las Erasmus Darwin / by Ernst Krause ; translated from the German by W.S. Dallas ; with a preliminary notice by Charles Darwin. By feedproxy.google.com Published On :: London : J. Murray, 1879. Full Article
las Erysipelas and child-bed fever / Thomas C. Minor. By feedproxy.google.com Published On :: Cincinnati : R. Clarke, 1874. Full Article
las Iowa governor: K-12 schools won't resume classes this year By feedproxy.google.com Published On :: Mon, 20 Apr 2020 00:00:00 +0000 Full Article Iowa
las Energy-Dependent States Debate Last-Minute Budget Deals By feedproxy.google.com Published On :: Mon, 06 Jun 2016 00:00:00 +0000 Several states that are heavily dependent on oil revenue had to face the choice of raising taxes, closing tax loop holes or making major cuts to state agencies in order to fill major budget deficits. Full Article West_Virginia
las Betsy DeVos Approves ESSA Plans for Alaska and Iowa By feedproxy.google.com Published On :: Wed, 16 May 2018 00:00:00 +0000 That brings the number of states with approved plans to 44, plus the District of Columbia and Puerto Rico. Still awaiting the OK: California, Florida, Nebraska, North Carolina, Oklahoma, and Utah Full Article Alaska
las Gifted Students 'Make the Most' of School in Alaska By feedproxy.google.com Published On :: Tue, 12 Jun 2018 00:00:00 +0000 In remote regions of rural Alaska, both schools and the students themselves have to work harder to put together an education that meets students' needs. Full Article Alaska
las Earthquake Scuttles Classes in Alaska, As California Students Return to School By feedproxy.google.com Published On :: Tue, 11 Dec 2018 00:00:00 +0000 While thousands of students in wildfire-ravaged Northern California resumed classes last week, thousands of others in Alaska stayed home after a 7.0 magnitude earthquake struck Nov. 30. Full Article Alaska
las Alaska Reporter Will Study Rural Education as 2nd Chronister Fellowship Recipient By feedproxy.google.com Published On :: Thu, 14 Feb 2019 00:00:00 +0000 Victoria Petersen, of the Peninsula Clarion on the Kenai Peninsula, will report on the challenges of rural education, especially in a state as vast as Alaska. Full Article Alaska
las Alaska Governor, a Career Educator, Proposes a Slash and Burn K-12 Budget By feedproxy.google.com Published On :: Fri, 01 Mar 2019 00:00:00 +0000 Gov. Mike Dunleavy, who spent his career as a teacher, principal and superintendent of a rural Alaska district wants to now cut more than a third of the state's K-12 spending. Full Article Alaska
las Alaska Gov., a Career Educator, Proposes Slash and Burn K-12 Budget By feedproxy.google.com Published On :: Mon, 11 Mar 2019 00:00:00 +0000 Alaska Gov. Mike Dunleavy, a Republican who was elected partly because of his experience as a public school educator, proposed a budget this year that would slash more than a quarter of the state's $1.6 billion education budget. Full Article Alaska
las Educational Opportunities and Performance in Alaska By feedproxy.google.com Published On :: Wed, 16 Jan 2019 00:00:00 +0000 This Quality Counts 2019 Highlights Report captures all the data you need to assess your state's performance on key educational outcomes. Full Article Alaska
las On the Snowy Tundra, Alaska Students Bridge Differences and Eat Moose Snout By feedproxy.google.com Published On :: Fri, 19 Jul 2019 00:00:00 +0000 An Alaskan high school exchange program works to promote understanding between the state's urban centers and its remote Native Villages and communities. Full Article Alaska
las 'Just Like Them': Urban and Rural Students Make Friends on the Alaska Frontier By feedproxy.google.com Published On :: Fri, 19 Jul 2019 00:00:00 +0000 A group of high school students from Anchorage spent spring break at a remote Native Village as part of an unusual cultural exchange program in Alaska. See what they learned. Full Article Alaska
las Alaska: A Brief History of the State and Its Schools By feedproxy.google.com Published On :: Fri, 19 Jul 2019 00:00:00 +0000 Alaskan schooling developed on many fronts. An illustrated timeline adds historical context for the growth of the state's education system, from the territory’s earliest Native inhabitants to today. Full Article Alaska
las A Perennial Challenge in Rural Alaska: Getting and Keeping Teachers By feedproxy.google.com Published On :: Tue, 10 Sep 2019 00:00:00 +0000 Recruiters already are offering bonuses, free housing, and airfare to entice teachers to their remote districts—and the competition is about to get worse. Full Article Alaska
las Letters From Alaska By feedproxy.google.com Published On :: Fri, 19 Jul 2019 00:00:00 +0000 When it comes to education, the 49th state faces its own challenges, some of which are unique to Alaska and some that it shares with other rural states. This series explores how cultural and geographic barriers, teacher shortages, historical developments, and more have shaped schooling in Alaska. Full Article Alaska
