ust Elements of pathology and therapeutics being the outlines of a work, intended to ascertain the nature, causes, and most efficacious modes of prevention and cure, of the greater number of the diseases incidental to the human frame : illustrated by numerous By feedproxy.google.com Published On :: Bath : And sold by Underwood, London, 1825. Full Article
ust Elements of surgical pathology / by Augustus J. Pepper. By feedproxy.google.com Published On :: London : Cassell, 1894. Full Article
ust Engravings of the arteries; illustrating the second volume of the Anatomy of the human body, and serving as an introduction to the Surgery of the arteries / by Charles Bell. By feedproxy.google.com Published On :: London : And T. Cadell, and W. Davies, 1806. Full Article
ust 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 By feedproxy.google.com Published On :: London : printed for J. Dodsley, 1782. Full Article
ust Enteric fever : its prevalence and modifications, aetiology, pathology and treatment as illustrated by Army data at home and abroad / by Francis H. Welch. By feedproxy.google.com Published On :: London : H.K. Lewis, 1883. Full Article
ust An epitome of the reports of the medical officers to the Chinese imperial maritime customs service, from 1871 to 1882 : with chapters on the history of medicine in China; materia medica; epidemics; famine; ethnology; and chronology in relation to medicine By feedproxy.google.com Published On :: London : Bailliere, Tindall and Cox, 1884. Full Article
ust Children Will Listen: Teachers Must Hold Each Other Accountable By feedproxy.google.com Published On :: Fri, 16 Nov 2018 00:00:00 +0000 If we want to work towards true inclusivity, we must show that perpetuating oppressive beliefs, intentional or not, has a consequence on something or someone other than those oppressed. Full Article Idaho
ust This State Just Became the First to Restrict Transgender Student Athletes' Participation By feedproxy.google.com Published On :: Wed, 01 Apr 2020 00:00:00 +0000 Idaho became the first state in the country to prohibit transgender girls from participating in girls' school sports after Gov. Brad Little, a Republican, signed the "Fairness in Women's Sports Act" into law Tuesday. Full Article Idaho
ust E.M. Curr's Australian Comparative Vocabulary By feedproxy.google.com Published On :: Thu, 18 Jul 2019 04:06:57 +0000 At 9.45 metres long, this gargantuan accordion-fold document is the longest known manuscript in the Library*. Curr Full Article
ust Did #RedForEd Just Capture Its First Midterm Victory? By feedproxy.google.com Published On :: Wed, 09 May 2018 00:00:00 +0000 In Tuesday night's Republican primary in West Virginia, Robert Karnes, a West Virginia Republican state senator who lashed out at teachers during their nine-day strike, lost to pro-labor candidate Bill Hamilton. Full Article West_Virginia
ust '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
ust Weaving, ceramic manufactures, clothing and coiffure displayed through personifications as industrial arts applied to peace. Process print after C. Brown after F. Leighton. By feedproxy.google.com Published On :: Full Article
ust Oedipus at Colonus: the blind Oedipus, attended by Antigone, is visited by Ismene and by Polynices. Engraving by A.A. Morel after A. Giroust. By feedproxy.google.com Published On :: Full Article
ust A woman personifying friendship weeps before the bust of Giovanni Volpato. Engraving by P. Fontana, ca. 1807, after A. Canova. By feedproxy.google.com Published On :: [Rome?] : [publisher not identified], [1807?] Full Article
ust Justice with her attributes. Engraving by J. Frey, 1725, after D. Zampieri, il Domenichino. By feedproxy.google.com Published On :: [Rome], [1725] Full Article
ust 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. By feedproxy.google.com Published On :: ([Rome] : Raffaelle Jacomini impresse) Full Article
ust Austrian soldiers in Italy carousing in an inn with a monk. Photograph by J. Albert after H.J. Stanley, 1860. By feedproxy.google.com Published On :: München [Munich] : Jos. Albert K.B. Hof-Photograph, [1860] Full Article
ust Report upon the Scott Moncrieff system for the bacteriological purification of sewage / by Alexander C. Houston. By feedproxy.google.com Published On :: [London] : Waterlow Bros. & Layton, Limited, [1893] Full Article
ust The dynastic marriage of William of Orange and Mary Stuart: above, they are brought together before a bust of Hercules; below, their wedding in London on 4 November 1677. Etching by R. de Hooghe, 1678. By feedproxy.google.com Published On :: [The Netherlands] : [Romeyn de Hooghe?], [1678?] Full Article
ust Michigan Teachers Can Leave the Union at Any Time, Not Just in August, Court Rules By feedproxy.google.com Published On :: Mon, 26 Mar 2018 00:00:00 +0000 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. Full Article Michigan
ust Missouri Governor Struggles to Oust State Education Chief By feedproxy.google.com Published On :: Wed, 22 Nov 2017 00:00:00 +0000 Margie Vandeven, the state education chief, is appointed by an appointed board, which is still split on whether to fire Vandeven. Full Article Missouri
