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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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Active Learning with Multiple Kernels. (arXiv:2005.03188v1 [cs.LG])

Online multiple kernel learning (OMKL) has provided an attractive performance in nonlinear function learning tasks. Leveraging a random feature approximation, the major drawback of OMKL, known as the curse of dimensionality, has been recently alleviated. In this paper, we introduce a new research problem, termed (stream-based) active multiple kernel learning (AMKL), in which a learner is allowed to label selected data from an oracle according to a selection criterion. This is necessary in many real-world applications as acquiring true labels is costly or time-consuming. We prove that AMKL achieves an optimal sublinear regret, implying that the proposed selection criterion indeed avoids unuseful label-requests. Furthermore, we propose AMKL with an adaptive kernel selection (AMKL-AKS) in which irrelevant kernels can be excluded from a kernel dictionary 'on the fly'. This approach can improve the efficiency of active learning as well as the accuracy of a function approximation. Via numerical tests with various real datasets, it is demonstrated that AMKL-AKS yields a similar or better performance than the best-known OMKL, with a smaller number of labeled data.




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MAZE: Data-Free Model Stealing Attack Using Zeroth-Order Gradient Estimation. (arXiv:2005.03161v1 [stat.ML])

Model Stealing (MS) attacks allow an adversary with black-box access to a Machine Learning model to replicate its functionality, compromising the confidentiality of the model. Such attacks train a clone model by using the predictions of the target model for different inputs. The effectiveness of such attacks relies heavily on the availability of data necessary to query the target model. Existing attacks either assume partial access to the dataset of the target model or availability of an alternate dataset with semantic similarities.

This paper proposes MAZE -- a data-free model stealing attack using zeroth-order gradient estimation. In contrast to prior works, MAZE does not require any data and instead creates synthetic data using a generative model. Inspired by recent works in data-free Knowledge Distillation (KD), we train the generative model using a disagreement objective to produce inputs that maximize disagreement between the clone and the target model. However, unlike the white-box setting of KD, where the gradient information is available, training a generator for model stealing requires performing black-box optimization, as it involves accessing the target model under attack. MAZE relies on zeroth-order gradient estimation to perform this optimization and enables a highly accurate MS attack.

Our evaluation with four datasets shows that MAZE provides a normalized clone accuracy in the range of 0.91x to 0.99x, and outperforms even the recent attacks that rely on partial data (JBDA, clone accuracy 0.13x to 0.69x) and surrogate data (KnockoffNets, clone accuracy 0.52x to 0.97x). We also study an extension of MAZE in the partial-data setting and develop MAZE-PD, which generates synthetic data closer to the target distribution. MAZE-PD further improves the clone accuracy (0.97x to 1.0x) and reduces the query required for the attack by 2x-24x.




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State Library creates a new space for Aboriginal communities to connect with their cultural heritage

Thursday 20 February 2020
In an Australian first, the State Library of NSW launched a new digital space for Aboriginal communities to connect with their histories and cultures.




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Add your entry to the great pandemic diary of 2020

Monday 4 May 2020
The State Library wants to capture the thoughts and feelings of the State via a new diary sharing platform launched TODAY.




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lmSubsets: Exact Variable-Subset Selection in Linear Regression for R

An R package for computing the all-subsets regression problem is presented. The proposed algorithms are based on computational strategies recently developed. A novel algorithm for the best-subset regression problem selects subset models based on a predetermined criterion. The package user can choose from exact and from approximation algorithms. The core of the package is written in C++ and provides an efficient implementation of all the underlying numerical computations. A case study and benchmark results illustrate the usage and the computational efficiency of the package.




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Anxiety and compassion: emotions and the surgical encounter in early 19th-century Britain

The next seminar in the 2017–18 History of Pre-Modern Medicine seminar series takes place on Tuesday 7 November. Speaker: Dr Michael Brown (University of Roehampton), ‘Anxiety and compassion: emotions and the surgical encounter in early 19th-century Britain’ The historical study of the… Continue reading




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The archaeology of monastic healing: spirit, mind and body

The next seminar in the 2017–18 History of Pre-Modern Medicine seminar series takes place on Tuesday 21 November. Speaker: Professor Roberta Gilchrist (University of Reading), ‘The archaeology of monastic healing: spirit, mind and body’ This paper highlights the potential of archaeology to… Continue reading




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Medieval Ideas about Infertility and Old Age

