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Estimation of a semiparametric transformation model: A novel approach based on least squares minimization

Benjamin Colling, Ingrid Van Keilegom.

Source: Electronic Journal of Statistics, Volume 14, Number 1, 769--800.

Abstract:
Consider the following semiparametric transformation model $Lambda_{ heta }(Y)=m(X)+varepsilon $, where $X$ is a $d$-dimensional covariate, $Y$ is a univariate response variable and $varepsilon $ is an error term with zero mean and independent of $X$. We assume that $m$ is an unknown regression function and that ${Lambda _{ heta }: heta inTheta }$ is a parametric family of strictly increasing functions. Our goal is to develop two new estimators of the transformation parameter $ heta $. The main idea of these two estimators is to minimize, with respect to $ heta $, the $L_{2}$-distance between the transformation $Lambda _{ heta }$ and one of its fully nonparametric estimators. We consider in particular the nonparametric estimator based on the least-absolute deviation loss constructed in Colling and Van Keilegom (2019). We establish the consistency and the asymptotic normality of the two proposed estimators of $ heta $. We also carry out a simulation study to illustrate and compare the performance of our new parametric estimators to that of the profile likelihood estimator constructed in Linton et al. (2008).




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Weighted Message Passing and Minimum Energy Flow for Heterogeneous Stochastic Block Models with Side Information

We study the misclassification error for community detection in general heterogeneous stochastic block models (SBM) with noisy or partial label information. We establish a connection between the misclassification rate and the notion of minimum energy on the local neighborhood of the SBM. We develop an optimally weighted message passing algorithm to reconstruct labels for SBM based on the minimum energy flow and the eigenvectors of a certain Markov transition matrix. The general SBM considered in this paper allows for unequal-size communities, degree heterogeneity, and different connection probabilities among blocks. We focus on how to optimally weigh the message passing to improve misclassification.




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

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




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Estimation of a Low-rank Topic-Based Model for Information Cascades

We consider the problem of estimating the latent structure of a social network based on the observed information diffusion events, or cascades, where the observations for a given cascade consist of only the timestamps of infection for infected nodes but not the source of the infection. Most of the existing work on this problem has focused on estimating a diffusion matrix without any structural assumptions on it. In this paper, we propose a novel model based on the intuition that an information is more likely to propagate among two nodes if they are interested in similar topics which are also prominent in the information content. In particular, our model endows each node with an influence vector (which measures how authoritative the node is on each topic) and a receptivity vector (which measures how susceptible the node is for each topic). We show how this node-topic structure can be estimated from the observed cascades, and prove the consistency of the estimator. Experiments on synthetic and real data demonstrate the improved performance and better interpretability of our model compared to existing state-of-the-art methods.




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Modified information criterion for testing changes in skew normal model

Khamis K. Said, Wei Ning, Yubin Tian.

Source: Brazilian Journal of Probability and Statistics, Volume 33, Number 2, 280--300.

Abstract:
In this paper, we study the change point problem for the skew normal distribution model from the view of model selection problem. The detection procedure based on the modified information criterion (MIC) for change problem is proposed. Such a procedure has advantage in detecting the changes in early and late stage of a data comparing to the one based on the traditional Schwarz information criterion which is well known as Bayesian information criterion (BIC) by considering the complexity of the models. Due to the difficulty in deriving the analytic asymptotic distribution of the test statistic based on the MIC procedure, the bootstrap simulation is provided to obtain the critical values at the different significance levels. Simulations are conducted to illustrate the comparisons of performance between MIC, BIC and likelihood ratio test (LRT). Such an approach is applied on two stock market data sets to indicate the detection procedure.




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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)

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.




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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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Nonparametric Estimation of the Fisher Information and Its Applications. (arXiv:2005.03622v1 [cs.IT])

This paper considers the problem of estimation of the Fisher information for location from a random sample of size $n$. First, an estimator proposed by Bhattacharya is revisited and improved convergence rates are derived. Second, a new estimator, termed a clipped estimator, is proposed. Superior upper bounds on the rates of convergence can be shown for the new estimator compared to the Bhattacharya estimator, albeit with different regularity conditions. Third, both of the estimators are evaluated for the practically relevant case of a random variable contaminated by Gaussian noise. Moreover, using Brown's identity, which relates the Fisher information and the minimum mean squared error (MMSE) in Gaussian noise, two corresponding consistent estimators for the MMSE are proposed. Simulation examples for the Bhattacharya estimator and the clipped estimator as well as the MMSE estimators are presented. The examples demonstrate that the clipped estimator can significantly reduce the required sample size to guarantee a specific confidence interval compared to the Bhattacharya estimator.




