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The Indo-Pacific: Geostrategic Outlook to 2024 - Workshop 4

Invitation Only Research Event

26 November 2019 - 9:30am to 12:00pm

Gateway House, Stevens Street, Colaba

This closed-door roundtable explores possible strategic shifts in the Indo-Pacific between now and 2024.

Focusing on trade security, climate change disruptions and security cooperation, it aims to enhance the understanding of the regional goals of, and strategic relationships between, the key countries active in the region.

The workshop is part of a larger project funded by the Strategic Policy Division of the Australian Department of Defence.

The project includes workshops in the United States, the United Kingdom, France, Japan, India and the Pacific Islands (Tonga).

Anna Aberg

Research Analyst, Energy, Environment and Resources Programme
020 7314 3629




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Iran Workshop Series: Domestic, Regional and International Outlook

Invitation Only Research Event

17 December 2019 - 10:00am to 3:30pm

Chatham House | 10 St James's Square | London | SW1Y 4LE

After a summer of regional tensions and continued uncertainty regarding the future of the JCPOA, the Chatham House MENA Programme held a closed workshop to examine the impact of the Trump administration’s maximum pressure campaign.

Discussions focused on the domestic developments and challenges inside Iran, prospects for new negotiations with Iran, and the regional issues facing the country. Participants also considered the differences between American and European approaches towards Iran.

 

Event attributes

Chatham House Rule

Reni Zhelyazkova

Programme Coordinator, Middle East and North Africa Programme
+44 (0)20 7314 3624




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The Indo-Pacific: Geostrategic Perspectives to 2024 - Workshop 3

Invitation Only Research Event

17 October 2019 - 9:30am to 2:00pm

Institut Francais des Relations Internationales, 27 rue de la Procession, 75740 Paris Cedex 15, France

This closed-door roundtable explores possible strategic shifts in the Indo-Pacific between now and 2024. Focusing on trade security, climate change disruptions and security cooperation, it aims to enhance the understanding of the regional goals of, and strategic relationships between, the key countries active in the region.

The workshop is part of a larger project funded by the Strategic Policy Division of the Australian Department of Defence. The project includes workshops in the United States, the United Kingdom, France, Japan, India and the Pacific Islands (Tonga).

Attendance at this event is by invitation only.

Anna Aberg

Research Analyst, Energy, Environment and Resources Programme
020 7314 3629




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Making the Business Case for Nutrition Workshop

Invitation Only Research Event

28 January 2020 - 9:30am to 5:00pm

Chatham House | 10 St James's Square | London | SW1Y 4LE

A ground-breaking research project from Chatham House, supported by The Power of Nutrition, is exploring the business case for tackling undernutrition, micronutrient deficiencies and overnutrition. Companies across all sectors hold huge, transformative power to save countless lives and transform their own financial prospects. To act, they need more compelling evidence of the potential for targeted investments and strategies to promote better nutrition and create healthier, more productive workforces and consumers.

At this workshop, Chatham House will engage business decision-makers in a scenario exercise that explores different nutrition futures and their commercial prospects in each before examining what different strategies business can pursue to maximize future profitability through investments in nutrition.

Attendance at this event is by invitation only.




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The Indo-Pacific: Geostrategic Outlook to 2024 - Workshop 4

Invitation Only Research Event

26 November 2019 - 9:30am to 12:00pm

Gateway House, Stevens Street, Colaba

This closed-door roundtable explores possible strategic shifts in the Indo-Pacific between now and 2024.

Focusing on trade security, climate change disruptions and security cooperation, it aims to enhance the understanding of the regional goals of, and strategic relationships between, the key countries active in the region.

The workshop is part of a larger project funded by the Strategic Policy Division of the Australian Department of Defence.

The project includes workshops in the United States, the United Kingdom, France, Japan, India and the Pacific Islands (Tonga).