The next seminar in the 2017–18 History of Pre-Modern Medicine seminar series takes place on Tuesday 16 January. Speaker: Dr Catherine Rider (University of Exeter) Medieval Ideas about Infertility and Old Age Abstract: When they discussed fertility and reproductive disorders it was common… Continue reading




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Broadcasting Health and Disease conference

Broadcasting Health and Disease: Bodies, markets and television, 1950s–1980s An ERC BodyCapital international conference to be held at the Wellcome Trust, 19–21 February 2018 In the television age, health and the body have been broadcasted in many ways: in short… Continue reading




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Wyllie's treatment of epilepsy : principles and practice

149639769X




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Trends in biomedical research

9783030412197 (electronic bk.)




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Treatment of skin diseases : a practical guide

Zaidi, Zohra, author.
9783319895819 (electronic bk.)




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Transgender and gender nonconforming health and aging

9783319950310 (electronic bk.)




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The mungbean genome

9783030200084 (electronic bk.)




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The evolution of feathers : from their origin to the present

9783030272234 electronic book




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The Startup Owner's Manual : the Step-By-Step Guide for Building a Great Company

Blank, Steven G. (Steven Gary), author.
9781119690726 (electronic book)




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The Scientific basis of oral health education

Levine, R. S., Dr., author.
9783319982076 (electronic bk.)




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Technology and adolescent mental health

9783319696386 (electronic bk.)




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Sowing legume seeds, reaping cash : a renaissance within communities in Sub-Saharan Africa

Akpo, Essegbemon, author.
9789811508455 (electronic bk.)




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Saffron : science, technology and health

9780128187401 (ePub ebook)




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Risk Factors for Peri-implant Diseases  

9783030391850 978-3-030-39185-0




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Prevention of chronic diseases and age-related disability

9783319965291 (electronic bk.)




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Post treatments of anaerobically treated effluents

9781780409740




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Pediatric injectable drugs : the teddy bear book

9781585285402 (electronic bk.)




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Pathogenesis of periodontal diseases : biological concepts for clinicians

9783319537375




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Passive and active measurement : 21st International Conference, PAM 2020, Eugene, Oregon, USA, March 30-31, 2020, Proceedings

PAM (Conference) (21st : 2020 : Eugene, Oregon)
9783030440817




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Oral mucosa in health and disease : a concise handbook

9783319560656 (electronic bk.)




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Nutritional and health aspects of food in South Asian countries

9780128200124 (electronic bk.)




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Nursing care planning made incredibly easy!

9781496382566 paperback




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Neuroradiological imaging of skin diseases and related conditions

9783319909318 (electronic bk.)




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Natural remedies for pest, disease and weed control

0128193050




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Nanomaterials in biofuels research

9789811393334 (electronic bk.)




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Mosquitoes, communities, and public health in Texas

9780128145463 (electronic bk.)




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Milk and dairy foods : their functionality in human health and disease

9780128156049 (electronic bk.)




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Microalgae biotechnology for food, health and high value products

9789811501692 (electronic bk.)




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Mayo Clinic strategies to reduce burnout : 12 actions to create the ideal workplace

Swensen, Stephen J., author.
9780190848996 electronic book




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

9783319620619 (electronic bk.)




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Manual of valvular heart disease

9781496310125 paperback




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Machine learning in medicine : a complete overview

Cleophas, Ton J. M., author
9783030339708 (electronic bk.)




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Machine learning in aquaculture : hunger classification of Lates calcarifer

Mohd Razman, Mohd Azraai, author
9789811522376 (electronic bk.)




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Low-dose radiation effects on animals and ecosystems : long-term study on the Fukushima Nuclear Accident

9789811382185 (electronic bk.)




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LGBTQ cultures : what health care professionals need to know about sexual and gender diversity

Eliason, Michele J., author.
9781496394606 paperback




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Integrated pest and disease management in greenhouse crops

9783030223045 electronic book




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Instruments for health surveys in children and adolescents

9783319988573 (electronic bk.)




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Insect sex pheromone research and beyond : from molecules to robots

9789811530821 (electronic bk.)




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Implants in the aesthetic zone : a guide for treatment of the partially edentulous patient

9783319726014 (electronic bk.)




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

9783319981222 (electronic bk.)




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Health issues and care system for the elderly

9789811317620 (electronic bk.)




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Health consequences of microbial interactions with hydrocarbons, oils, and lipids

9783319724737 (electronic bk.)