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Parseval inequalities and lower bounds for variance-based sensitivity indices

Olivier Roustant, Fabrice Gamboa, Bertrand Iooss.

Source: Electronic Journal of Statistics, Volume 14, Number 1, 386--412.

Abstract:
The so-called polynomial chaos expansion is widely used in computer experiments. For example, it is a powerful tool to estimate Sobol’ sensitivity indices. In this paper, we consider generalized chaos expansions built on general tensor Hilbert basis. In this frame, we revisit the computation of the Sobol’ indices with Parseval equalities and give general lower bounds for these indices obtained by truncation. The case of the eigenfunctions system associated with a Poincaré differential operator leads to lower bounds involving the derivatives of the analyzed function and provides an efficient tool for variable screening. These lower bounds are put in action both on toy and real life models demonstrating their accuracy.




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Sparse equisigned PCA: Algorithms and performance bounds in the noisy rank-1 setting

Arvind Prasadan, Raj Rao Nadakuditi, Debashis Paul.

Source: Electronic Journal of Statistics, Volume 14, Number 1, 345--385.

Abstract:
Singular value decomposition (SVD) based principal component analysis (PCA) breaks down in the high-dimensional and limited sample size regime below a certain critical eigen-SNR that depends on the dimensionality of the system and the number of samples. Below this critical eigen-SNR, the estimates returned by the SVD are asymptotically uncorrelated with the latent principal components. We consider a setting where the left singular vector of the underlying rank one signal matrix is assumed to be sparse and the right singular vector is assumed to be equisigned, that is, having either only nonnegative or only nonpositive entries. We consider six different algorithms for estimating the sparse principal component based on different statistical criteria and prove that by exploiting sparsity, we recover consistent estimates in the low eigen-SNR regime where the SVD fails. Our analysis reveals conditions under which a coordinate selection scheme based on a sum-type decision statistic outperforms schemes that utilize the $ell _{1}$ and $ell _{2}$ norm-based statistics. We derive lower bounds on the size of detectable coordinates of the principal left singular vector and utilize these lower bounds to derive lower bounds on the worst-case risk. Finally, we verify our findings with numerical simulations and a illustrate the performance with a video data where the interest is in identifying objects.




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Rate optimal Chernoff bound and application to community detection in the stochastic block models

Zhixin Zhou, Ping Li.

Source: Electronic Journal of Statistics, Volume 14, Number 1, 1302--1347.

Abstract:
The Chernoff coefficient is known to be an upper bound of Bayes error probability in classification problem. In this paper, we will develop a rate optimal Chernoff bound on the Bayes error probability. The new bound is not only an upper bound but also a lower bound of Bayes error probability up to a constant factor. Moreover, we will apply this result to community detection in the stochastic block models. As a clustering problem, the optimal misclassification rate of community detection problem can be characterized by our rate optimal Chernoff bound. This can be formalized by deriving a minimax error rate over certain parameter space of stochastic block models, then achieving such an error rate by a feasible algorithm employing multiple steps of EM type updates.




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Generalized bounds for active subspaces

Mario Teixeira Parente, Jonas Wallin, Barbara Wohlmuth.

Source: Electronic Journal of Statistics, Volume 14, Number 1, 917--943.

Abstract:
In this article, we consider scenarios in which traditional estimates for the active subspace method based on probabilistic Poincaré inequalities are not valid due to unbounded Poincaré constants. Consequently, we propose a framework that allows to derive generalized estimates in the sense that it enables to control the trade-off between the size of the Poincaré constant and a weaker order of the final error bound. In particular, we investigate independently exponentially distributed random variables in dimension two or larger and give explicit expressions for corresponding Poincaré constants showing their dependence on the dimension of the problem. Finally, we suggest possibilities for future work that aim for extending the class of distributions applicable to the active subspace method as we regard this as an opportunity to enlarge its usability.




