me

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

9783319981222 (electronic bk.)




me

Geriatric Medicine : a Problem-Based Approach

9789811032530




me

Genetic and metabolic engineering for improved biofuel production from lignocellulosic biomass

9780128179543 (electronic bk.)




me

General medicine and surgery for dental practitioners

Greenwood, M. (Mark), author.
9783319977379 (electronic book)




me

Gapenski's understanding healthcare financial management

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




me

Fresh-cut fruits and vegetables : technologies and mechanisms for safety control

9780128165393 (electronic bk.)




me

Fractures in the elderly : a guide to practical management

9783319722283 (electronic bk.)




me

Formation and control of biofilm in various environments

Kanematsu, Hideyuki, author
9789811522406 (electronic bk.)




me

Evolutionary developmental biology : a reference guide

9783319330389 (electronic bk.)




me

Ethnoveterinary medicine : present and future concepts

9783030322700 (electronic bk.)




me

Emerging eco-friendly green technologies for wastewater treatment

9789811513909 (electronic bk.)




me

Emerging and transboundary animal viruses

9789811504020 (electronic bk.)




me

Effective treatments for pain in the older patient

9781493988273 (electronic bk.)




me

Diabetes & obesity in women : adolescence, pregnancy, and menopause

Diabetes in women.
9781496390547 (paperback)




me

Development of biopharmaceutical drug-device products

9783030314156 (electronic bk.)




me

Deep learning in medical image analysis : challenges and applications

9783030331283 (electronic bk.)




me

Database design and implementation

Sciore, Edward, author
9783030338367 (electronic bk.)




me

Daily routine in cosmetic dermatology

9783319202501




me

DNA beyond genes : from data storage and computing to nanobots, nanomedicine, and nanoelectronics

Demidov, Vadim V., author
9783030364342 (electronic bk.)




me

Cutaneous biometrics

9783319565910 (electronic bk.)




me

Current microbiological research in Africa : selected applications for sustainable environmental management

9783030352967 (electronic bk.)




me

Current developments in biotechnology and bioengineering : resource recovery from wastes

0444643222




me

Consequences of microbial interactions with hydrocarbons, oils, and lipids : biodegradation and bioremediation

9783319445359 (electronic bk.)




me

Compression and chronic wound management

9783030011956 (electronic book)




me

Complexity and approximation : in memory of Ker-I Ko

9783030416720 (electronic bk.)




me

Complete denture prosthodontics : treatment and problem solving

9783319690179 (electronic bk.)




me

Commercial status of plant breeding in India

Tiwari, Aparna, author.
9789811519062




me

Clinical approaches in endodontic regeneration : current and emerging therapeutic perspectives

9783319968483 (electronic bk.)




me

Clinical Cases in Disorders of Melanocytes

9783030227579




me

Cellular internet of things : from massive deployments to critical 5G applications

Liberg, Olof, 1943- author.
9780081029039 (electronic bk.)




me

Cell biology and translational medicine.

9783030378455 (electronic bk.)




me

Brassica improvement : molecular, genetics and genomic perspectives

9783030346942 (electronic bk.)




me

Bioremediation and biotechnology : sustainable approaches to pollution degradation

9783030356910 (electronic bk.)




me

Biomedical product development : bench to bedside

9783030356262 (electronic bk.)




me

Beyond our genes : pathophysiology of gene and environment interaction and epigenetic inheritance

9783030352134 (electronic bk.)




me

Atlas of ulcers in systemic sclerosis : diagnosis and management

9783319984773 (electronic bk.)




me

Aquatic biopolymers : understanding their industrial significance and environmental implications

Olatunji, Ololade.
9783030347093 (electronic bk.)




me

Apical periodontitis in root-filled teeth : endodontic retreatment and alternative approaches

9783319572505 (electronic bk.)




me

Anomalies of the Developing Dentition : a Clinical Guide to Diagnosis and Management

Soxman, Jane A., author.
9783030031640 (electronic bk.)




me

Fill Management Plan PIC




me

InBios receives Emergency Use Authorization for its Smart Detect...

InBios International, Inc. announces the U.S. Food and Drug Administration (FDA) issued an emergency use authorization (EUA) for its diagnostic test that can be used immediately by CLIA...

