Author(s):  
Dom Colbert

Specifically written for those preparing for examinations and practitioners in travel medicine, MCQs in Travel Medicine contains over 600 multiple choice questions with detailed explanations which both teach and challenge the reader. Questions are group by topic which is ideal for revision, enabling you to focus on specific areas including adventure travel, travellers' diarrhoea, malaria, sexually transmitted disease, and drugs used in travel medicine. The style and format of the questions mirror the format of the exam questions, and the book includes a self-test to aid revision. This easy-to-read comprehensive book is ideally suited for those in busy day-to-day practices and those preparing for examinations in travel medicine including the Certificate Exam of the International Society of Travel Medicine.


2019 ◽  
Vol 9 (1) ◽  
Author(s):  
Zhengguo Gu ◽  
Niek C. de Schipper ◽  
Katrijn Van Deun

AbstractInterdisciplinary research often involves analyzing data obtained from different data sources with respect to the same subjects, objects, or experimental units. For example, global positioning systems (GPS) data have been coupled with travel diary data, resulting in a better understanding of traveling behavior. The GPS data and the travel diary data are very different in nature, and, to analyze the two types of data jointly, one often uses data integration techniques, such as the regularized simultaneous component analysis (regularized SCA) method. Regularized SCA is an extension of the (sparse) principle component analysis model to the cases where at least two data blocks are jointly analyzed, which - in order to reveal the joint and unique sources of variation - heavily relies on proper selection of the set of variables (i.e., component loadings) in the components. Regularized SCA requires a proper variable selection method to either identify the optimal values for tuning parameters or stably select variables. By means of two simulation studies with various noise and sparseness levels in simulated data, we compare six variable selection methods, which are cross-validation (CV) with the “one-standard-error” rule, repeated double CV (rdCV), BIC, Bolasso with CV, stability selection, and index of sparseness (IS) - a lesser known (compared to the first five methods) but computationally efficient method. Results show that IS is the best-performing variable selection method.


2006 ◽  
Vol 128 (4) ◽  
pp. 467-474 ◽  
Author(s):  
Christopher B. Anderson ◽  
Clayton R. Griffith ◽  
Amy D. Rosemond ◽  
Ricardo Rozzi ◽  
Orlando Dollenz

1951 ◽  
Vol 3 (3) ◽  
pp. 284-288
Author(s):  
Eric Fenn
Keyword(s):  

Author(s):  
Rajul Misra ◽  
Chandra R. Bhat ◽  
Sivaramakrishnan Srinivasan

A set of four econometric models is presented to examine the tour and episode-related attributes (specifically, mode choice, activity duration, travel times, and location choice) of the activity-travel patterns of non-workers, as a sequel to an earlier work by Bhat and Misra (2001), which presented a comprehensive continuous-time framework for representation and analysis of the activity-travel choices of nonworkers. Detailed descriptions of the first two components of the modeling framework related to the number and sequence of activity episodes are also presented. The proposed models using activity-travel data from the 1990 San Francisco Bay Area travel diary survey are estimated.


PLoS ONE ◽  
2018 ◽  
Vol 13 (1) ◽  
pp. e0189930 ◽  
Author(s):  
Alan M. Friedlander ◽  
Enric Ballesteros ◽  
Tom W. Bell ◽  
Jonatha Giddens ◽  
Brad Henning ◽  
...  

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