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Lower Bounds for Parallel and Randomized Convex Optimization

We study the question of whether parallelization in the exploration of the feasible set can be used to speed up convex optimization, in the local oracle model of computation and in the high-dimensional regime. We show that the answer is negative for both deterministic and randomized algorithms applied to essentially any of the interesting geometries and nonsmooth, weakly-smooth, or smooth objective functions. In particular, we show that it is not possible to obtain a polylogarithmic (in the sequential complexity of the problem) number of parallel rounds with a polynomial (in the dimension) number of queries per round. In the majority of these settings and when the dimension of the space is polynomial in the inverse target accuracy, our lower bounds match the oracle complexity of sequential convex optimization, up to at most a logarithmic factor in the dimension, which makes them (nearly) tight. Another conceptual contribution of our work is in providing a general and streamlined framework for proving lower bounds in the setting of parallel convex optimization. Prior to our work, lower bounds for parallel convex optimization algorithms were only known in a small fraction of the settings considered in this paper, mainly applying to Euclidean ($ell_2$) and $ell_infty$ spaces.




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Perturbation Bounds for Procrustes, Classical Scaling, and Trilateration, with Applications to Manifold Learning

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.




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Lower Bounds for Testing Graphical Models: Colorings and Antiferromagnetic Ising Models

We study the identity testing problem in the context of spin systems or undirected graphical models, where it takes the following form: given the parameter specification of the model $M$ and a sampling oracle for the distribution $mu_{M^*}$ of an unknown model $M^*$, can we efficiently determine if the two models $M$ and $M^*$ are the same? We consider identity testing for both soft-constraint and hard-constraint systems. In particular, we prove hardness results in two prototypical cases, the Ising model and proper colorings, and explore whether identity testing is any easier than structure learning. For the ferromagnetic (attractive) Ising model, Daskalakis et al. (2018) presented a polynomial-time algorithm for identity testing. We prove hardness results in the antiferromagnetic (repulsive) setting in the same regime of parameters where structure learning is known to require a super-polynomial number of samples. Specifically, for $n$-vertex graphs of maximum degree $d$, we prove that if $|eta| d = omega(log{n})$ (where $eta$ is the inverse temperature parameter), then there is no polynomial running time identity testing algorithm unless $RP=NP$. In the hard-constraint setting, we present hardness results for identity testing for proper colorings. Our results are based on the presumed hardness of #BIS, the problem of (approximately) counting independent sets in bipartite graphs.




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Generalized Nonbacktracking Bounds on the Influence

This paper develops deterministic upper and lower bounds on the influence measure in a network, more precisely, the expected number of nodes that a seed set can influence in the independent cascade model. In particular, our bounds exploit r-nonbacktracking walks and Fortuin-Kasteleyn-Ginibre (FKG) type inequalities, and are computed by message passing algorithms. Further, we provide parameterized versions of the bounds that control the trade-off between efficiency and accuracy. Finally, the tightness of the bounds is illustrated on various network models.




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Branch and Bound for Piecewise Linear Neural Network Verification

The success of Deep Learning and its potential use in many safety-critical applicationshas motivated research on formal verification of Neural Network (NN) models. In thiscontext, verification involves proving or disproving that an NN model satisfies certaininput-output properties. Despite the reputation of learned NN models as black boxes,and the theoretical hardness of proving useful properties about them, researchers havebeen successful in verifying some classes of models by exploiting their piecewise linearstructure and taking insights from formal methods such as Satisifiability Modulo Theory.However, these methods are still far from scaling to realistic neural networks. To facilitateprogress on this crucial area, we exploit the Mixed Integer Linear Programming (MIP) formulation of verification to propose a family of algorithms based on Branch-and-Bound (BaB). We show that our family contains previous verification methods as special cases.With the help of the BaB framework, we make three key contributions. Firstly, we identifynew methods that combine the strengths of multiple existing approaches, accomplishingsignificant performance improvements over previous state of the art. Secondly, we introducean effective branching strategy on ReLU non-linearities. This branching strategy allows usto efficiently and successfully deal with high input dimensional problems with convolutionalnetwork architecture, on which previous methods fail frequently. Finally, we proposecomprehensive test data sets and benchmarks which includes a collection of previouslyreleased testcases. We use the data sets to conduct a thorough experimental comparison ofexisting and new algorithms and to provide an inclusive analysis of the factors impactingthe hardness of verification problems.




