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Dr J. Matthews Duncan's testimonials etc : first series.

[Edinburgh] : [publisher not identified], 1870.




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Egypt and the Nile considered as a winter resort for pulmonary and other invalids / by John Patterson.

London : J. Churchill, 1867.




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Ein Apparat, welcher gestattet, die Gesetze von Filtration und Osmose stromender Flussigkeiten bei homogenen Membranen zu studiren / von H.J. Hamburger.

Amsterdam : J. Muller, 1895.




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Electricity in surgery : Faure's storage battery, also Swan's electric light / by George Buchanan.

Glasgow : J. Maclehose, 1881.




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Entwickelungsgeschichte der Natter (Coluber Natrix) / von Heinrich Rathke.

Koenigsberg : Gebrüder Bornträger, 1839.




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Judge orders state to pay attorney fees in education dispute




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Alaska book ban vote draws attention of hometown rockers




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Cinderella seated by the fire, attended by a white cat. Mezzotint by S.W. Reynolds the younger, 1837, after S.W. Reynolds.

London : Published by Wm. Hayward, 1837.




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King Henri IV after his assassination is taken up to Olympus and received by the gods; France awards the regency to his widow Marie de' Medici. Engraving by G. Duchange, 1708, after J.M. Nattier after Sir P.P. Rubens.

Se vend à Paris (rue St. Jacques au dessus de la rue des Mathurins) : chez le S.r Duchange graveur ordinaire du Roy. Avec privilege du Roy, [1708?]




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A council of the Olympian gods provides for good government of France under the regency of Marie de' Medici. Engraving by B. Picart, 1707, after J.M. Nattier after Sir P.P. Rubens.

A Paris (rue St. Jacques audessus de la rue des Mathurins) : chez G. Duchange graveur du Roy. Avec privilege du Roy, [1708?]




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Oedipus at Colonus: the blind Oedipus, attended by Antigone, is visited by Ismene and by Polynices. Engraving by A.A. Morel after A. Giroust.




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Saint Matthew. Engraving by N. Dorigny, 1707, after D. Zampieri, il Domenichino.

[Rome] : [Nicolaus Dorigny?], Sup. perm. 1707.




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Fortitude with her attributes. Engraving by J. Frey, 1725, after D. Zampieri, il Domenichino.

[Rome], [1725]




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Justice with her attributes. Engraving by J. Frey, 1725, after D. Zampieri, il Domenichino.

[Rome], [1725]




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God the father blessing, attended by five children and by cherubim. Engraving.




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The winged head of a demon (?). Drawing attributed to J. Vanderbank.




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People in Westphalia climbing up a hill on Sunday morning to attend a church service. Engraving by F. Dinger, 1899, after Hugo Becker.




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An episode in The merry wives of Windsor: Sir John Falstaff is invited to a tryst in Windsor Forest at night, dressed in bizarre clothing: he is attacked by children dressed as fairies and by the merry wives. Stipple engraving by I. Taylor, 1795, after R.

[London], [1795]




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The flight of Francesco Novello di Carrara, Lord of Padua, with his wife Taddea D'Este, from Padua under attack by Milan. Engraving by F. Bacon, 1839, after C.L. Eastlake.

London (No. 18 & 19 Southampton Place, Euston Square, New Road) : Published ... by the proprietors [E. & W. Finden], May 1, 1839.




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The flight of Francesco Novello di Carrara, Lord of Padua, with his wife Taddea D'Este, from Padua under attack by Milan. Engraving by F. Bacon after C.L. Eastlake.

[London?] : Cassell & Company Limited, [between 1800 and 1899]




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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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Shattered.

2005.




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King Robert the Bruce saves the life of a mother and her new born infant on a battlefield in Ireland. Engraving by J. Burnet, 1842, after W. Allan, 1840.

(Edin.r [Edinburgh] : Printed by A. Mc.Glashon), [1842]




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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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To Show That Elections Matter, This Teacher Is Running for Office

In a civics lesson come to life, this Missouri high school government teacher is running for state legislature.




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Reproductive health matters.

London : Reproductive Health Matters, 1993-2018.




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Needle sharing among intravenous drug abusers: national and international perspectives / Editors, Robert J. Battjes, Roy W. Pickens.