ust Missouri Chief's Ouster Sparks Political, Legal Aftershocks By feedproxy.google.com Published On :: Tue, 12 Dec 2017 00:00:00 +0000 The state's Republican governor is in a pitched battle with the state's educators over the process he used to fire Missouri's commissioner of education. Full Article Missouri
ust 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
ust Night Sounds, a mini chapbook about listening to nature in the city, with black line drawings. Tiny illustrated zine about nature. By search.wellcomelibrary.org Published On :: 2017 Full Article
ust Live Sustainably Zine - creative books and zines, life zine, art zine, substainable life book. By search.wellcomelibrary.org Published On :: Full Article
ust Big brother to an angel / written by Holly Hunt ; illustrated by Jenny Duda. By search.wellcomelibrary.org Published On :: Howe Island, Canada : Pier 44 Press, [2017] Full Article
ust Silly Limbig : a tail of bravery / by Naomi Harvey ; illustrations by Daria Danilova. By search.wellcomelibrary.org Published On :: Great Britain : CreateSpace, 2017. Full Article
ust How babies and families are made : (there is more than one way) / by Patricia Schaffer ; illustrated by Suzanne Corbett. By search.wellcomelibrary.org Published On :: Berkeley, California : Tabor Sarah Books, 1988. Full Article
ust Trans reproductive justice: a radical transfeminism mini zine By search.wellcomelibrary.org Published On :: Leith, 2019 Full Article
ust The therapeutic community : study of effectiveness : social and psychological adjustment of 400 dropouts and 100 graduates from the Phoenix House Therapeutic Community / by George De Leon. By search.wellcomelibrary.org Published On :: Rockville, Maryland : National Institute on Drug Abuse, 1984. Full Article
ust A survey of alcohol and drug abuse programs in the railroad industry / [Lyman C. Hitchcock, Mark S. Sanders ; Naval Weapons Support Center]. By search.wellcomelibrary.org Published On :: Washington, D.C. : Department of Transportation, Federal Railroad Administration, 1976. Full Article
ust Archive of the Association Culturelle Franco-Australienne By feedproxy.google.com Published On :: 29/09/2015 12:00:00 AM Full Article
ust Series 02 Part 01: Sir Augustus Charles Gregory letterbook, 1852-1854 By feedproxy.google.com Published On :: 9/10/2015 8:45:45 AM Full Article
ust Sydney in 1848 : illustrated by copper-plate engravings of its principal streets, public buildings, churches, chapels, etc. / from drawings by Joseph Fowles. By feedproxy.google.com Published On :: 28/04/2016 12:00:00 AM Full Article
ust Model-based clustering with envelopes By projecteuclid.org Published On :: Thu, 23 Apr 2020 22:01 EDT Wenjing Wang, Xin Zhang, Qing Mai. Source: Electronic Journal of Statistics, Volume 14, Number 1, 82--109.Abstract: Clustering analysis is an important unsupervised learning technique in multivariate statistics and machine learning. In this paper, we propose a set of new mixture models called CLEMM (in short for Clustering with Envelope Mixture Models) that is based on the widely used Gaussian mixture model assumptions and the nascent research area of envelope methodology. Formulated mostly for regression models, envelope methodology aims for simultaneous dimension reduction and efficient parameter estimation, and includes a very recent formulation of envelope discriminant subspace for classification and discriminant analysis. Motivated by the envelope discriminant subspace pursuit in classification, we consider parsimonious probabilistic mixture models where the cluster analysis can be improved by projecting the data onto a latent lower-dimensional subspace. The proposed CLEMM framework and the associated envelope-EM algorithms thus provide foundations for envelope methods in unsupervised and semi-supervised learning problems. Numerical studies on simulated data and two benchmark data sets show significant improvement of our propose methods over the classical methods such as Gaussian mixture models, K-means and hierarchical clustering algorithms. An R package is available at https://github.com/kusakehan/CLEMM. Full Article
ust A Bayesian approach to disease clustering using restricted Chinese restaurant processes By projecteuclid.org Published On :: Wed, 08 Apr 2020 22:01 EDT 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. Full Article
ust $k$-means clustering of extremes By projecteuclid.org Published On :: Mon, 02 Mar 2020 22:02 EST Anja Janßen, Phyllis Wan. Source: Electronic Journal of Statistics, Volume 14, Number 1, 1211--1233.Abstract: The $k$-means clustering algorithm and its variant, the spherical $k$-means clustering, are among the most important and popular methods in unsupervised learning and pattern detection. In this paper, we explore how the spherical $k$-means algorithm can be applied in the analysis of only the extremal observations from a data set. By making use of multivariate extreme value analysis we show how it can be adopted to find “prototypes” of extremal dependence and derive a consistency result for our suggested estimator. In the special case of max-linear models we show furthermore that our procedure provides an alternative way of statistical inference for this class of models. Finally, we provide data examples which show that our method is able to find relevant patterns in extremal observations and allows us to classify extremal events. Full Article