las An Alaskan Village's Long Wait for a New School By feedproxy.google.com Published On :: Tue, 11 Feb 2020 00:00:00 +0000 Rural schools everywhere struggle to maintain adequate buildings, but the quest for a new school has been especially long and fraught for this remote Old Believer village. Full Article Alaska
las Educational Opportunities and Performance in Alaska By feedproxy.google.com Published On :: Tue, 21 Jan 2020 00:00:00 +0000 This Quality Counts 2020 Highlights Report captures all the data you need to assess your state's performance on key educational outcomes. Full Article Alaska
las Alaska extends school closures, restrictions over virus By feedproxy.google.com Published On :: Fri, 10 Apr 2020 00:00:00 +0000 Full Article Alaska
las Alaska book ban vote draws attention of hometown rockers By feedproxy.google.com Published On :: Fri, 01 May 2020 00:00:00 +0000 Full Article Alaska
las The last judgment. Etching by D. Cunego, 1780, after Michelangelo. By feedproxy.google.com Published On :: Romae: apud Dominicum Cunego. Full Article
las A skull placed on some old books, a Venetian drinking glass, playing cards, a cigarette stub, and six coins. Watercolour. By feedproxy.google.com Published On :: Full Article
las Capitals' Greatest Hits: How to watch Troy Brouwer's game-winning goal in 2015 Winter Classic By sports.yahoo.com Published On :: Fri, 08 May 2020 21:05:30 GMT Troy Brouwer scored the game-winning goal as the Capitals beat the Blackhawks at Nationals Park on Jan. 1, 2015. Relive the excitement with Monday night's replay. Full Article article News
las Anything you can do I can do / by Stacey A. Bedwell ; illustrated by Rosie Glasse. By search.wellcomelibrary.org Published On :: [United Kingdom] : Dame Vera Lynn Children's Charity, 2018. Full Article
las Zine - Greenish - Zero waste, plastic free By search.wellcomelibrary.org Published On :: Full Article
las Cocaine use in America : epidemiologic and clinical perspectives / editors, Nicholas J. Kozel, Edgar H. Adams. By search.wellcomelibrary.org Published On :: Rockville, Maryland : National Institute on Drug Abuse, 1985. Full Article
las The role of neuroplasticity in the response to drugs / editors, David P. Friedman, Doris H. Clouet. By search.wellcomelibrary.org Published On :: Rockville, Maryland : National Institute on Drug Abuse, 1987. Full Article
las 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
las An evaluation of the California civil addict program / by William H. McGlothlin, M. Douglas Anglin, Bruce D. Wilson. By search.wellcomelibrary.org Published On :: Rockville, Maryland : National Institute on Drug Abuse, 1977. Full Article
las Drug-related social work in street agencies : a study by the Institute for the Study of Drug Dependence / Nicholas Dorn and Nigel South. By search.wellcomelibrary.org Published On :: Norwich : University of East Anglia : Social Work Today, 1984. Full Article
las Correspondence relating to Lewis Harold Bell Lasseter, 1931 By feedproxy.google.com Published On :: 9/10/2015 12:00:00 AM Full Article
las Kobe, Duncan, Garnett headline Basketball Hall of Fame class By sports.yahoo.com Published On :: Sat, 04 Apr 2020 16:12:32 GMT Kobe Bryant was already immortal. Bryant and fellow NBA greats Tim Duncan and Kevin Garnett headlined a nine-person group announced Saturday as this year’s class of enshrinees into the Naismith Memorial Basketball Hall of Fame. Two-time NBA champion coach Rudy Tomjanovich finally got his call, as did longtime Baylor women’s coach Kim Mulkey, 1,000-game winner Barbara Stevens of Bentley and three-time Final Four coach Eddie Sutton. Full Article article Sports
las The Class of 2020: A look at basketball's new Hall of Famers By sports.yahoo.com Published On :: Sat, 04 Apr 2020 16:20:38 GMT A look at the newest members of the Naismith Memorial Basketball Hall of Fame, announced on Saturday: Full Article article Sports
las Inside Sabrina Ionescu and Ruthy Hebard's lasting bond on quick look of 'Our Stories' By sports.yahoo.com Published On :: Fri, 10 Apr 2020 20:26:20 GMT Learn how Oregon stars Sabrina Ionescu and Ruthy Hebard developed a lasting bond as college freshmen and carried that through storied four-year careers for the Ducks. Watch "Our Stories Unfinished Business: Sabrina Ionescu and Ruthy Hebard" debuting Wednesday, April 15 at 7 p.m. PT/ 8 p.m. MT on Pac-12 Network. Full Article video News
las On the distribution, model selection properties and uniqueness of the Lasso estimator in low and high dimensions By projecteuclid.org Published On :: Mon, 17 Feb 2020 22:06 EST Karl Ewald, Ulrike Schneider. Source: Electronic Journal of Statistics, Volume 14, Number 1, 944--969.Abstract: We derive expressions for the finite-sample distribution of the Lasso estimator in the context of a linear regression model in low as well as in high dimensions by exploiting the structure of the optimization problem defining the estimator. In low dimensions, we assume full rank of the regressor matrix and present expressions for the cumulative distribution function as well as the densities of the absolutely continuous parts of the estimator. Our results are presented for the case of normally distributed errors, but do not hinge on this assumption and can easily be generalized. Additionally, we establish an explicit formula for the correspondence between the Lasso and the least-squares estimator. We derive analogous results for the distribution in less explicit form in high dimensions where we make no assumptions on the regressor matrix at all. In this setting, we also investigate the model selection properties of the Lasso and show that possibly only a subset of models might be selected by the estimator, completely independently of the observed response vector. Finally, we present a condition for uniqueness of the estimator that is necessary as well as sufficient. Full Article