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Fast Rates for General Unbounded Loss Functions: From ERM to Generalized Bayes

We present new excess risk bounds for general unbounded loss functions including log loss and squared loss, where the distribution of the losses may be heavy-tailed. The bounds hold for general estimators, but they are optimized when applied to $eta$-generalized Bayesian, MDL, and empirical risk minimization estimators. In the case of log loss, the bounds imply convergence rates for generalized Bayesian inference under misspecification in terms of a generalization of the Hellinger metric as long as the learning rate $eta$ is set correctly. For general loss functions, our bounds rely on two separate conditions: the $v$-GRIP (generalized reversed information projection) conditions, which control the lower tail of the excess loss; and the newly introduced witness condition, which controls the upper tail. The parameter $v$ in the $v$-GRIP conditions determines the achievable rate and is akin to the exponent in the Tsybakov margin condition and the Bernstein condition for bounded losses, which the $v$-GRIP conditions generalize; favorable $v$ in combination with small model complexity leads to $ ilde{O}(1/n)$ rates. The witness condition allows us to connect the excess risk to an 'annealed' version thereof, by which we generalize several previous results connecting Hellinger and Rényi divergence to KL divergence.




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Density for solutions to stochastic differential equations with unbounded drift

Christian Olivera, Ciprian Tudor.

Source: Brazilian Journal of Probability and Statistics, Volume 33, Number 3, 520--531.

Abstract:
Via a special transform and by using the techniques of the Malliavin calculus, we analyze the density of the solution to a stochastic differential equation with unbounded drift.




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Flexible, boundary adapted, nonparametric methods for the estimation of univariate piecewise-smooth functions

Umberto Amato, Anestis Antoniadis, Italia De Feis.

Source: Statistics Surveys, Volume 14, 32--70.

Abstract:
We present and compare some nonparametric estimation methods (wavelet and/or spline-based) designed to recover a one-dimensional piecewise-smooth regression function in both a fixed equidistant or not equidistant design regression model and a random design model. Wavelet methods are known to be very competitive in terms of denoising and compression, due to the simultaneous localization property of a function in time and frequency. However, boundary assumptions, such as periodicity or symmetry, generate bias and artificial wiggles which degrade overall accuracy. Simple methods have been proposed in the literature for reducing the bias at the boundaries. We introduce new ones based on adaptive combinations of two estimators. The underlying idea is to combine a highly accurate method for non-regular functions, e.g., wavelets, with one well behaved at boundaries, e.g., Splines or Local Polynomial. We provide some asymptotic optimal results supporting our approach. All the methods can handle data with a random design. We also sketch some generalization to the multidimensional setting. To study the performance of the proposed approaches we have conducted an extensive set of simulations on synthetic data. An interesting regression analysis of two real data applications using these procedures unambiguously demonstrates their effectiveness.




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Margin-Based Generalization Lower Bounds for Boosted Classifiers. (arXiv:1909.12518v4 [cs.LG] UPDATED)

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.




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Emerging and transboundary animal viruses

9789811504020 (electronic bk.)




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Adaptive risk bounds in univariate total variation denoising and trend filtering

Adityanand Guntuboyina, Donovan Lieu, Sabyasachi Chatterjee, Bodhisattva Sen.

Source: The Annals of Statistics, Volume 48, Number 1, 205--229.