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Relevance Vector Machine with Weakly Informative Hyperprior and Extended Predictive Information Criterion. (arXiv:2005.03419v1 [stat.ML])

In the variational relevance vector machine, the gamma distribution is representative as a hyperprior over the noise precision of automatic relevance determination prior. Instead of the gamma hyperprior, we propose to use the inverse gamma hyperprior with a shape parameter close to zero and a scale parameter not necessary close to zero. This hyperprior is associated with the concept of a weakly informative prior. The effect of this hyperprior is investigated through regression to non-homogeneous data. Because it is difficult to capture the structure of such data with a single kernel function, we apply the multiple kernel method, in which multiple kernel functions with different widths are arranged for input data. We confirm that the degrees of freedom in a model is controlled by adjusting the scale parameter and keeping the shape parameter close to zero. A candidate for selecting the scale parameter is the predictive information criterion. However the estimated model using this criterion seems to cause over-fitting. This is because the multiple kernel method makes the model a situation where the dimension of the model is larger than the data size. To select an appropriate scale parameter even in such a situation, we also propose an extended prediction information criterion. It is confirmed that a multiple kernel relevance vector regression model with good predictive accuracy can be obtained by selecting the scale parameter minimizing extended prediction information criterion.




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Detecting Latent Communities in Network Formation Models. (arXiv:2005.03226v1 [econ.EM])

This paper proposes a logistic undirected network formation model which allows for assortative matching on observed individual characteristics and the presence of edge-wise fixed effects. We model the coefficients of observed characteristics to have a latent community structure and the edge-wise fixed effects to be of low rank. We propose a multi-step estimation procedure involving nuclear norm regularization, sample splitting, iterative logistic regression and spectral clustering to detect the latent communities. We show that the latent communities can be exactly recovered when the expected degree of the network is of order log n or higher, where n is the number of nodes in the network. The finite sample performance of the new estimation and inference methods is illustrated through both simulated and real datasets.




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Deep Learning Framework for Detecting Ground Deformation in the Built Environment using Satellite InSAR data. (arXiv:2005.03221v1 [cs.CV])

The large volumes of Sentinel-1 data produced over Europe are being used to develop pan-national ground motion services. However, simple analysis techniques like thresholding cannot detect and classify complex deformation signals reliably making providing usable information to a broad range of non-expert stakeholders a challenge. Here we explore the applicability of deep learning approaches by adapting a pre-trained convolutional neural network (CNN) to detect deformation in a national-scale velocity field. For our proof-of-concept, we focus on the UK where previously identified deformation is associated with coal-mining, ground water withdrawal, landslides and tunnelling. The sparsity of measurement points and the presence of spike noise make this a challenging application for deep learning networks, which involve calculations of the spatial convolution between images. Moreover, insufficient ground truth data exists to construct a balanced training data set, and the deformation signals are slower and more localised than in previous applications. We propose three enhancement methods to tackle these problems: i) spatial interpolation with modified matrix completion, ii) a synthetic training dataset based on the characteristics of real UK velocity map, and iii) enhanced over-wrapping techniques. Using velocity maps spanning 2015-2019, our framework detects several areas of coal mining subsidence, uplift due to dewatering, slate quarries, landslides and tunnel engineering works. The results demonstrate the potential applicability of the proposed framework to the development of automated ground motion analysis systems.




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Important information: COVID-19

The Library will be closed to the public and to staff from Monday 23 March 2020.




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Trusted computing and information security : 13th Chinese conference, CTCIS 2019, Shanghai, China, October 24-27, 2019

Chinese Conference on Trusted Computing and Information Security (13th : 2019 : Shanghai, China)
9789811534188 (eBook)




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Structured object-oriented formal language and method : 9th International Workshop, SOFL+MSVL 2019, Shenzhen, China, November 5, 2019, Revised selected papers

SOFL+MSVL (Workshop) (9th : 2019 : Shenzhen, China)
9783030414184 (electronic bk.)




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Space information networks : 4th International Conference, SINC 2019, Wuzhen, China, September 19-20, 2019, Revised Selected Papers

SINC (Conference) (4th : 2019 : Wuzhen, China)
9789811534423 (electronic bk.)