las Neyman-Pearson classification: parametrics and sample size requirement By Published On :: 2020 The Neyman-Pearson (NP) paradigm in binary classification seeks classifiers that achieve a minimal type II error while enforcing the prioritized type I error controlled under some user-specified level $alpha$. This paradigm serves naturally in applications such as severe disease diagnosis and spam detection, where people have clear priorities among the two error types. Recently, Tong, Feng, and Li (2018) proposed a nonparametric umbrella algorithm that adapts all scoring-type classification methods (e.g., logistic regression, support vector machines, random forest) to respect the given type I error (i.e., conditional probability of classifying a class $0$ observation as class $1$ under the 0-1 coding) upper bound $alpha$ with high probability, without specific distributional assumptions on the features and the responses. Universal the umbrella algorithm is, it demands an explicit minimum sample size requirement on class $0$, which is often the more scarce class, such as in rare disease diagnosis applications. In this work, we employ the parametric linear discriminant analysis (LDA) model and propose a new parametric thresholding algorithm, which does not need the minimum sample size requirements on class $0$ observations and thus is suitable for small sample applications such as rare disease diagnosis. Leveraging both the existing nonparametric and the newly proposed parametric thresholding rules, we propose four LDA-based NP classifiers, for both low- and high-dimensional settings. On the theoretical front, we prove NP oracle inequalities for one proposed classifier, where the rate for excess type II error benefits from the explicit parametric model assumption. Furthermore, as NP classifiers involve a sample splitting step of class $0$ observations, we construct a new adaptive sample splitting scheme that can be applied universally to NP classifiers, and this adaptive strategy reduces the type II error of these classifiers. The proposed NP classifiers are implemented in the R package nproc. Full Article
las Perturbation Bounds for Procrustes, Classical Scaling, and Trilateration, with Applications to Manifold Learning By Published On :: 2020 One of the common tasks in unsupervised learning is dimensionality reduction, where the goal is to find meaningful low-dimensional structures hidden in high-dimensional data. Sometimes referred to as manifold learning, this problem is closely related to the problem of localization, which aims at embedding a weighted graph into a low-dimensional Euclidean space. Several methods have been proposed for localization, and also manifold learning. Nonetheless, the robustness property of most of them is little understood. In this paper, we obtain perturbation bounds for classical scaling and trilateration, which are then applied to derive performance bounds for Isomap, Landmark Isomap, and Maximum Variance Unfolding. A new perturbation bound for procrustes analysis plays a key role. Full Article
las 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
las A New Class of Time Dependent Latent Factor Models with Applications By Published On :: 2020 In many applications, observed data are influenced by some combination of latent causes. For example, suppose sensors are placed inside a building to record responses such as temperature, humidity, power consumption and noise levels. These random, observed responses are typically affected by many unobserved, latent factors (or features) within the building such as the number of individuals, the turning on and off of electrical devices, power surges, etc. These latent factors are usually present for a contiguous period of time before disappearing; further, multiple factors could be present at a time. This paper develops new probabilistic methodology and inference methods for random object generation influenced by latent features exhibiting temporal persistence. Every datum is associated with subsets of a potentially infinite number of hidden, persistent features that account for temporal dynamics in an observation. The ensuing class of dynamic models constructed by adapting the Indian Buffet Process — a probability measure on the space of random, unbounded binary matrices — finds use in a variety of applications arising in operations, signal processing, biomedicine, marketing, image analysis, etc. Illustrations using synthetic and real data are provided. Full Article