Anna Aberg

Research Analyst, Energy, Environment and Resources Programme
020 7314 3629




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The Indo-Pacific: Geostrategic Outlook From Now to 2024 - Workshop 5

Invitation Only Research Event

18 February 2020 - 12:00pm to 4:30pm

Langafonua Centre

This roundtable explores possible strategic shifts in the Indo-Pacific between now and 2024. Focusing on trade security, climate change disruptions and security cooperation, it aims to enhance the understanding of the regional goals of, and strategic relationships between, the key countries active in the region.

The workshop is part of a larger project funded by the Strategic Policy Division of the Australian Department of Defence. The project includes workshops in the United States, the United Kingdom, France, Japan, India and the Pacific Islands (Tonga).
 

Anna Aberg

Research Analyst, Energy, Environment and Resources Programme
020 7314 3629




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Balancing Acts: Policy Frameworks for Migrant Return and Reintegration

In recent years, questions of whether, when, and how to return failed asylum seekers and other migrants to their origin countries have dominated migration debates in many countries. These issues were also taken up in the negotiation of the Global Compact for Safe, Orderly, and Regular Migration, moving the discussion beyond the typical bilateral one. This policy brief outlines how states might more constructively work together on returns and reintegration programs.




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Firing Up Regional Brain Networks: The Promise of Brain Circulation in the ASEAN Economic Community

Given diverging demographics, rising educational attainment and wide variation in economic opportunities, countries in the Association of Southeast Asian Nations are poised to see an expansion of both the demand for and supply of skilled migrants willing and able to move. The convergence of these megatrends represents unique opportunities for human-capital development and brain circulation, as this report explores.




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Glucose, Advanced Glycation End Products, and Diabetes Complications: What Is New and What Works

Melpomeni Peppa
Oct 1, 2003; 21:
Council's Voice




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Police, public works employees rescue deer from soccer net

Police and public works employees in Wisconsin came to the rescue of a deer that found itself struggling to escape a soccer net.




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AADEJ to host dental editing workshop in Anaheim

Anaheim, Calif. — The American Association of Dental Editors & Journalists is hosting Dental Editors University West May 14-15 at the Anaheim Hilton in Anaheim, California.




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Shifting Gears, Trump Administration Launches High-Profile Worksite Enforcement Operations

An unannounced sweep of 98 convenience stores by U.S. immigration authorities—resulting in the arrest of 21 unauthorized workers—may signal a new approach to worksite enforcement under the Trump administration, moving away from a strategy of paper-based audits that resulted in higher employer fines and fewer worker arrests. This article explores worksite enforcement over recent decades.




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Explainer: How the U.S. Legal Immigration System Works

Through which visa categories can immigrants move temporarily or permanently to the United States? What are the main channels by which people come, and who can sponsor them for a green card? Are there limits on visa categories? And who is waiting in the green-card backlog? This explainer answers basic questions about temporary and permanent immigration via family, employment, humanitarian, and other channels.




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Here’s how Washington State’s nudge for state park donations works via its web site

A couple years ago, Washington State switched the default rule on state park fees that drivers pay (or don’t pay) when they renew their licenses. Reader Steve Loeb nicely captures what this switch looks like on the Washington State Department of Licensing site.




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What happens when a Silicon Valley technologist works for the government | Matt Cutts

What if the government ran more like Silicon Valley? Engineer Matt Cutts shares why he decided to leave Google (where he worked for nearly 17 years) for a career in the US government -- and makes the case that if you really want to make an impact, go where your help is needed most.




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Memory wise : how memory works and what to do when it doesn't / Dr Anne Unkenstein.

Memory.




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Wiley Major Reference Works




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Directions for preparing aerated medicinal waters, by means of the improved glass machines made at Leith Glass-Works.

Edinburgh : printed for William Creech, 1787.




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Edinburgh and District Water Bill. St. Mary's Loch scheme. Speeches of Bailie Lewis, convener of works committee, Edinburgh and District Water Trust, at the meetings of town council, on 30th May and 1st June, 1871.

[Edinburgh] : [publisher not identified], [1871]




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Electrical-psychology, or, The electrical philosophy of mental impressions, including a new philosophy of sleep and of consciousness / from the works of J.B. Dods and J.S. Grimes ; revised and edited by H.G. Darling.

