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Know Your Clients' behaviours: a cluster analysis of financial transactions. (arXiv:2005.03625v1 [econ.EM])

In Canada, financial advisors and dealers by provincial securities commissions, and those self-regulatory organizations charged with direct regulation over investment dealers and mutual fund dealers, respectively to collect and maintain Know Your Client (KYC) information, such as their age or risk tolerance, for investor accounts. With this information, investors, under their advisor's guidance, make decisions on their investments which are presumed to be beneficial to their investment goals. Our unique dataset is provided by a financial investment dealer with over 50,000 accounts for over 23,000 clients. We use a modified behavioural finance recency, frequency, monetary model for engineering features that quantify investor behaviours, and machine learning clustering algorithms to find groups of investors that behave similarly. We show that the KYC information collected does not explain client behaviours, whereas trade and transaction frequency and volume are most informative. We believe the results shown herein encourage financial regulators and advisors to use more advanced metrics to better understand and predict investor behaviours.




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Predictive Modeling of ICU Healthcare-Associated Infections from Imbalanced Data. Using Ensembles and a Clustering-Based Undersampling Approach. (arXiv:2005.03582v1 [cs.LG])

Early detection of patients vulnerable to infections acquired in the hospital environment is a challenge in current health systems given the impact that such infections have on patient mortality and healthcare costs. This work is focused on both the identification of risk factors and the prediction of healthcare-associated infections in intensive-care units by means of machine-learning methods. The aim is to support decision making addressed at reducing the incidence rate of infections. In this field, it is necessary to deal with the problem of building reliable classifiers from imbalanced datasets. We propose a clustering-based undersampling strategy to be used in combination with ensemble classifiers. A comparative study with data from 4616 patients was conducted in order to validate our proposal. We applied several single and ensemble classifiers both to the original dataset and to data preprocessed by means of different resampling methods. The results were analyzed by means of classic and recent metrics specifically designed for imbalanced data classification. They revealed that the proposal is more efficient in comparison with other approaches.




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Pathogenesis of periodontal diseases : biological concepts for clinicians

9783319537375




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Nanoencapsulation of food ingredients by specialized equipment

9780128156728 (electronic bk.)




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Molecular aspects of plant beneficial microbes in agriculture

9780128184707 (electronic bk.)




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Maxillofacial cone beam computed tomography : principles, techniques and clinical applications

9783319620619 (electronic bk.)




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Healthcare-associated infections in children : a guide to prevention and management

9783319981222 (electronic bk.)




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Gapenski's understanding healthcare financial management

Pink, George H., author.
9781640551145 (electronic bk.)




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Encyclopedia of social insects

9783319903064 electronic book




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Commercial status of plant breeding in India

Tiwari, Aparna, author.
9789811519062




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Negative association, ordering and convergence of resampling methods

Mathieu Gerber, Nicolas Chopin, Nick Whiteley.

Source: The Annals of Statistics, Volume 47, Number 4, 2236--2260.

Abstract:
We study convergence and convergence rates for resampling schemes. Our first main result is a general consistency theorem based on the notion of negative association, which is applied to establish the almost sure weak convergence of measures output from Kitagawa’s [ J. Comput. Graph. Statist. 5 (1996) 1–25] stratified resampling method. Carpenter, Ckiffird and Fearnhead’s [ IEE Proc. Radar Sonar Navig. 146 (1999) 2–7] systematic resampling method is similar in structure but can fail to converge depending on the order of the input samples. We introduce a new resampling algorithm based on a stochastic rounding technique of [In 42nd IEEE Symposium on Foundations of Computer Science ( Las Vegas , NV , 2001) (2001) 588–597 IEEE Computer Soc.], which shares some attractive properties of systematic resampling, but which exhibits negative association and, therefore, converges irrespective of the order of the input samples. We confirm a conjecture made by [ J. Comput. Graph. Statist. 5 (1996) 1–25] that ordering input samples by their states in $mathbb{R}$ yields a faster rate of convergence; we establish that when particles are ordered using the Hilbert curve in $mathbb{R}^{d}$, the variance of the resampling error is ${scriptstylemathcal{O}}(N^{-(1+1/d)})$ under mild conditions, where $N$ is the number of particles. We use these results to establish asymptotic properties of particle algorithms based on resampling schemes that differ from multinomial resampling.




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A comparison of principal component methods between multiple phenotype regression and multiple SNP regression in genetic association studies

Zhonghua Liu, Ian Barnett, Xihong Lin.