Abstract:
We study trend filtering, a relatively recent method for univariate nonparametric regression. For a given integer $rgeq1$, the $r$th order trend filtering estimator is defined as the minimizer of the sum of squared errors when we constrain (or penalize) the sum of the absolute $r$th order discrete derivatives of the fitted function at the design points. For $r=1$, the estimator reduces to total variation regularization which has received much attention in the statistics and image processing literature. In this paper, we study the performance of the trend filtering estimator for every $rgeq1$, both in the constrained and penalized forms. Our main results show that in the strong sparsity setting when the underlying function is a (discrete) spline with few “knots,” the risk (under the global squared error loss) of the trend filtering estimator (with an appropriate choice of the tuning parameter) achieves the parametric $n^{-1}$-rate, up to a logarithmic (multiplicative) factor. Our results therefore provide support for the use of trend filtering, for every $rgeq1$, in the strong sparsity setting.




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Exact lower bounds for the agnostic probably-approximately-correct (PAC) machine learning model

Aryeh Kontorovich, Iosif Pinelis.

Source: The Annals of Statistics, Volume 47, Number 5, 2822--2854.

Abstract:
We provide an exact nonasymptotic lower bound on the minimax expected excess risk (EER) in the agnostic probably-approximately-correct (PAC) machine learning classification model and identify minimax learning algorithms as certain maximally symmetric and minimally randomized “voting” procedures. Based on this result, an exact asymptotic lower bound on the minimax EER is provided. This bound is of the simple form $c_{infty}/sqrt{ u}$ as $ u oinfty$, where $c_{infty}=0.16997dots$ is a universal constant, $ u=m/d$, $m$ is the size of the training sample and $d$ is the Vapnik–Chervonenkis dimension of the hypothesis class. It is shown that the differences between these asymptotic and nonasymptotic bounds, as well as the differences between these two bounds and the maximum EER of any learning algorithms that minimize the empirical risk, are asymptotically negligible, and all these differences are due to ties in the mentioned “voting” procedures. A few easy to compute nonasymptotic lower bounds on the minimax EER are also obtained, which are shown to be close to the exact asymptotic lower bound $c_{infty}/sqrt{ u}$ even for rather small values of the ratio $ u=m/d$. As an application of these results, we substantially improve existing lower bounds on the tail probability of the excess risk. Among the tools used are Bayes estimation and apparently new identities and inequalities for binomial distributions.




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Convergence and concentration of empirical measures under Wasserstein distance in unbounded functional spaces

Jing Lei.

Source: Bernoulli, Volume 26, Number 1, 767--798.

Abstract:
We provide upper bounds of the expected Wasserstein distance between a probability measure and its empirical version, generalizing recent results for finite dimensional Euclidean spaces and bounded functional spaces. Such a generalization can cover Euclidean spaces with large dimensionality, with the optimal dependence on the dimensionality. Our method also covers the important case of Gaussian processes in separable Hilbert spaces, with rate-optimal upper bounds for functional data distributions whose coordinates decay geometrically or polynomially. Moreover, our bounds of the expected value can be combined with mean-concentration results to yield improved exponential tail probability bounds for the Wasserstein error of empirical measures under Bernstein-type or log Sobolev-type conditions.




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Normal approximation for sums of weighted $U$-statistics – application to Kolmogorov bounds in random subgraph counting

Nicolas Privault, Grzegorz Serafin.

Source: Bernoulli, Volume 26, Number 1, 587--615.

Abstract:
We derive normal approximation bounds in the Kolmogorov distance for sums of discrete multiple integrals and weighted $U$-statistics made of independent Bernoulli random variables. Such bounds are applied to normal approximation for the renormalized subgraph counts in the Erdős–Rényi random graph. This approach completely solves a long-standing conjecture in the general setting of arbitrary graph counting, while recovering recent results obtained for triangles and improving other bounds in the Wasserstein distance.




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Coding of Navigational Distance and Functional Constraint of Boundaries in the Human Scene-Selective Cortex

For visually guided navigation, the use of environmental cues is essential. Particularly, detecting local boundaries that impose limits to locomotion and estimating their location is crucial. In a series of three fMRI experiments, we investigated whether there is a neural coding of navigational distance in the human visual cortex (both female and male). We used virtual reality software to systematically manipulate the distance from a viewer perspective to different types of a boundary. Using a multivoxel pattern classification employing a linear support vector machine, we found that the occipital place area (OPA) is sensitive to the navigational distance restricted by the transparent glass wall. Further, the OPA was sensitive to a non-crossable boundary only, suggesting an importance of the functional constraint of a boundary. Together, we propose the OPA as a perceptual source of external environmental features relevant for navigation.