London : John J. Griffin, 1851.




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The works of that famous chirurgeon Ambrose Parey / translated out of Latin ; and compared with the French, by Th. Johnson ; together with three tractates concerning the veins, arteries, and nerves: exemplified with large anatomical figures. Translated

London : Printed by Mary Clark, and are to be sold by John Clark, at Mercers Chappel at the Lower End of Cheapside, MDCLXXVIII. [1678]




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Universal Latent Space Model Fitting for Large Networks with Edge Covariates

Latent space models are effective tools for statistical modeling and visualization of network data. Due to their close connection to generalized linear models, it is also natural to incorporate covariate information in them. The current paper presents two universal fitting algorithms for networks with edge covariates: one based on nuclear norm penalization and the other based on projected gradient descent. Both algorithms are motivated by maximizing the likelihood function for an existing class of inner-product models, and we establish their statistical rates of convergence for these models. In addition, the theory informs us that both methods work simultaneously for a wide range of different latent space models that allow latent positions to affect edge formation in flexible ways, such as distance models. Furthermore, the effectiveness of the methods is demonstrated on a number of real world network data sets for different statistical tasks, including community detection with and without edge covariates, and network assisted learning.




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Target Propagation in Recurrent Neural Networks

Recurrent Neural Networks have been widely used to process sequence data, but have long been criticized for their biological implausibility and training difficulties related to vanishing and exploding gradients. This paper presents a novel algorithm for training recurrent networks, target propagation through time (TPTT), that outperforms standard backpropagation through time (BPTT) on four out of the five problems used for testing. The proposed algorithm is initially tested and compared to BPTT on four synthetic time lag tasks, and its performance is also measured using the sequential MNIST data set. In addition, as TPTT uses target propagation, it allows for discrete nonlinearities and could potentially mitigate the credit assignment problem in more complex recurrent architectures.




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Learning Causal Networks via Additive Faithfulness

In this paper we introduce a statistical model, called additively faithful directed acyclic graph (AFDAG), for causal learning from observational data. Our approach is based on additive conditional independence (ACI), a recently proposed three-way statistical relation that shares many similarities with conditional independence but without resorting to multi-dimensional kernels. This distinct feature strikes a balance between a parametric model and a fully nonparametric model, which makes the proposed model attractive for handling large networks. We develop an estimator for AFDAG based on a linear operator that characterizes ACI, and establish the consistency and convergence rates of this estimator, as well as the uniform consistency of the estimated DAG. Moreover, we introduce a modified PC-algorithm to implement the estimating procedure efficiently, so that its complexity is determined by the level of sparseness rather than the dimension of the network. Through simulation studies we show that our method outperforms existing methods when commonly assumed conditions such as Gaussian or Gaussian copula distributions do not hold. Finally, the usefulness of AFDAG formulation is demonstrated through an application to a proteomics data set.




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Analyzing complex functional brain networks: Fusing statistics and network science to understand the brain

Sean L. Simpson, F. DuBois Bowman, Paul J. Laurienti

Source: Statist. Surv., Volume 7, 1--36.

Abstract:
Complex functional brain network analyses have exploded over the last decade, gaining traction due to their profound clinical implications. The application of network science (an interdisciplinary offshoot of graph theory) has facilitated these analyses and enabled examining the brain as an integrated system that produces complex behaviors. While the field of statistics has been integral in advancing activation analyses and some connectivity analyses in functional neuroimaging research, it has yet to play a commensurate role in complex network analyses. Fusing novel statistical methods with network-based functional neuroimage analysis will engender powerful analytical tools that will aid in our understanding of normal brain function as well as alterations due to various brain disorders. Here we survey widely used statistical and network science tools for analyzing fMRI network data and discuss the challenges faced in filling some of the remaining methodological gaps. When applied and interpreted correctly, the fusion of network scientific and statistical methods has a chance to revolutionize the understanding of brain function.