Rockville, Maryland : National Institute on Drug Abuse, 1988.




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

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




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प्रजनन स्वास्थ्य के मामले : Reproductive health matters.

London : Reproductive Health Matters, 1993-2018.




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生殖健康问题 : Reproductive health matters.

London : Reproductive Health Matters, 1993-2018.




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проблемы репродуктивного здоровья : reproductive health matters.

London : Reproductive Health Matters, 1993-2018.




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Temas de salud reproductiva : Reproductive health matters.

London : Reproductive Health Matters, 1993-2018.




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Questions de santé reproductive : Reproductive health matters.

London : Reproductive Health Matters, 1993-2018.




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Questões de saúde reprodutiva : Reproductive health matters.

London : Reproductive Health Matters, 1993-2018.




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Greedy Attack and Gumbel Attack: Generating Adversarial Examples for Discrete Data

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.




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Kymatio: Scattering Transforms in Python

The wavelet scattering transform is an invariant and stable signal representation suitable for many signal processing and machine learning applications. We present the Kymatio software package, an easy-to-use, high-performance Python implementation of the scattering transform in 1D, 2D, and 3D that is compatible with modern deep learning frameworks, including PyTorch and TensorFlow/Keras. The transforms are implemented on both CPUs and GPUs, the latter offering a significant speedup over the former. The package also has a small memory footprint. Source code, documentation, and examples are available under a BSD license at https://www.kymat.io.




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$M$-functionals of multivariate scatter

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.




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Unsupervised Pre-trained Models from Healthy ADLs Improve Parkinson's Disease Classification of Gait Patterns. (arXiv:2005.02589v2 [cs.LG] UPDATED)

Application and use of deep learning algorithms for different healthcare applications is gaining interest at a steady pace. However, use of such algorithms can prove to be challenging as they require large amounts of training data that capture different possible variations. This makes it difficult to use them in a clinical setting since in most health applications researchers often have to work with limited data. Less data can cause the deep learning model to over-fit. In this paper, we ask how can we use data from a different environment, different use-case, with widely differing data distributions. We exemplify this use case by using single-sensor accelerometer data from healthy subjects performing activities of daily living - ADLs (source dataset), to extract features relevant to multi-sensor accelerometer gait data (target dataset) for Parkinson's disease classification. We train the pre-trained model using the source dataset and use it as a feature extractor. We show that the features extracted for the target dataset can be used to train an effective classification model. Our pre-trained source model consists of a convolutional autoencoder, and the target classification model is a simple multi-layer perceptron model. We explore two different pre-trained source models, trained using different activity groups, and analyze the influence the choice of pre-trained model has over the task of Parkinson's disease classification.




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Restricting the Flow: Information Bottlenecks for Attribution. (arXiv:2001.00396v3 [stat.ML] UPDATED)

Attribution methods provide insights into the decision-making of machine learning models like artificial neural networks. For a given input sample, they assign a relevance score to each individual input variable, such as the pixels of an image. In this work we adapt the information bottleneck concept for attribution. By adding noise to intermediate feature maps we restrict the flow of information and can quantify (in bits) how much information image regions provide. We compare our method against ten baselines using three different metrics on VGG-16 and ResNet-50, and find that our methods outperform all baselines in five out of six settings. The method's information-theoretic foundation provides an absolute frame of reference for attribution values (bits) and a guarantee that regions scored close to zero are not necessary for the network's decision. For reviews: https://openreview.net/forum?id=S1xWh1rYwB For code: https://github.com/BioroboticsLab/IBA




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MAZE: Data-Free Model Stealing Attack Using Zeroth-Order Gradient Estimation. (arXiv:2005.03161v1 [stat.ML])

Model Stealing (MS) attacks allow an adversary with black-box access to a Machine Learning model to replicate its functionality, compromising the confidentiality of the model. Such attacks train a clone model by using the predictions of the target model for different inputs. The effectiveness of such attacks relies heavily on the availability of data necessary to query the target model. Existing attacks either assume partial access to the dataset of the target model or availability of an alternate dataset with semantic similarities.

