Trying to model the rainfall-runoff process is a complex activity as it is influenced by a number of implicit and explicit factors--for example, precipitation distribution, evaporation, transpiration, abstraction, watershed topography, and soil types. However, this kind of forecasting is particularly important as it is used to predict serious flooding, estimate erosion and identify problems associated with low flow. Inductive learning approaches (e.g. decision trees and artificial neural networks) are particularly well suited to problems of this nature as they can often interpret underlying factors (such as seasonal variations) which cannot be modelled by other techniques. In addition, these approaches can easily be trained on the explicit factors (e.g. rainfall) and the inexplicit factors (e.g. abstraction) that affect river flow. Inductive learning approaches can also be extended to account for new factors that emerge over a period of time. This paper evaluates the application of decision trees and two artificial neural network models (the multilayer perceptron and the radial basis function network) to river flow forecasting in two flood prone UK catchments using real hydrometric data. Comparisons are made between the performance of these approaches and conventional flood forecasting systems.
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BMC Nutr
January 2025
Department of Population Health and Leadership, School of Health Sciences, University of New Haven, 300 Boston Post Road, West Haven, Connecticut, 06516, USA.
Background: College students in the United States are disproportionately impacted by food insecurity, which is associated with diminished health outcomes and poor academic performance. One key resource to support students through periods of food insecurity are on-campus food pantries, which distribute food, personal hygiene products, and other essential items. But as colleges and universities navigated through the COVID-19 pandemic, many campuses closed their food pantries as the demand for their services among students grew.
View Article and Find Full Text PDFObjectiveThis study aimed to explore physiotherapist and manager perceptions of factors that influence physiotherapist participation in clinical supervision.MethodsIndividual semi-structured interviews were conducted with physiotherapists (n = 15) and managers (n = 10) from a publicly funded health network. Interviews were audiotaped and transcribed verbatim.
View Article and Find Full Text PDFAnn Glob Health
January 2025
École de santé publique, Université de Montréal, Canada.
Newcomer populations in urban centers experienced an exacerbated effect of coronavirus disease 2019 (COVID‑19) due to their precarious living and working conditions. Addressing their needs requires holistic care provisioning, including psychosocial support, assistance to address food security, and educational and employment assistance. Intersectoral collaboration between the public and the community sector can reduce vulnerabilities experienced by these groups.
View Article and Find Full Text PDFCan Pharm J (Ott)
January 2025
Faculty of Pharmacy and Pharmaceutical Sciences, University of Alberta, Edmonton, AB.
Purpose: As the scope of practice continues to evolve for pharmacists, professional abstinence is being observed by students in workplaces and practicums. Professional abstinence is defined as "consciously choosing not to provide the full scope of patient care activities". Exposure of students to professional abstinence may cause cognitive dissonance, as they are challenged by practices that do not match what they are taught in school.
View Article and Find Full Text PDFNeural Netw
January 2025
School of Cyber Science and Engineering, Xi'an Jiaotong University, China. Electronic address:
Detecting anomalies in attributed networks has become a subject of interest in both academia and industry due to its wide spectrum of applications. Although most existing methods achieve desirable performance by the merit of various graph neural networks, the way they bundle node-affiliated multidimensional attributes into a whole for embedding calculation hinders their ability to model and analyze anomalies at the fine-grained feature level. To characterize anomalies from each feature dimension, we propose Eagle, a deep framework based on bipartitE grAph learninG for anomaLy dEtection.
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