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Capturing and Explaining Trajectory Singularities using Composite Signal Neural Networks. (arXiv:2003.10810v2 [cs.LG] UPDATED)

Spatial trajectories are ubiquitous and complex signals. Their analysis is crucial in many research fields, from urban planning to neuroscience. Several approaches have been proposed to cluster trajectories. They rely on hand-crafted features, which struggle to capture the spatio-temporal complexity of the signal, or on Artificial Neural Networks (ANNs) which can be more efficient but less interpretable. In this paper we present a novel ANN architecture designed to capture the spatio-temporal patterns characteristic of a set of trajectories, while taking into account the demographics of the navigators. Hence, our model extracts markers linked to both behaviour and demographics. We propose a composite signal analyser (CompSNN) combining three simple ANN modules. Each of these modules uses different signal representations of the trajectory while remaining interpretable. Our CompSNN performs significantly better than its modules taken in isolation and allows to visualise which parts of the signal were most useful to discriminate the trajectories.




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Differentiable Sparsification for Deep Neural Networks. (arXiv:1910.03201v2 [cs.LG] UPDATED)

A deep neural network has relieved the burden of feature engineering by human experts, but comparable efforts are instead required to determine an effective architecture. On the other hands, as the size of a network has over-grown, a lot of resources are also invested to reduce its size. These problems can be addressed by sparsification of an over-complete model, which removes redundant parameters or connections by pruning them away after training or encouraging them to become zero during training. In general, however, these approaches are not fully differentiable and interrupt an end-to-end training process with the stochastic gradient descent in that they require either a parameter selection or a soft-thresholding step. In this paper, we propose a fully differentiable sparsification method for deep neural networks, which allows parameters to be exactly zero during training, and thus can learn the sparsified structure and the weights of networks simultaneously using the stochastic gradient descent. We apply the proposed method to various popular models in order to show its effectiveness.




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FNNC: Achieving Fairness through Neural Networks. (arXiv:1811.00247v3 [cs.LG] UPDATED)

In classification models fairness can be ensured by solving a constrained optimization problem. We focus on fairness constraints like Disparate Impact, Demographic Parity, and Equalized Odds, which are non-decomposable and non-convex. Researchers define convex surrogates of the constraints and then apply convex optimization frameworks to obtain fair classifiers. Surrogates serve only as an upper bound to the actual constraints, and convexifying fairness constraints might be challenging.

We propose a neural network-based framework, emph{FNNC}, to achieve fairness while maintaining high accuracy in classification. The above fairness constraints are included in the loss using Lagrangian multipliers. We prove bounds on generalization errors for the constrained losses which asymptotically go to zero. The network is optimized using two-step mini-batch stochastic gradient descent. Our experiments show that FNNC performs as good as the state of the art, if not better. The experimental evidence supplements our theoretical guarantees. In summary, we have an automated solution to achieve fairness in classification, which is easily extendable to many fairness constraints.




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Model Reduction and Neural Networks for Parametric PDEs. (arXiv:2005.03180v1 [math.NA])

We develop a general framework for data-driven approximation of input-output maps between infinite-dimensional spaces. The proposed approach is motivated by the recent successes of neural networks and deep learning, in combination with ideas from model reduction. This combination results in a neural network approximation which, in principle, is defined on infinite-dimensional spaces and, in practice, is robust to the dimension of finite-dimensional approximations of these spaces required for computation. For a class of input-output maps, and suitably chosen probability measures on the inputs, we prove convergence of the proposed approximation methodology. Numerically we demonstrate the effectiveness of the method on a class of parametric elliptic PDE problems, showing convergence and robustness of the approximation scheme with respect to the size of the discretization, and compare our method with existing algorithms from the literature.




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Close encounters: a manuscripts workshop

A free manuscripts workshop for PhD students at Wellcome Collection, 01 June 2018 Engaging with an artefact from the past is often a powerful experience, eliciting emotional and sensory, as well as analytical, responses. Researchers in the library at Wellcome… Continue reading




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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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Radiomics and radiogenomics in neuro-oncology : First International Workshop, RNO-AI 2019, held in conjunction with MICCAI 2019, Shenzhen, China, October 13, proceedings

Radiomics and Radiogenomics in Neuro-oncology using AI Workshop (1st : 2019 : Shenzhen Shi, China)
9783030401245




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QoS routing algorithms for wireless sensor networks

Venugopal, K. R., Dr., author
9789811527203 (electronic bk.)