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Information retrieval technology : 15th Asia Information Retrieval Societies Conference, AIRS 2019, Hong Kong, China, November 7-9, 2019, proceedings

Asia Information Retrieval Societies Conference (15th : 2019 : Hong Kong, China)
9783030428358




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Green food processing techniques : preservation, transformation and extraction

9780128153536




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Formation and control of biofilm in various environments

Kanematsu, Hideyuki, author
9789811522406 (electronic bk.)




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Enterprise information systems : 21st International Conference, ICEIS 2019, Heraklion, Crete, Greece, May 3-5, 2019, Revised Selected Papers

International Conference on Enterprise Information Systems (21st : 2019 : Ērakleion, Greece)
9783030407834 (electronic bk.)




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Empirical Bayes analysis of RNA sequencing experiments with auxiliary information

Kun Liang.

Source: The Annals of Applied Statistics, Volume 13, Number 4, 2452--2482.

Abstract:
Finding differentially expressed genes is a common task in high-throughput transcriptome studies. While traditional statistical methods rank the genes by their test statistics alone, we analyze an RNA sequencing dataset using the auxiliary information of gene length and the test statistics from a related microarray study. Given the auxiliary information, we propose a novel nonparametric empirical Bayes procedure to estimate the posterior probability of differential expression for each gene. We demonstrate the advantage of our procedure in extensive simulation studies and a psoriasis RNA sequencing study. The companion R package calm is available at Bioconductor.




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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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Low Information Omnibus (LIO) Priors for Dirichlet Process Mixture Models

Yushu Shi, Michael Martens, Anjishnu Banerjee, Purushottam Laud.

Source: Bayesian Analysis, Volume 14, Number 3, 677--702.

Abstract:
Dirichlet process mixture (DPM) models provide flexible modeling for distributions of data as an infinite mixture of distributions from a chosen collection. Specifying priors for these models in individual data contexts can be challenging. In this paper, we introduce a scheme which requires the investigator to specify only simple scaling information. This is used to transform the data to a fixed scale on which a low information prior is constructed. Samples from the posterior with the rescaled data are transformed back for inference on the original scale. The low information prior is selected to provide a wide variety of components for the DPM to generate flexible distributions for the data on the fixed scale. The method can be applied to all DPM models with kernel functions closed under a suitable scaling transformation. Construction of the low information prior, however, is kernel dependent. Using DPM-of-Gaussians and DPM-of-Weibulls models as examples, we show that the method provides accurate estimates of a diverse collection of distributions that includes skewed, multimodal, and highly dispersed members. With the recommended priors, repeated data simulations show performance comparable to that of standard empirical estimates. Finally, we show weak convergence of posteriors with the proposed priors for both kernels considered.




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Comment: Contributions of Model Features to BART Causal Inference Performance Using ACIC 2016 Competition Data

Nicole Bohme Carnegie.

Source: Statistical Science, Volume 34, Number 1, 90--93.

Abstract:
With a thorough exposition of the methods and results of the 2016 Atlantic Causal Inference Competition, Dorie et al. have set a new standard for reproducibility and comparability of evaluations of causal inference methods. In particular, the open-source R package aciccomp2016, which permits reproduction of all datasets used in the competition, will be an invaluable resource for evaluation of future methodological developments. Building upon results from Dorie et al., we examine whether a set of potential modifications to Bayesian Additive Regression Trees (BART)—multiple chains in model fitting, using the propensity score as a covariate, targeted maximum likelihood estimation (TMLE), and computing symmetric confidence intervals—have a stronger impact on bias, RMSE, and confidence interval coverage in combination than they do alone. We find that bias in the estimate of SATT is minimal, regardless of the BART formulation. For purposes of CI coverage, however, all proposed modifications are beneficial—alone and in combination—but use of TMLE is least beneficial for coverage and results in considerably wider confidence intervals.




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The Representation of Semantic Information Across Human Cerebral Cortex During Listening Versus Reading Is Invariant to Stimulus Modality

Fatma Deniz
Sep 25, 2019; 39:7722-7736
BehavioralSystemsCognitive




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What Visual Information Is Processed in the Human Dorsal Stream?