las Noise Accumulation in High Dimensional Classification and Total Signal Index By Published On :: 2020 Great attention has been paid to Big Data in recent years. Such data hold promise for scientific discoveries but also pose challenges to analyses. One potential challenge is noise accumulation. In this paper, we explore noise accumulation in high dimensional two-group classification. First, we revisit a previous assessment of noise accumulation with principal component analyses, which yields a different threshold for discriminative ability than originally identified. Then we extend our scope to its impact on classifiers developed with three common machine learning approaches---random forest, support vector machine, and boosted classification trees. We simulate four scenarios with differing amounts of signal strength to evaluate each method. After determining noise accumulation may affect the performance of these classifiers, we assess factors that impact it. We conduct simulations by varying sample size, signal strength, signal strength proportional to the number predictors, and signal magnitude with random forest classifiers. These simulations suggest that noise accumulation affects the discriminative ability of high-dimensional classifiers developed using common machine learning methods, which can be modified by sample size, signal strength, and signal magnitude. We developed the measure total signal index (TSI) to track the trends of total signal and noise accumulation. Full Article
las A Convex Parametrization of a New Class of Universal Kernel Functions By Published On :: 2020 The accuracy and complexity of kernel learning algorithms is determined by the set of kernels over which it is able to optimize. An ideal set of kernels should: admit a linear parameterization (tractability); be dense in the set of all kernels (accuracy); and every member should be universal so that the hypothesis space is infinite-dimensional (scalability). Currently, there is no class of kernel that meets all three criteria - e.g. Gaussians are not tractable or accurate; polynomials are not scalable. We propose a new class that meet all three criteria - the Tessellated Kernel (TK) class. Specifically, the TK class: admits a linear parameterization using positive matrices; is dense in all kernels; and every element in the class is universal. This implies that the use of TK kernels for learning the kernel can obviate the need for selecting candidate kernels in algorithms such as SimpleMKL and parameters such as the bandwidth. Numerical testing on soft margin Support Vector Machine (SVM) problems show that algorithms using TK kernels outperform other kernel learning algorithms and neural networks. Furthermore, our results show that when the ratio of the number of training data to features is high, the improvement of TK over MKL increases significantly. Full Article
las pyts: A Python Package for Time Series Classification By Published On :: 2020 pyts is an open-source Python package for time series classification. This versatile toolbox provides implementations of many algorithms published in the literature, preprocessing functionalities, and data set loading utilities. pyts relies on the standard scientific Python packages numpy, scipy, scikit-learn, joblib, and numba, and is distributed under the BSD-3-Clause license. Documentation contains installation instructions, a detailed user guide, a full API description, and concrete self-contained examples. Full Article
las Community-Based Group Graphical Lasso By Published On :: 2020 A new strategy for probabilistic graphical modeling is developed that draws parallels to community detection analysis. The method jointly estimates an undirected graph and homogeneous communities of nodes. The structure of the communities is taken into account when estimating the graph and at the same time, the structure of the graph is accounted for when estimating communities of nodes. The procedure uses a joint group graphical lasso approach with community detection-based grouping, such that some groups of edges co-occur in the estimated graph. The grouping structure is unknown and is estimated based on community detection algorithms. Theoretical derivations regarding graph convergence and sparsistency, as well as accuracy of community recovery are included, while the method's empirical performance is illustrated in an fMRI context, as well as with simulated examples. Full Article
las (1 + epsilon)-class Classification: an Anomaly Detection Method for Highly Imbalanced or Incomplete Data Sets By Published On :: 2020 Anomaly detection is not an easy problem since distribution of anomalous samples is unknown a priori. We explore a novel method that gives a trade-off possibility between one-class and two-class approaches, and leads to a better performance on anomaly detection problems with small or non-representative anomalous samples. The method is evaluated using several data sets and compared to a set of conventional one-class and two-class approaches. Full Article