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Computer security : ESORICS 2019 International Workshops, IOSec, MSTEC, and FINSEC, Luxembourg City, Luxembourg, September 26-27, 2019, Revised Selected Papers

European Symposium on Research in Computer Security (24th : 2019 : Luxembourg, Luxembourg)
9783030420512 (electronic bk.)




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Suntuity AirWorks Offering FREE Assistance in Drone Acquisition...

The drones and programs will be fully paid for by the DOJ as part of the $850 million funding that has been allocated to help public safety departments fight the spread of COVID-19. This includes...

(PRWeb April 30, 2020)

Read the full story at https://www.prweb.com/releases/suntuity_airworks_offering_free_assistance_in_drone_acquisition_through_850mm_federal_grant_assistance_program_for_public_safety_agencies/prweb17090555.htm




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Averages of unlabeled networks: Geometric characterization and asymptotic behavior

Eric D. Kolaczyk, Lizhen Lin, Steven Rosenberg, Jackson Walters, Jie Xu.

Source: The Annals of Statistics, Volume 48, Number 1, 514--538.

Abstract:
It is becoming increasingly common to see large collections of network data objects, that is, data sets in which a network is viewed as a fundamental unit of observation. As a result, there is a pressing need to develop network-based analogues of even many of the most basic tools already standard for scalar and vector data. In this paper, our focus is on averages of unlabeled, undirected networks with edge weights. Specifically, we (i) characterize a certain notion of the space of all such networks, (ii) describe key topological and geometric properties of this space relevant to doing probability and statistics thereupon, and (iii) use these properties to establish the asymptotic behavior of a generalized notion of an empirical mean under sampling from a distribution supported on this space. Our results rely on a combination of tools from geometry, probability theory and statistical shape analysis. In particular, the lack of vertex labeling necessitates working with a quotient space modding out permutations of labels. This results in a nontrivial geometry for the space of unlabeled networks, which in turn is found to have important implications on the types of probabilistic and statistical results that may be obtained and the techniques needed to obtain them.




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Spectral and matrix factorization methods for consistent community detection in multi-layer networks

Subhadeep Paul, Yuguo Chen.

Source: The Annals of Statistics, Volume 48, Number 1, 230--250.

Abstract:
We consider the problem of estimating a consensus community structure by combining information from multiple layers of a multi-layer network using methods based on the spectral clustering or a low-rank matrix factorization. As a general theme, these “intermediate fusion” methods involve obtaining a low column rank matrix by optimizing an objective function and then using the columns of the matrix for clustering. However, the theoretical properties of these methods remain largely unexplored. In the absence of statistical guarantees on the objective functions, it is difficult to determine if the algorithms optimizing the objectives will return good community structures. We investigate the consistency properties of the global optimizer of some of these objective functions under the multi-layer stochastic blockmodel. For this purpose, we derive several new asymptotic results showing consistency of the intermediate fusion techniques along with the spectral clustering of mean adjacency matrix under a high dimensional setup, where the number of nodes, the number of layers and the number of communities of the multi-layer graph grow. Our numerical study shows that the intermediate fusion techniques outperform late fusion methods, namely spectral clustering on aggregate spectral kernel and module allegiance matrix in sparse networks, while they outperform the spectral clustering of mean adjacency matrix in multi-layer networks that contain layers with both homophilic and heterophilic communities.




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A general theory for preferential sampling in environmental networks

Joe Watson, James V. Zidek, Gavin Shaddick.

Source: The Annals of Applied Statistics, Volume 13, Number 4, 2662--2700.