ust Modal clustering asymptotics with applications to bandwidth selection By projecteuclid.org Published On :: Fri, 07 Feb 2020 22:03 EST Alessandro Casa, José E. Chacón, Giovanna Menardi. Source: Electronic Journal of Statistics, Volume 14, Number 1, 835--856.Abstract: Density-based clustering relies on the idea of linking groups to some specific features of the probability distribution underlying the data. The reference to a true, yet unknown, population structure allows framing the clustering problem in a standard inferential setting, where the concept of ideal population clustering is defined as the partition induced by the true density function. The nonparametric formulation of this approach, known as modal clustering, draws a correspondence between the groups and the domains of attraction of the density modes. Operationally, a nonparametric density estimate is required and a proper selection of the amount of smoothing, governing the shape of the density and hence possibly the modal structure, is crucial to identify the final partition. In this work, we address the issue of density estimation for modal clustering from an asymptotic perspective. A natural and easy to interpret metric to measure the distance between density-based partitions is discussed, its asymptotic approximation explored, and employed to study the problem of bandwidth selection for nonparametric modal clustering. Full Article
ust Profile likelihood biclustering By projecteuclid.org Published On :: Fri, 31 Jan 2020 04:01 EST Cheryl Flynn, Patrick Perry. Source: Electronic Journal of Statistics, Volume 14, Number 1, 731--768.Abstract: Biclustering, the process of simultaneously clustering the rows and columns of a data matrix, is a popular and effective tool for finding structure in a high-dimensional dataset. Many biclustering procedures appear to work well in practice, but most do not have associated consistency guarantees. To address this shortcoming, we propose a new biclustering procedure based on profile likelihood. The procedure applies to a broad range of data modalities, including binary, count, and continuous observations. We prove that the procedure recovers the true row and column classes when the dimensions of the data matrix tend to infinity, even if the functional form of the data distribution is misspecified. The procedure requires computing a combinatorial search, which can be expensive in practice. Rather than performing this search directly, we propose a new heuristic optimization procedure based on the Kernighan-Lin heuristic, which has nice computational properties and performs well in simulations. We demonstrate our procedure with applications to congressional voting records, and microarray analysis. Full Article
ust Path-Based Spectral Clustering: Guarantees, Robustness to Outliers, and Fast Algorithms By Published On :: 2020 We consider the problem of clustering with the longest-leg path distance (LLPD) metric, which is informative for elongated and irregularly shaped clusters. We prove finite-sample guarantees on the performance of clustering with respect to this metric when random samples are drawn from multiple intrinsically low-dimensional clusters in high-dimensional space, in the presence of a large number of high-dimensional outliers. By combining these results with spectral clustering with respect to LLPD, we provide conditions under which the Laplacian eigengap statistic correctly determines the number of clusters for a large class of data sets, and prove guarantees on the labeling accuracy of the proposed algorithm. Our methods are quite general and provide performance guarantees for spectral clustering with any ultrametric. We also introduce an efficient, easy to implement approximation algorithm for the LLPD based on a multiscale analysis of adjacency graphs, which allows for the runtime of LLPD spectral clustering to be quasilinear in the number of data points. Full Article
ust 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
ust Connecting Spectral Clustering to Maximum Margins and Level Sets By Published On :: 2020 We study the connections between spectral clustering and the problems of maximum margin clustering, and estimation of the components of level sets of a density function. Specifically, we obtain bounds on the eigenvectors of graph Laplacian matrices in terms of the between cluster separation, and within cluster connectivity. These bounds ensure that the spectral clustering solution converges to the maximum margin clustering solution as the scaling parameter is reduced towards zero. The sensitivity of maximum margin clustering solutions to outlying points is well known, but can be mitigated by first removing such outliers, and applying maximum margin clustering to the remaining points. If outliers are identified using an estimate of the underlying probability density, then the remaining points may be seen as an estimate of a level set of this density function. We show that such an approach can be used to consistently estimate the components of the level sets of a density function under very mild assumptions. Full Article