Martin N. Hebart
Jun 13, 2012; 32:8107-8109
Journal Club




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Correction: Sequerra, Goyal et al., "NMDA Receptor Signaling Is Important for Neural Tube Formation and for Preventing Antiepileptic Drug-Induced Neural Tube Defects"




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High-Level Neuronal Expression of A{beta}1-42 in Wild-Type Human Amyloid Protein Precursor Transgenic Mice: Synaptotoxicity without Plaque Formation

Lennart Mucke
Jun 1, 2000; 20:4050-4058
Cellular




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The Variable Discharge of Cortical Neurons: Implications for Connectivity, Computation, and Information Coding

Michael N. Shadlen
May 15, 1998; 18:3870-3896
Articles




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The analysis of visual motion: a comparison of neuronal and psychophysical performance

KH Britten
Dec 1, 1992; 12:4745-4765
Articles




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Basilea III: Finalización de las reformas poscrisis

Spanish translation of "Basel III: Finalising post-crisis reforms", December 2017.




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Far-Right Spreads COVID-19 Disinformation Epidemic Online

Far-right groups and individuals in the United States are exploiting the COVID-19 pandemic to promote disinformation, hate, extremism and authoritarianism. "COVID-19 has been seized by far-right groups as an opportunity to call for extreme violence," states a report from ISD, based on a combination of natural language processing, network analysis and ethnographic online research.




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Information Security: New Rules

Warren Buffet once said, "Only when the tide goes out do you discover who's been swimming naked." You can cover over a host of sins when times are good, but bad or unsafe practices will be exposed when times are rough. Time and experience have borne out the accuracy of this witticism in the financial arena -- and we're now seeing its applicability to the intersection of infosec and COVID-19.




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Shipping Information




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[~21.8 MB mp3] A Leading Figure In The New Apostolic Reformation

Story: Several apostles affiliated with the movement helped organize or spoke at Rick Perry's recent prayer rally. A leading apostle, C. Peter Wagner, talks about the movement and its missions, which include acquiring leadership positions in government, the media, and arts and entertainment.




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The Effect of Counterfactual Information on Outcome Value Coding in Medial Prefrontal and Cingulate Cortex: From an Absolute to a Relative Neural Code

Adaptive coding of stimuli is well documented in perception, where it supports efficient encoding over a broad range of possible percepts. Recently, a similar neural mechanism has been reported also in value-based decision, where it allows optimal encoding of vast ranges of values in PFC: neuronal response to value depends on the choice context (relative coding), rather than being invariant across contexts (absolute coding). Additionally, value learning is sensitive to the amount of feedback information: providing complete feedback (both obtained and forgone outcomes) instead of partial feedback (only obtained outcome) improves learning. However, it is unclear whether relative coding occurs in all PFC regions and how it is affected by feedback information. We systematically investigated univariate and multivariate feedback encoding in various mPFC regions and compared three modes of neural coding: absolute, partially-adaptive and fully-adaptive.

Twenty-eight human participants (both sexes) performed a learning task while undergoing fMRI scanning. On each trial, they chose between two symbols associated with a certain outcome. Then, the decision outcome was revealed. Notably, in one-half of the trials participants received partial feedback, whereas in the other half they got complete feedback. We used univariate and multivariate analysis to explore value encoding in different feedback conditions.

We found that both obtained and forgone outcomes were encoded in mPFC, but with opposite sign in its ventral and dorsal subdivisions. Moreover, we showed that increasing feedback information induced a switch from absolute to relative coding. Our results suggest that complete feedback information enhances context-dependent outcome encoding.

SIGNIFICANCE STATEMENT This study offers a systematic investigation of the effect of the amount of feedback information (partial vs complete) on univariate and multivariate outcome value encoding, within multiple regions in mPFC and cingulate cortex that are critical for value-based decisions and behavioral adaptation. Moreover, we provide the first comparison of three possible models of neural coding (i.e., absolute, partially-adaptive, and fully-adaptive coding) of value signal in these regions, by using commensurable measures of prediction accuracy. Taken together, our results help build a more comprehensive picture of how the human brain encodes and processes outcome value. In particular, our results suggest that simultaneous presentation of obtained and foregone outcomes promotes relative value representation.