SIGNIFICANCE STATEMENT One of major goals in cognitive neuroscience has been to understand the nature of visual scene representation in human ventral visual cortex. An aspect of scene perception that has been overlooked despite its ecological importance is the analysis of space for navigation. One of critical computation necessary for navigation is coding of distance to environmental boundaries that impose limit on navigator's movements. This paper reports the first empirical evidence for coding of navigational distance in the human visual cortex and its striking sensitivity to functional constraint of environmental boundaries. Such finding links the paper to previous neurological and behavioral works that emphasized the distance to boundaries as a crucial geometric property for reorientation behavior of children and other animal species.




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Quinoa breaches the boundaries of outer space

It’s been around for thousands of years; the UN General Assembly named an international year for it in 2013; and now it has been sent into space. Quinoa is a superfood in more ways than one. It is a good source of protein, the highest of all the whole grains; and its edible seeds provide all of the essential amino acids the body [...]




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Let These Photos Take You on a Peaceful Paddle in Minnesota's Boundary Waters

Venturing into the wilderness for often weeks at a time, nature photographer Dawn LaPointe is used to social distancing




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The urban boundary debate is vitally important, so should it happen online?

The upcoming debate about whether to expand the urban boundary is one of the city's big issues this term. But instead of delaying it, the city's testing out a never-before-attempted democratic process. Should they?



  • News/Canada/Ottawa

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CONCACAF qualifying for men's World Cup bound for change due to pandemic

CONCACAF president Victor Montagliani says the global pandemic will result in a change in World Cup qualifying for the region that covers North and Central America and the Caribbean.




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Fin24.com | Overseas lotteries out of bounds

Consumers who buy European lottery tickets with their credit cards are in contravention of foreign exchange regulations and may be liable to steep levies.




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Lead Poisoning in United States-Bound Refugee Children: Thailand-Burma Border, 2009

Refugee children arriving in the United States have had higher rates of elevated blood lead levels than US-born children. The Centers for Disease Control and Prevention recommends blood lead screening of all refugee children within 3 months after their arrival in the United States.

This is the first investigation we are aware of to examine and identify risk factors for lead poisoning among US-bound refugee children living in camps overseas, before their arrival in the United States. (Read the full article)




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Adiposity Rebound and the Development of Metabolic Syndrome

Early adiposity rebound is associated with future obesity and an increased risk of development of type 2 diabetes and coronary heart disease in adult life.

This study shows that early adiposity rebound is associated with future obesity and metabolic consequences of higher triglycerides, atherogenic index, apolipoprotein B, and blood pressure and lower high-density lipoprotein cholesterol at 12 years of age. (Read the full article)




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Timing of Adiposity Rebound and Adiposity in Adolescence

Earlier adiposity rebound may increase fatness in later life; however, there is limited evidence from large cohorts of contemporary children with direct measures of fatness in adolescence or adulthood.

Early adiposity rebound is strongly associated with increased BMI and fatness in adolescence. Future preventive interventions should consider targeting early childhood to delay timing of adiposity rebound. (Read the full article)




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Bound to superstition

A recent poll shows "rationalistic" French society still highly bound to superstition.




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Boundless! A Musical Journey

Boundless a musical journey, takes the audience on the trek and combines the recollected stories of Delawareans with disabilities and the sometimes-difficult history of our Nation’s struggle to ensure dignity and justice for all. Theater allows patrons to ponder and celebrate the intricacies of our shared humanity through campfire stories of hardship, resilience and celebration. […]



  • Delaware Division of the Arts
  • Delaware Tourism Office
  • Department of Education
  • News

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Pakistan Players Push Back Boundaries With Zoom Cricket

Shan Masood was video-chatting with teammates when they grabbed their cricket gear and pretended to play a match.