Abstract:
This paper presents a general model framework for detecting the preferential sampling of environmental monitors recording an environmental process across space and/or time. This is achieved by considering the joint distribution of an environmental process with a site-selection process that considers where and when sites are placed to measure the process. The environmental process may be spatial, temporal or spatio-temporal in nature. By sharing random effects between the two processes, the joint model is able to establish whether site placement was stochastically dependent of the environmental process under study. Furthermore, if stochastic dependence is identified between the two processes, then inferences about the probability distribution of the spatio-temporal process will change, as will predictions made of the process across space and time. The embedding into a spatio-temporal framework also allows for the modelling of the dynamic site-selection process itself. Real-world factors affecting both the size and location of the network can be easily modelled and quantified. Depending upon the choice of the population of locations considered for selection across space and time under the site-selection process, different insights about the precise nature of preferential sampling can be obtained. The general framework developed in the paper is designed to be easily and quickly fit using the R-INLA package. We apply this framework to a case study involving particulate air pollution over the UK where a major reduction in the size of a monitoring network through time occurred. It is demonstrated that a significant response-biased reduction in the air quality monitoring network occurred, namely the relocation of monitoring sites to locations with the highest pollution levels, and the routine removal of sites at locations with the lowest. We also show that the network was consistently unrepresenting levels of particulate matter seen across much of GB throughout the operating life of the network. Finally we show that this may have led to a severe overreporting of the population-average exposure levels experienced across GB. This could have great impacts on estimates of the health effects of black smoke levels.




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On Bayesian new edge prediction and anomaly detection in computer networks

Silvia Metelli, Nicholas Heard.

Source: The Annals of Applied Statistics, Volume 13, Number 4, 2586--2610.

Abstract:
Monitoring computer network traffic for anomalous behaviour presents an important security challenge. Arrivals of new edges in a network graph represent connections between a client and server pair not previously observed, and in rare cases these might suggest the presence of intruders or malicious implants. We propose a Bayesian model and anomaly detection method for simultaneously characterising existing network structure and modelling likely new edge formation. The method is demonstrated on real computer network authentication data and successfully identifies some machines which are known to be compromised.




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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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Dissociable Intrinsic Connectivity Networks for Salience Processing and Executive Control

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




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Seventeen people participate in SHI's moccasin workshop




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Thieves Steal Three Precious Artworks From Oxford Gallery

Together, the paintings—including one by Anthony van Dyck—could be worth around £10 million if sold on the open market




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This Museum Is Asking People to Remake Famous Artworks With Household Items

The Getty Museum hopes its social media challenge will spark inspiration amid the COVID-19 pandemic




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Celebrate Mother's Day With These Artworks From the Smithsonian Collections

These paintings, sculptures and illustrations honor the bonds of motherhood




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Workshop on Access Control & Identity Management

The National Computer Board conducted a workshop on Access Control & Identity Management on the 30th June 2015 at the Conference Hall, Cyber Tower 1, Ebène. The workshop was targeted towards IT Professionals, System Administrators, Network & Database Administrators and IT Security Professionals. The aim of the workshop was to bring together international and local IT Security Professionals to share their knowledge and experiences around the recent developments in the area of Access Control and Identity Management. On this occasion, an exposition was also organised to showcase the latest security products available in the market.
 




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Workshop on Internet Safety for kids with special needs

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 organised a half day workshop with the title “Internet Safety for kids with special needs” on Wednesday, 19th February 2020 at Quartier Militaire State Secondary School (Girls). The workshop was organized in collaboration with the Ministry of Education and Human Resources, Tertiary Education and Scientific Research. The objective of the workshop was to showcase existing online dangers and, at the same time, promote the responsible use of the Internet amongst kids with special needs. A presentation was delivered by the Computer Emergency Response Team of Mauritius with focus on the responsible use of the internet and underlying dangers such as Online Predators, Sexting, Sextortion and Cyberbullying. Some 20 Special Education Needs (SEN)  schools were present.




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Foxg1 gene works like a molecular knob to control neocortical activity

It works like a very fine "molecular knob" able to modulate the electrical activity of the neurons of our cerebral cortex, crucial to the functioning of our brain.




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Canadian Duvernay-Tardif reworks contract to give NFL's Chiefs cap space

Laurent Duvernay-Tardif and the Kansas City Chiefs have agreed to a restructured deal for the Canadian offensive lineman.



  • Sports/Football/NFL