satisfies the quadratic functional growth condition, by restarting the algorithm at any period, we establish the linear iteration complexity for both the primal solutions and dual solutions even if the condition number is unknown. When applied to the regularized empirical risk minimization problem, we prove the iteration complexity of $Oleft(nlog n+sqrt{frac{n}{epsilon}} ight)$ in both primal space and dual space, where $n$ is the number of samples. Our result takes out the $left(log frac{1}{epsilon} ight)$ factor compared with the methods based on smoothing/regularization or Catalyst reduction. As far as we know, this is the first time that the optimal $Oleft(sqrt{frac{n}{epsilon}} ight)$ iteration complexity in the primal space is established for the dual coordinate ascent based stochastic algorithms. We also establish the accelerated linear complexity for some problems with nonsmooth loss, e.g., the least absolute deviation and SVM.




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Optimal Bipartite Network Clustering

We study bipartite community detection in networks, or more generally the network biclustering problem. We present a fast two-stage procedure based on spectral initialization followed by the application of a pseudo-likelihood classifier twice. Under mild regularity conditions, we establish the weak consistency of the procedure (i.e., the convergence of the misclassification rate to zero) under a general bipartite stochastic block model. We show that the procedure is optimal in the sense that it achieves the optimal convergence rate that is achievable by a biclustering oracle, adaptively over the whole class, up to constants. This is further formalized by deriving a minimax lower bound over a class of biclustering problems. The optimal rate we obtain sharpens some of the existing results and generalizes others to a wide regime of average degree growth, from sparse networks with average degrees growing arbitrarily slowly to fairly dense networks with average degrees of order $sqrt{n}$. As a special case, we recover the known exact recovery threshold in the $log n$ regime of sparsity. To obtain the consistency result, as part of the provable version of the algorithm, we introduce a sub-block partitioning scheme that is also computationally attractive, allowing for distributed implementation of the algorithm without sacrificing optimality. The provable algorithm is derived from a general class of pseudo-likelihood biclustering algorithms that employ simple EM type updates. We show the effectiveness of this general class by numerical simulations.




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Robust Asynchronous Stochastic Gradient-Push: Asymptotically Optimal and Network-Independent Performance for Strongly Convex Functions

We consider the standard model of distributed optimization of a sum of functions $F(mathbf z) = sum_{i=1}^n f_i(mathbf z)$, where node $i$ in a network holds the function $f_i(mathbf z)$. We allow for a harsh network model characterized by asynchronous updates, message delays, unpredictable message losses, and directed communication among nodes. In this setting, we analyze a modification of the Gradient-Push method for distributed optimization, assuming that (i) node $i$ is capable of generating gradients of its function $f_i(mathbf z)$ corrupted by zero-mean bounded-support additive noise at each step, (ii) $F(mathbf z)$ is strongly convex, and (iii) each $f_i(mathbf z)$ has Lipschitz gradients. We show that our proposed method asymptotically performs as well as the best bounds on centralized gradient descent that takes steps in the direction of the sum of the noisy gradients of all the functions $f_1(mathbf z), ldots, f_n(mathbf z)$ at each step.




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Generalized Optimal Matching Methods for Causal Inference

We develop an encompassing framework for matching, covariate balancing, and doubly-robust methods for causal inference from observational data called generalized optimal matching (GOM). The framework is given by generalizing a new functional-analytical formulation of optimal matching, giving rise to the class of GOM methods, for which we provide a single unified theory to analyze tractability and consistency. Many commonly used existing methods are included in GOM and, using their GOM interpretation, can be extended to optimally and automatically trade off balance for variance and outperform their standard counterparts. As a subclass, GOM gives rise to kernel optimal matching (KOM), which, as supported by new theoretical and empirical results, is notable for combining many of the positive properties of other methods in one. KOM, which is solved as a linearly-constrained convex-quadratic optimization problem, inherits both the interpretability and model-free consistency of matching but can also achieve the $sqrt{n}$-consistency of well-specified regression and the bias reduction and robustness of doubly robust methods. In settings of limited overlap, KOM enables a very transparent method for interval estimation for partial identification and robust coverage. We demonstrate this in examples with both synthetic and real data.