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Andhra Pradesh and Madras (Alteration of Boundaries) Act 1959

Andhra Pradesh and Madras (Alteration of Boundaries) Act 1959




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Secretary Scuse announces appointment of Short, Bounds as deputy secretaries of agriculture

Delaware Secretary of Agriculture Michael T. Scuse today announced the appointment of Austin Short and Kenny Bounds as deputy secretaries of agriculture.



  • Department of Agriculture

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TRAFFIC ALERT - Median Barrier Replacement Will Require the Closure of Left Lane on US 13 Southbound -- Route 71

Bear --

Location: US 13 Southbound, at Route 71/Red Lion Road, Bear.

Dates and Times: 8:00 p.m. until 4:00 p.m. Sunday through Friday. [More]




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TRAFFIC ALERT - Pavement & Rehabilitation Project to Begin on Route 1 Northbound/Southbound with Daytime Lane Closures

Smyrna/Odessa --

Locations: Route 1 Northbound between Exit 119/North Smyrna Interchange to Exit 136/Odessa

Route 1 Southbound between Exit 136/Odessa and Exit 119/North Smyrna Interchange

Times & Dates: 7:00 a.m. until 7:00 p.m., Monday through Friday, pending weather.

Thursday, March 26, 2020 until mid-May 2020, pending weather.

Traffic Information: DelDOT announces to motorists that Route 1 northbound/Route 1 southbound between Exit 119 and Exit 136 will have daytime lane closures for the removal of recessed reflectors and concrete repairs. [More]




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TRAFFIC ALERT - Lane Closures on I-495 Southbound at Edgemoor -- Bridge Deck Repairs

Wilmington --

The Delaware Department of Transportation (DelDOT) announces to motorists that the left and center lanes will be closed today until 6 p.m. on I-495 southbound for bridge deck repairs. Motorists can anticipate delays in this area.

Transportation Management Center

DelDOT's Transportation Management Center (TMC) and WTMC 1380 AM provides motorists real-time traffic conditions throughout the state. [More]




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TRAFFIC ALERT - Daytime Lane Closure on Route 1 Northbound for Overhead Message Board Maintenance -- Dover

Dover --

Location: Route 1 Northbound between Barkers Landing Road and Route 9, Dover.

Times & Dates: 9:00 a.m. until 1:00 p.m., Thursday, April 16, 2020, pending weather.

Traffic Information: DelDOT announces to motorists that the right lane and shoulder will be closed on Route 1 northbound for maintenance of the overhead message board on Route 1. [More]




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TRAFFIC ALERT - UPDATED: Bridge Deck Repairs Will Require the Closure of Milford's US 113 Northbound Overpass

Milford --

The Department of Transportation's (DelDOT) contractor Eastern Highway Specialists will be closing the US 113 Northbound Overpass in Milford between Frontage Road and Route 1 northbound to repair the bridge deck.

The closure will begin at 9:00 a.m. on Monday, April 20, 2020. The overpass will reopen by 5:00 a.m. on Thursday, April 23, 2020. [More]




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TRAFFIC ALERT - Closure of Road A Eastbound (Bridge over Route 1) for Roadway Repairs

Christiana --

For the safety of motorists, DelDOT has CLOSED Road A Eastbound (Bridge over Route 1, near the Christiana Mall) to repair the roadway that was damaged due to heavy rains. The closure is NOW until 5:00 p.m. on May 15, 2020, pending weather.

Detour Routes:

Motorists traveling on Road A Eastbound will be detoured to Route 1 Southbound to the Route 273 Exit (Exit 162). [More]




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TRAFFIC ALERT - Reconstruction of Roadway Will Require the Closure of Airport Road Eastbound

Newport --

Location: Airport Road Eastbound between I-95 Southbound and Route 141/Basin Road Southbound, Newport.

Times and Dates: 7:00 a.m. on Saturday, May 16, 2020 until 11:45 p.m. on Monday, June 29, 2020, pending weather.