This paper proposes MAZE -- a data-free model stealing attack using zeroth-order gradient estimation. In contrast to prior works, MAZE does not require any data and instead creates synthetic data using a generative model. Inspired by recent works in data-free Knowledge Distillation (KD), we train the generative model using a disagreement objective to produce inputs that maximize disagreement between the clone and the target model. However, unlike the white-box setting of KD, where the gradient information is available, training a generator for model stealing requires performing black-box optimization, as it involves accessing the target model under attack. MAZE relies on zeroth-order gradient estimation to perform this optimization and enables a highly accurate MS attack.

Our evaluation with four datasets shows that MAZE provides a normalized clone accuracy in the range of 0.91x to 0.99x, and outperforms even the recent attacks that rely on partial data (JBDA, clone accuracy 0.13x to 0.69x) and surrogate data (KnockoffNets, clone accuracy 0.52x to 0.97x). We also study an extension of MAZE in the partial-data setting and develop MAZE-PD, which generates synthetic data closer to the target distribution. MAZE-PD further improves the clone accuracy (0.97x to 1.0x) and reduces the query required for the attack by 2x-24x.





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A hierarchical dependent Dirichlet process prior for modelling bird migration patterns in the UK

Alex Diana, Eleni Matechou, Jim Griffin, Alison Johnston.

Source: The Annals of Applied Statistics, Volume 14, Number 1, 473--493.

Abstract:
Environmental changes in recent years have been linked to phenological shifts which in turn are linked to the survival of species. The work in this paper is motivated by capture-recapture data on blackcaps collected by the British Trust for Ornithology as part of the Constant Effort Sites monitoring scheme. Blackcaps overwinter abroad and migrate to the UK annually for breeding purposes. We propose a novel Bayesian nonparametric approach for expressing the bivariate density of individual arrival and departure times at different sites across a number of years as a mixture model. The new model combines the ideas of the hierarchical and the dependent Dirichlet process, allowing the estimation of site-specific weights and year-specific mixture locations, which are modelled as functions of environmental covariates using a multivariate extension of the Gaussian process. The proposed modelling framework is extremely general and can be used in any context where multivariate density estimation is performed jointly across different groups and in the presence of a continuous covariate.




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Estimating and forecasting the smoking-attributable mortality fraction for both genders jointly in over 60 countries

Yicheng Li, Adrian E. Raftery.

Source: The Annals of Applied Statistics, Volume 14, Number 1, 381--408.

Abstract:
Smoking is one of the leading preventable threats to human health and a major risk factor for lung cancer, upper aerodigestive cancer and chronic obstructive pulmonary disease. Estimating and forecasting the smoking attributable fraction (SAF) of mortality can yield insights into smoking epidemics and also provide a basis for more accurate mortality and life expectancy projection. Peto et al. ( Lancet 339 (1992) 1268–1278) proposed a method to estimate the SAF using the lung cancer mortality rate as an indicator of exposure to smoking in the population of interest. Here, we use the same method to estimate the all-age SAF (ASAF) for both genders for over 60 countries. We document a strong and cross-nationally consistent pattern of the evolution of the SAF over time. We use this as the basis for a new Bayesian hierarchical model to project future male and female ASAF from over 60 countries simultaneously. This gives forecasts as well as predictive distributions that can be used to find uncertainty intervals for any quantity of interest. We assess the model using out-of-sample predictive validation and find that it provides good forecasts and well-calibrated forecast intervals, comparing favorably with other methods.




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Incorporating conditional dependence in latent class models for probabilistic record linkage: Does it matter?

Huiping Xu, Xiaochun Li, Changyu Shen, Siu L. Hui, Shaun Grannis.

Source: The Annals of Applied Statistics, Volume 13, Number 3, 1753--1790.

Abstract:
The conditional independence assumption of the Felligi and Sunter (FS) model in probabilistic record linkage is often violated when matching real-world data. Ignoring conditional dependence has been shown to seriously bias parameter estimates. However, in record linkage, the ultimate goal is to inform the match status of record pairs and therefore, record linkage algorithms should be evaluated in terms of matching accuracy. In the literature, more flexible models have been proposed to relax the conditional independence assumption, but few studies have assessed whether such accommodations improve matching accuracy. In this paper, we show that incorporating the conditional dependence appropriately yields comparable or improved matching accuracy than the FS model using three real-world data linkage examples. Through a simulation study, we further investigate when conditional dependence models provide improved matching accuracy. Our study shows that the FS model is generally robust to the conditional independence assumption and provides comparable matching accuracy as the more complex conditional dependence models. However, when the match prevalence approaches 0% or 100% and conditional dependence exists in the dominating class, it is necessary to address conditional dependence as the FS model produces suboptimal matching accuracy. The need to address conditional dependence becomes less important when highly discriminating fields are used. Our simulation study also shows that conditional dependence models with misspecified dependence structure could produce less accurate record matching than the FS model and therefore we caution against the blind use of conditional dependence models.