Source: The Annals of Applied Statistics, Volume 14, Number 1, 433--451.

Abstract:
Principal component analysis (PCA) is a popular method for dimension reduction in unsupervised multivariate analysis. However, existing ad hoc uses of PCA in both multivariate regression (multiple outcomes) and multiple regression (multiple predictors) lack theoretical justification. The differences in the statistical properties of PCAs in these two regression settings are not well understood. In this paper we provide theoretical results on the power of PCA in genetic association testings in both multiple phenotype and SNP-set settings. The multiple phenotype setting refers to the case when one is interested in studying the association between a single SNP and multiple phenotypes as outcomes. The SNP-set setting refers to the case when one is interested in studying the association between multiple SNPs in a SNP set and a single phenotype as the outcome. We demonstrate analytically that the properties of the PC-based analysis in these two regression settings are substantially different. We show that the lower order PCs, that is, PCs with large eigenvalues, are generally preferred and lead to a higher power in the SNP-set setting, while the higher-order PCs, that is, PCs with small eigenvalues, are generally preferred in the multiple phenotype setting. We also investigate the power of three other popular statistical methods, the Wald test, the variance component test and the minimum $p$-value test, in both multiple phenotype and SNP-set settings. We use theoretical power, simulation studies, and two real data analyses to validate our findings.




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A simple, consistent estimator of SNP heritability from genome-wide association studies

Armin Schwartzman, Andrew J. Schork, Rong Zablocki, Wesley K. Thompson.

Source: The Annals of Applied Statistics, Volume 13, Number 4, 2509--2538.

Abstract:
Analysis of genome-wide association studies (GWAS) is characterized by a large number of univariate regressions where a quantitative trait is regressed on hundreds of thousands to millions of single-nucleotide polymorphism (SNP) allele counts, one at a time. This article proposes an estimator of the SNP heritability of the trait, defined here as the fraction of the variance of the trait explained by the SNPs in the study. The proposed GWAS heritability (GWASH) estimator is easy to compute, highly interpretable and is consistent as the number of SNPs and the sample size increase. More importantly, it can be computed from summary statistics typically reported in GWAS, not requiring access to the original data. The estimator takes full account of the linkage disequilibrium (LD) or correlation between the SNPs in the study through moments of the LD matrix, estimable from auxiliary datasets. Unlike other proposed estimators in the literature, we establish the theoretical properties of the GWASH estimator and obtain analytical estimates of the precision, allowing for power and sample size calculations for SNP heritability estimates and forming a firm foundation for future methodological development.




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'We Cannot Police Our Way Out of a Pandemic.' Experts, Police Union Say NYPD Should Not Be Enforcing Social Distance Rules Amid COVID-19

The New York City police department (NYPD) is conducting an internal investigation into a May 2 incident involving the violent arrests of multiple people, allegedly members of a group who were not social distancing





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Coronavirus: Chinese official admits health system weaknesses

China says it will improve public health systems after criticism of its early response to the virus.





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Bayesian Network Marker Selection via the Thresholded Graph Laplacian Gaussian Prior

Qingpo Cai, Jian Kang, Tianwei Yu.

Source: Bayesian Analysis, Volume 15, Number 1, 79--102.

Abstract:
Selecting informative nodes over large-scale networks becomes increasingly important in many research areas. Most existing methods focus on the local network structure and incur heavy computational costs for the large-scale problem. In this work, we propose a novel prior model for Bayesian network marker selection in the generalized linear model (GLM) framework: the Thresholded Graph Laplacian Gaussian (TGLG) prior, which adopts the graph Laplacian matrix to characterize the conditional dependence between neighboring markers accounting for the global network structure. Under mild conditions, we show the proposed model enjoys the posterior consistency with a diverging number of edges and nodes in the network. We also develop a Metropolis-adjusted Langevin algorithm (MALA) for efficient posterior computation, which is scalable to large-scale networks. We illustrate the superiorities of the proposed method compared with existing alternatives via extensive simulation studies and an analysis of the breast cancer gene expression dataset in the Cancer Genome Atlas (TCGA).




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Introduction to the Special Issue

Source: Statistical Science, Volume 35, Number 1, 1--1.




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Producing Official County-Level Agricultural Estimates in the United States: Needs and Challenges

Nathan B. Cruze, Andreea L. Erciulescu, Balgobin Nandram, Wendy J. Barboza, Linda J. Young.