ust Provably robust estimation of modulo 1 samples of a smooth function with applications to phase unwrapping By Published On :: 2020 Consider an unknown smooth function $f: [0,1]^d ightarrow mathbb{R}$, and assume we are given $n$ noisy mod 1 samples of $f$, i.e., $y_i = (f(x_i) + eta_i) mod 1$, for $x_i in [0,1]^d$, where $eta_i$ denotes the noise. Given the samples $(x_i,y_i)_{i=1}^{n}$, our goal is to recover smooth, robust estimates of the clean samples $f(x_i) mod 1$. We formulate a natural approach for solving this problem, which works with angular embeddings of the noisy mod 1 samples over the unit circle, inspired by the angular synchronization framework. This amounts to solving a smoothness regularized least-squares problem -- a quadratically constrained quadratic program (QCQP) -- where the variables are constrained to lie on the unit circle. Our proposed approach is based on solving its relaxation, which is a trust-region sub-problem and hence solvable efficiently. We provide theoretical guarantees demonstrating its robustness to noise for adversarial, as well as random Gaussian and Bernoulli noise models. To the best of our knowledge, these are the first such theoretical results for this problem. We demonstrate the robustness and efficiency of our proposed approach via extensive numerical simulations on synthetic data, along with a simple least-squares based solution for the unwrapping stage, that recovers the original samples of $f$ (up to a global shift). It is shown to perform well at high levels of noise, when taking as input the denoised modulo $1$ samples. Finally, we also consider two other approaches for denoising the modulo 1 samples that leverage tools from Riemannian optimization on manifolds, including a Burer-Monteiro approach for a semidefinite programming relaxation of our formulation. For the two-dimensional version of the problem, which has applications in synthetic aperture radar interferometry (InSAR), we are able to solve instances of real-world data with a million sample points in under 10 seconds, on a personal laptop. Full Article
ust Latent Simplex Position Model: High Dimensional Multi-view Clustering with Uncertainty Quantification By Published On :: 2020 High dimensional data often contain multiple facets, and several clustering patterns can co-exist under different variable subspaces, also known as the views. While multi-view clustering algorithms were proposed, the uncertainty quantification remains difficult --- a particular challenge is in the high complexity of estimating the cluster assignment probability under each view, and sharing information among views. In this article, we propose an approximate Bayes approach --- treating the similarity matrices generated over the views as rough first-stage estimates for the co-assignment probabilities; in its Kullback-Leibler neighborhood, we obtain a refined low-rank matrix, formed by the pairwise product of simplex coordinates. Interestingly, each simplex coordinate directly encodes the cluster assignment uncertainty. For multi-view clustering, we let each view draw a parameterization from a few candidates, leading to dimension reduction. With high model flexibility, the estimation can be efficiently carried out as a continuous optimization problem, hence enjoys gradient-based computation. The theory establishes the connection of this model to a random partition distribution under multiple views. Compared to single-view clustering approaches, substantially more interpretable results are obtained when clustering brains from a human traumatic brain injury study, using high-dimensional gene expression data. Full Article
ust Optimal Bipartite Network Clustering By Published On :: 2020 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. Full Article
ust High-Dimensional Inference for Cluster-Based Graphical Models By Published On :: 2020 Motivated by modern applications in which one constructs graphical models based on a very large number of features, this paper introduces a new class of cluster-based graphical models, in which variable clustering is applied as an initial step for reducing the dimension of the feature space. We employ model assisted clustering, in which the clusters contain features that are similar to the same unobserved latent variable. Two different cluster-based Gaussian graphical models are considered: the latent variable graph, corresponding to the graphical model associated with the unobserved latent variables, and the cluster-average graph, corresponding to the vector of features averaged over clusters. Our study reveals that likelihood based inference for the latent graph, not analyzed previously, is analytically intractable. Our main contribution is the development and analysis of alternative estimation and inference strategies, for the precision matrix of an unobservable latent vector Z. We replace the likelihood of the data by an appropriate class of empirical risk functions, that can be specialized to the latent graphical model and to the simpler, but under-analyzed, cluster-average graphical model. The estimators thus derived can be used for inference on the graph structure, for instance on edge strength or pattern recovery. Inference is based on the asymptotic limits of the entry-wise estimates of the precision matrices associated with the conditional independence graphs under consideration. While taking the uncertainty induced by the clustering step into account, we establish Berry-Esseen central limit theorems for the proposed estimators. It is noteworthy that, although the clusters