Traffic Information: As part of the on-going Route 141 Improvements, I-95 Interchange to Jay Drive Project, DelDOT announces to motorists that Airport Road eastbound will be closed for reconstruction. [More]




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China will work ‘to prevent rebound of coronavirus outbreak’ amid pressure from imported cases


Read Full Article at RT.com




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Stocks fall as US/China tensions threaten rebound

European stock markets and oil prices fell Monday as a spat between top U.S. officials and China over the origin of the coronavirus fueled fears of a new trade war, derailing a rebound in global markets.




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Get schematic to layout bound stdcells for array

I can get the bound stdcells using bndGetBoundObjects, but not get what each individual stdcell corresponds in layout.

Is there a way to get the layout bound stdcells of an array schematic symbol if the layout stdcell name do or do not match the symbol naming?

Once the schematic array stdcells are bound to the layout stdcells, how to get the correct terminal term~>name and net~>name?

Example of a schematic symbol and layout stdcell:

Schematic

INV<0:2>    instTerms~>terms~>name = ("vss" "vdd" "A" "Y")

                   instTerms~>net~>name = ("<*3>vss" "<*3>vdd" "in<0:2>" "nand2A,nand3B,nor2B")

Layout ( I know it is bad practice, but it happens )

stdcell1 instTerms~>terms~>name = ("vss" "vdd" "A" "Y")

             instTerms~>net~>name = ("vss" "vdd" "in<0>" "nand2A")

I23        instTerms~>terms~>name = ("vss" "vdd" "A" "Y")

             instTerms~>net~>name = ("vss" "vdd" "in<1>" "nand3B")

INV(2) instTerms~>terms~>name = ("vss" "vdd" "A" "Y")

             instTerms~>net~>name = ("vss" "vdd" "in<2>" "nor2B")

Paul




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E- (SPMHDB-187): SHAPE boundary may not cross itself.

Hi experts,

I have a problem with my design as below

ERROR: in SHAPE (-2.3622 2.3622)

  class = ETCH
  subclass = TOP 
  Part of Symbol Def SHAPE_4725X4725.
      Which is part of a padstack as a SHAPE symbol.
  ERROR(SPMHDB-187): SHAPE boundary may not cross itself.
   Error cannot be fixed.
       Object has first point location at (-2.3622 2.3622).

Can you tell me how to solve my problem?

Thanks a lot.




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Skill code to Calculating PCB Real-estate usage using placement boundaries and package keep ins

Other tools allow a sanity check of placement density vs available board space.  There is an older post "Skill code to evaluate all components area (Accumulative Place bound area)"  (9 years ago) that has a couple of examples that no longer work or expired.

This would be useful to provide feedback to schismatic and project managers regarding the component density on the PCB and how it will affect the routing abilities.  Thermal considerations can be evaluated as well 

Has anyone attempted this or still being done externally in spread sheets?




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macOS/iOS ImageIO PVR Processing Out-Of-Bounds Read

macOS and iOS suffer from an ImageIO out-of-bounds read when processing PVR images.




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macOS/iOS IOAccelCommandQueue2::processSegmentKernelCommand() Out-Of-Bounds Timestamp Write

macOS and iOS suffers from an out-of-bounds timestamp write in IOAccelCommandQueue2::processSegmentKernelCommand().




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iOS / macOS AWDL Heap Corruption / Bounds Checking

A remote iOS / macOS heap corruption issue exists due to insufficient bounds checking in AWDL.




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OpenSMTPD Out-Of-Bounds Read

Qualys discovered a vulnerability in OpenSMTPD, OpenBSD's mail server. This vulnerability, an out-of-bounds read introduced in December 2015, is exploitable remotely and leads to the execution of arbitrary shell commands.




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Lagos sees rebound in FDI

The number of foreign companies investing in Lagos increased in 2018 after four years of decline.




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No-Debt Fanuc At A Multi-Year Low And Will Rebound When Economy Rebounds