Source: Statistical Science, Volume 34, Number 2, 301--316.

Abstract:
In the United States, county-level estimates of crop yield, production, and acreage published by the United States Department of Agriculture’s National Agricultural Statistics Service (USDA NASS) play an important role in determining the value of payments allotted to farmers and ranchers enrolled in several federal programs. Given the importance of these official county-level crop estimates, NASS continually strives to improve its crops county estimates program in terms of accuracy, reliability and coverage. In 2015, NASS engaged a panel of experts convened under the auspices of the National Academies of Sciences, Engineering, and Medicine Committee on National Statistics (CNSTAT) for guidance on implementing models that may synthesize multiple sources of information into a single estimate, provide defensible measures of uncertainty, and potentially increase the number of publishable county estimates. The final report titled Improving Crop Estimates by Integrating Multiple Data Sources was released in 2017. This paper discusses several needs and requirements for NASS county-level crop estimates that were illuminated during the activities of the CNSTAT panel. A motivating example of planted acreage estimation in Illinois illustrates several challenges that NASS faces as it considers adopting any explicit model for official crops county estimates.




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Smoking is anti-social / design : Biman Mullick.

London : Cleanair, Smoke-free Environment (33 Stillness Rd, London, SE23 1NG), [198-?]




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Muchas gracias por no fumar / Biman Mullick.

London : Cleanair, [1988?]




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Gracias por no fumar / deseño : Biman Mullick.

[London] : Cleanair, Campaña para un Medio Ambiente Libre de Humo, [198-?]




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Muchas gracias por no fumar / Biman Mullick.

[London] : Cleanair, [1989?]




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Dissociable Intrinsic Connectivity Networks for Salience Processing and Executive Control

William W. Seeley
Feb 28, 2007; 27:2349-2356
BehavioralSystemsCognitive




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Daily Marijuana Use Is Not Associated with Brain Morphometric Measures in Adolescents or Adults

Barbara J. Weiland
Jan 28, 2015; 35:1505-1512
Neurobiology of Disease




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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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Social Laughter Triggers Endogenous Opioid Release in Humans

Sandra Manninen
Jun 21, 2017; 37:6125-6131
BehavioralSystemsCognitive




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Brain Structures Differ between Musicians and Non-Musicians

Christian Gaser
Oct 8, 2003; 23:9240-9245
BehavioralSystemsCognitive




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The Fusiform Face Area: A Module in Human Extrastriate Cortex Specialized for Face Perception

Nancy Kanwisher
Jun 1, 1997; 17:4302-4311
Articles




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Interaction between the C terminus of NMDA receptor subunits and multiple members of the PSD-95 family of membrane-associated guanylate kinases

M Niethammer
Apr 1, 1996; 16:2157-2163
Articles




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Dissociable Intrinsic Connectivity Networks for Salience Processing and Executive Control

William W. Seeley
Feb 28, 2007; 27:2349-2356
BehavioralSystemsCognitive




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The Fusiform Face Area: A Module in Human Extrastriate Cortex Specialized for Face Perception

Nancy Kanwisher
Jun 1, 1997; 17:4302-4311
Articles




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La fiducia: l'anello mancante delle criptovalute attuali

Italian translation of the Press Release on the pre-release of two special chapters of the Annual Economic Report of the BIS, 17 June 2018. Trust is the missing link in today's cryptocurrencies - Cryptocurrencies' model of generating trust limits their potential to replace conventional money, the Bank for International Settlements (BIS) writes in its Annual Economic Report (AER), a new title launched this year.




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Las divergencias se amplían en los mercados: Informe Trimestral del BPI

Spanish translation of the BIS press release about the BIS Quarterly Review, September 2018






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Wintrust Financial Corporation Reports Record Full-Year 2019 Net Income of $355.7 million and Fourth Quarter 2019 Net Income of $86.0 million, up 8% from the Fourth Quarter 2018

To view more press releases, please visit http://www.snl.com/irweblinkx/news.aspx?iid=1024452.








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Wintrust Financial Corporation Announces Precautionary Decision to Help Achieve Community Health Objectives By Temporarily Closing Selected Branches

To view more press releases, please visit http://www.snl.com/irweblinkx/news.aspx?iid=1024452.











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New York's crooked politicians




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Monetary policy: 10 years after the financial crisis

Speech by Mr Agustín Carstens, General Manager of the BIS, to the Basler Bankenforum, Basel, 5 September 2019.