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These Massive Rock Formations Look Just Like Cracked Eggs

Bisti Badlands’ bizarre eggs bring a bit of Easter to the New Mexico desert




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After Closure, the Met Opera Offers Free Streaming of Past Performances

Each night, the institution will post an encore showing of an opera from its "Met Live in HD" series




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National Cyber Security Drill for Critical Information Infrastructures (CIIs)

Cyber risk is now one of the most commonly talked about topics as the impact of cybercrime reaches an all-time high. Heavily connected industries, such as financial services and critical national infrastructure (CNI) pose a systemic risk to the markets they serve. We are now seeing national cybersecurity incident simulation exercises being carried out by governments and/or industry associations. This helps to exercise the reaction to cybersecurity incidents, which impact various parts of the supply chain, from financial transactions to the operational technology that underpins our daily lives.
 In line with this, the Computer Emergency Response Team of Mauritius (CERT-MU), a division of the National Computer Board operating under the aegis of the Ministry of Technology, Communication & Innovation is organizing a National Cybersecurity Drill from the 25th – 28th June 2019 for the Financial Sector and the Civil Aviation Department. The main objective of the 4 days’ event is to assess the preparedness of these sectors to resist cyber threats and enable timely detection, response, and mitigation and recovery actions in the event of cyber-attacks.
The activities to be organized are as follows:
·         One-day workshop on Cyber Attack Preparedness & Response (25th June 2019)
·         Three-days Cyber Drill exercise (26th – 28th June 2019)




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Comment on FCC Launches New Round of Audits of Radio Station EEO Performance by Stephanie R Thomas

<span class="topsy_trackback_comment"><span class="topsy_twitter_username"><span class="topsy_trackback_content">FCC Launches New Round of Audits of Radio Station EEO Performance http://bit.ly/anoP3q</span></span>




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Marian Anderson in Performance: A Visual (and Musical) Story

The following is a post by Kristi Finefield, Reference Specialist in the Prints & Photographs Division, and member of the Picture This blog team. Images have a way of opening our eyes to new aspects of a well-known story. When I think of singer Marian Anderson, an image of her performing at the Lincoln Memorial […]




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How to Detect the Age-Old Traditions of Folklore in Today’s COVID-19 Misinformation

Smithsonian folklorist James Deutsch says the fast spread of stories and memes are cultural expressions that build cohesion and support





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Cyber Criminals Use Fake Job Listings To Target Applicants' Personally Identifiable Information




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Worries about food shortages have people scratching for information on backyard chickens

Mary Ellen Dalgleish, a poultry expert at Purity Feeds in Kamloops, B.C., believes the increased interest in backyard chickens follows concerns about food security when consumers saw grocery store shelves cleared out early in the COVID-19 pandemic in B.C.



  • News/Canada/British Columbia

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Mutual funds&#39; performance: the role of distribution networks and bank affiliation

Bank of Italy Working Papers by Giorgio Albareto, Andrea Cardillo, Andrea Hamaui and Giuseppe Marinelli




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The impact of information laws on consumer credit access: evidence from Chile

Central Bank of Chile Working Papers by Carlos Madeira




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New iOS feature automatically sends medical information to emergency services



Apple's latest iOS 13.5 beta release includes a new Health app feature that allows iPhone and Apple Watch users to automatically send Medical ID information to first responders.




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The Impact of Image Quality on SOLIDWORKS Performance and File Size

SOLIDWORKS Image Quality settings have the biggest impact on file size and system performance. We always assumed that it would have an impact on overall performance also. The effect varies widely across different files, so we decided to do SOLIDWORKS

Author information

E G S Computers India Private Limited, since 1993, has been in the forefront of delivering solutions
to customers in the areas of Product Design and Development with SOLIDWORKS 3D CAD,Remaining Life Calculations,
Validation using Finite Element Analysis, Customization of Engineering activities and Training in advanced engineering functions
relating to design and development.

EGS India - Authorized Reseller for SOLIDWORKS Solutions in India - Chennai, Coimbatore, Trichy, Madurai - Tamil Nadu, Pondicherry.
For any queries on SOLIDWORKS Solutions contact @ 9445424704 | mktg@egs.co.in
| Website - www.egsindia.com

The post The Impact of Image Quality on SOLIDWORKS Performance and File Size appeared first on SOLIDWORKS Tech Blog.




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Performance Bond Requirements: Agriculture, Energy, Equity and FX Margins - Effective April 22, 2020

As per the normal review of market volatility to ensure adequate collateral coverage, the Chicago Mercantile Exchange Inc., Clearing House Risk Management staff approved the performance bond requirements for the following products listed in the advisory at the link below.

The rates will be effective after the close of business on April 22, 2020.

For the full text of this advisory, please click here.




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Performance Bond Requirements: Energy Margins - Effective April 22, 2020


As per the normal review of market volatility to ensure adequate collateral coverage, the Chicago Mercantile Exchange Inc., Clearing House Risk Management staff approved the performance bond requirements for the following products listed in the advisory at the link below.

The rates will be effective after the close of business on 04/22/2020.

Click here for the full text of the advisory

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