(PRWeb April 08, 2020)

Read the full story at https://www.prweb.com/releases/inbios_receives_emergency_use_authorization_for_its_smart_detect_sars_cov_2_rrt_pcr_kit_for_detection_of_the_virus_causing_covid_19/prweb17036897.htm






me

New Partnerships Emerge for COVID-19 Relief: Dade County Farm Bureau...

Harvested produce crops feed Florida Department of Corrections’ (FDC) more than 87,000 inmates; action saves food costs while reducing COVID-19 related supply chain impacts.

(PRWeb April 20, 2020)

Read the full story at https://www.prweb.com/releases/new_partnerships_emerge_for_covid_19_relief_dade_county_farm_bureau_teams_with_state_leaders_to_launch_farm_to_inmate_program/prweb17052045.htm





me

Jamboree Begins Construction on Capstone Development to Change...

In a public-private partnership to develop housing, resident services and hope for 102 working families in Haster Orangewood community, Jamboree Housing Corporation and the City of Anaheim announce...

(PRWeb April 27, 2020)

Read the full story at https://www.prweb.com/releases/jamboree_begins_construction_on_capstone_development_to_change_trajectory_of_neighborhood_in_anaheim_ca/prweb17073166.htm




me

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.




me

Optimal prediction in the linearly transformed spiked model

Edgar Dobriban, William Leeb, Amit Singer.

Source: The Annals of Statistics, Volume 48, Number 1, 491--513.

Abstract:
We consider the linearly transformed spiked model , where the observations $Y_{i}$ are noisy linear transforms of unobserved signals of interest $X_{i}$: egin{equation*}Y_{i}=A_{i}X_{i}+varepsilon_{i},end{equation*} for $i=1,ldots ,n$. The transform matrices $A_{i}$ are also observed. We model the unobserved signals (or regression coefficients) $X_{i}$ as vectors lying on an unknown low-dimensional space. Given only $Y_{i}$ and $A_{i}$ how should we predict or recover their values? The naive approach of performing regression for each observation separately is inaccurate due to the large noise level. Instead, we develop optimal methods for predicting $X_{i}$ by “borrowing strength” across the different samples. Our linear empirical Bayes methods scale to large datasets and rely on weak moment assumptions. We show that this model has wide-ranging applications in signal processing, deconvolution, cryo-electron microscopy, and missing data with noise. For missing data, we show in simulations that our methods are more robust to noise and to unequal sampling than well-known matrix completion methods.




me

The numerical bootstrap

Han Hong, Jessie Li.

Source: The Annals of Statistics, Volume 48, Number 1, 397--412.

Abstract:
This paper proposes a numerical bootstrap method that is consistent in many cases where the standard bootstrap is known to fail and where the $m$-out-of-$n$ bootstrap and subsampling have been the most commonly used inference approaches. We provide asymptotic analysis under both fixed and drifting parameter sequences, and we compare the approximation error of the numerical bootstrap with that of the $m$-out-of-$n$ bootstrap and subsampling. Finally, we discuss applications of the numerical bootstrap, such as constrained and unconstrained M-estimators converging at both regular and nonstandard rates, Laplace-type estimators, and test statistics for partially identified models.




me

The multi-armed bandit problem: An efficient nonparametric solution

Hock Peng Chan.

Source: The Annals of Statistics, Volume 48, Number 1, 346--373.

Abstract:
Lai and Robbins ( Adv. in Appl. Math. 6 (1985) 4–22) and Lai ( Ann. Statist. 15 (1987) 1091–1114) provided efficient parametric solutions to the multi-armed bandit problem, showing that arm allocation via upper confidence bounds (UCB) achieves minimum regret. These bounds are constructed from the Kullback–Leibler information of the reward distributions, estimated from specified parametric families. In recent years, there has been renewed interest in the multi-armed bandit problem due to new applications in machine learning algorithms and data analytics. Nonparametric arm allocation procedures like $epsilon $-greedy, Boltzmann exploration and BESA were studied, and modified versions of the UCB procedure were also analyzed under nonparametric settings. However, unlike UCB these nonparametric procedures are not efficient under general parametric settings. In this paper, we propose efficient nonparametric procedures.