las Unsupervised Pre-trained Models from Healthy ADLs Improve Parkinson's Disease Classification of Gait Patterns. (arXiv:2005.02589v2 [cs.LG] UPDATED) By arxiv.org Published On :: 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. Full Article
las Mnemonics Training: Multi-Class Incremental Learning without Forgetting. (arXiv:2002.10211v3 [cs.CV] UPDATED) By arxiv.org Published On :: Multi-Class Incremental Learning (MCIL) aims to learn new concepts by incrementally updating a model trained on previous concepts. However, there is an inherent trade-off to effectively learning new concepts without catastrophic forgetting of previous ones. To alleviate this issue, it has been proposed to keep around a few examples of the previous concepts but the effectiveness of this approach heavily depends on the representativeness of these examples. This paper proposes a novel and automatic framework we call mnemonics, where we parameterize exemplars and make them optimizable in an end-to-end manner. We train the framework through bilevel optimizations, i.e., model-level and exemplar-level. We conduct extensive experiments on three MCIL benchmarks, CIFAR-100, ImageNet-Subset and ImageNet, and show that using mnemonics exemplars can surpass the state-of-the-art by a large margin. Interestingly and quite intriguingly, the mnemonics exemplars tend to be on the boundaries between different classes. Full Article
las On the impact of selected modern deep-learning techniques to the performance and celerity of classification models in an experimental high-energy physics use case. (arXiv:2002.01427v3 [physics.data-an] UPDATED) By arxiv.org Published On :: Beginning from a basic neural-network architecture, we test the potential benefits offered by a range of advanced techniques for machine learning, in particular deep learning, in the context of a typical classification problem encountered in the domain of high-energy physics, using a well-studied dataset: the 2014 Higgs ML Kaggle dataset. The advantages are evaluated in terms of both performance metrics and the time required to train and apply the resulting models. Techniques examined include domain-specific data-augmentation, learning rate and momentum scheduling, (advanced) ensembling in both model-space and weight-space, and alternative architectures and connection methods. Following the investigation, we arrive at a model which achieves equal performance to the winning solution of the original Kaggle challenge, whilst being significantly quicker to train and apply, and being suitable for use with both GPU and CPU hardware setups. These reductions in timing and hardware requirements potentially allow the use of more powerful algorithms in HEP analyses, where models must be retrained frequently, sometimes at short notice, by small groups of researchers with limited hardware resources. Additionally, a new wrapper library for PyTorch called LUMINis presented, which incorporates all of the techniques studied. Full Article
las Margin-Based Generalization Lower Bounds for Boosted Classifiers. (arXiv:1909.12518v4 [cs.LG] UPDATED) By arxiv.org Published On :: Boosting is one of the most successful ideas in machine learning. The most well-accepted explanations for the low generalization error of boosting algorithms such as AdaBoost stem from margin theory. The study of margins in the context of boosting algorithms was initiated by Schapire, Freund, Bartlett and Lee (1998) and has inspired numerous boosting algorithms and generalization bounds. To date, the strongest known generalization (upper bound) is the $k$th margin bound of Gao and Zhou (2013). Despite the numerous generalization upper bounds that have been proved over the last two decades, nothing is known about the tightness of these bounds. In this paper, we give the first margin-based lower bounds on the generalization error of boosted classifiers. Our lower bounds nearly match the $k$th margin bound and thus almost settle the generalization performance of boosted classifiers in terms of margins. Full Article
las Local Cascade Ensemble for Multivariate Data Classification. (arXiv:2005.03645v1 [cs.LG]) By arxiv.org Published On :: We present LCE, a Local Cascade Ensemble for traditional (tabular) multivariate data classification, and its extension LCEM for Multivariate Time Series (MTS) classification. LCE is a new hybrid ensemble method that combines an explicit boosting-bagging approach to handle the usual bias-variance tradeoff faced by machine learning models and an implicit divide-and-conquer approach to individualize classifier errors on different parts of the training data. Our evaluation firstly shows that the hybrid ensemble method LCE outperforms the state-of-the-art classifiers on the UCI datasets and that LCEM outperforms the state-of-the-art MTS classifiers on the UEA datasets. Furthermore, LCEM provides explainability by design and manifests robust performance when faced with challenges arising from continuous data collection (different MTS length, missing data and noise). Full Article