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Influence of the seed in affine preferential attachment trees

David Corlin Marchand, Ioan Manolescu.

Source: Bernoulli, Volume 26, Number 3, 1665--1705.

Abstract:
We study randomly growing trees governed by the affine preferential attachment rule. Starting with a seed tree $S$, vertices are attached one by one, each linked by an edge to a random vertex of the current tree, chosen with a probability proportional to an affine function of its degree. This yields a one-parameter family of preferential attachment trees $(T_{n}^{S})_{ngeq |S|}$, of which the linear model is a particular case. Depending on the choice of the parameter, the power-laws governing the degrees in $T_{n}^{S}$ have different exponents. We study the problem of the asymptotic influence of the seed $S$ on the law of $T_{n}^{S}$. We show that, for any two distinct seeds $S$ and $S'$, the laws of $T_{n}^{S}$ and $T_{n}^{S'}$ remain at uniformly positive total-variation distance as $n$ increases. This is a continuation of Curien et al. ( J. Éc. Polytech. Math. 2 (2015) 1–34), which in turn was inspired by a conjecture of Bubeck et al. ( IEEE Trans. Netw. Sci. Eng. 2 (2015) 30–39). The technique developed here is more robust than previous ones and is likely to help in the study of more general attachment mechanisms.




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Distances and large deviations in the spatial preferential attachment model

Christian Hirsch, Christian Mönch.

Source: Bernoulli, Volume 26, Number 2, 927--947.

Abstract:
This paper considers two asymptotic properties of a spatial preferential-attachment model introduced by E. Jacob and P. Mörters (In Algorithms and Models for the Web Graph (2013) 14–25 Springer). First, in a regime of strong linear reinforcement, we show that typical distances are at most of doubly-logarithmic order. Second, we derive a large deviation principle for the empirical neighbourhood structure and express the rate function as solution to an entropy minimisation problem in the space of stationary marked point processes.




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Bayesian Estimation Under Informative Sampling with Unattenuated Dependence

Matthew R. Williams, Terrance D. Savitsky.

Source: Bayesian Analysis, Volume 15, Number 1, 57--77.

Abstract:
An informative sampling design leads to unit inclusion probabilities that are correlated with the response variable of interest. However, multistage sampling designs may also induce higher order dependencies, which are ignored in the literature when establishing consistency of estimators for survey data under a condition requiring asymptotic independence among the unit inclusion probabilities. This paper constructs new theoretical conditions that guarantee that the pseudo-posterior, which uses sampling weights based on first order inclusion probabilities to exponentiate the likelihood, is consistent not only for survey designs which have asymptotic factorization, but also for survey designs that induce residual or unattenuated dependence among sampled units. The use of the survey-weighted pseudo-posterior, together with our relaxed requirements for the survey design, establish a wide variety of analysis models that can be applied to a broad class of survey data sets. Using the complex sampling design of the National Survey on Drug Use and Health, we demonstrate our new theoretical result on multistage designs characterized by a cluster sampling step that expresses within-cluster dependence. We explore the impact of multistage designs and order based sampling.




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White Matter Microstructure in Transsexuals and Controls Investigated by Diffusion Tensor Imaging

Georg S. Kranz
Nov 12, 2014; 34:15466-15475
Systems/Circuits




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Grey Matter Volume Differences Associated with Extremely Low Levels of Cannabis Use in Adolescence

Catherine Orr
Mar 6, 2019; 39:1817-1827
BehavioralSystemsCognitive




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Effects of Attention on Orientation-Tuning Functions of Single Neurons in Macaque Cortical Area V4

Carrie J. McAdams
Jan 1, 1999; 19:431-441
Articles