are estimated adaptively from the data, the central limit theorems regarding the entries of the estimated graphs are proved under the same conditions one would use if the clusters were known in advance. As an illustration of the usage of these newly developed inferential tools, we show that they can be reliably used for recovery of the sparsity pattern of the graphs we study, under FDR control, which is verified via simulation studies and an fMRI data analysis. These experimental results confirm the theoretically established difference between the two graph structures. Furthermore, the data analysis suggests that the latent variable graph, corresponding to the unobserved cluster centers, can help provide more insight into the understanding of the brain connectivity networks relative to the simpler, average-based, graph. Full Article
ust Robust Asynchronous Stochastic Gradient-Push: Asymptotically Optimal and Network-Independent Performance for Strongly Convex Functions By Published On :: 2020 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. Full Article
ust Exact Guarantees on the Absence of Spurious Local Minima for Non-negative Rank-1 Robust Principal Component Analysis By Published On :: 2020 This work is concerned with the non-negative rank-1 robust principal component analysis (RPCA), where the goal is to recover the dominant non-negative principal components of a data matrix precisely, where a number of measurements could be grossly corrupted with sparse and arbitrary large noise. Most of the known techniques for solving the RPCA rely on convex relaxation methods by lifting the problem to a higher dimension, which significantly increase the number of variables. As an alternative, the well-known Burer-Monteiro approach can be used to cast the RPCA as a non-convex and non-smooth $ell_1$ optimization problem with a significantly smaller number of variables. In this work, we show that the low-dimensional formulation of the symmetric and asymmetric positive rank-1 RPCA based on the Burer-Monteiro approach has benign landscape, i.e., 1) it does not have any spurious local solution, 2) has a unique global solution, and 3) its unique global solution coincides with the true components. An implication of this result is that simple local search algorithms are guaranteed to achieve a zero global optimality gap when directly applied to the low-dimensional formulation. Furthermore, we provide strong deterministic and probabilistic guarantees for the exact recovery of the true principal components. In particular, it is shown that a constant fraction of the measurements could be grossly corrupted and yet they would not create any spurious local solution. Full Article
ust Union of Low-Rank Tensor Spaces: Clustering and Completion By Published On :: 2020 We consider the problem of clustering and completing a set of tensors with missing data that are drawn from a union of low-rank tensor spaces. In the clustering problem, given a partially sampled tensor data that is composed of a number of subtensors, each chosen from one of a certain number of unknown tensor spaces, we need to group the subtensors that belong to the same tensor space. We provide a geometrical analysis on the sampling pattern and subsequently derive the sampling rate that guarantees the correct clustering under some assumptions with high probability. Moreover, we investigate the fundamental conditions for finite/unique completability for the union of tensor spaces completion problem. Both deterministic and probabilistic conditions on the sampling pattern to ensure finite/unique completability are obtained. For both the clustering and completion problems, our tensor analysis provides significantly better bound than the bound given by the matrix analysis applied to any unfolding of the tensor data. Full Article
ust A Bayesian sparse finite mixture model for clustering data from a heterogeneous population By projecteuclid.org Published On :: Mon, 04 May 2020 04:00 EDT Erlandson F. Saraiva, Adriano K. Suzuki, Luís A. Milan. Source: Brazilian Journal of Probability and Statistics, Volume 34, Number 2, 323--344.Abstract: In this paper, we introduce a Bayesian approach for clustering data using a sparse finite mixture model (SFMM). The SFMM is a finite mixture model with a large number of components $k$ previously fixed where many components can be empty. In this model, the number of components $k$ can be interpreted as the maximum number of distinct mixture components. Then, we explore the use of a prior distribution for the weights of the mixture model that take into account the possibility that the number of clusters $k_{mathbf{c}}$ (e.g., nonempty components) can be random and smaller than the number of components $k$ of the finite mixture model. In order to determine clusters we develop a MCMC algorithm denominated Split-Merge allocation sampler. In this algorithm, the split-merge strategy is data-driven and was inserted within the algorithm in order to increase the mixing of the Markov chain in relation to the number of clusters. The performance of the method is verified using simulated datasets and three real datasets. The first real data set is the benchmark galaxy data, while second and third are the publicly available data set on Enzyme and Acidity, respectively. Full Article