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Thèses Canada
Item – Thèses Canada
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Item – Thèses Canada
Numéro d'OCLC
1032910105
Lien(s) vers le texte intégral
Exemplaire de BAC
Exemplaire de BAC
Auteur
Zhu, George.
Titre
Real-time Elective Admissions Planning for Health Care Providers.
Diplôme
Master of Mathematics -- University of Waterloo, 2013
Éditeur
Waterloo : University of Waterloo, 2013.
Description
1 online resource
Notes
Includes bibliographical references.
Résumé
Efficient management of patient admissions plays a critical role in increasing a hospital's resource utilization and reducing health care costs. We consider the problem of fi nding the best available admission policy for elective hospital admissions under real time constraints. The problem is modeled as a Markov Decision Process (MDP) and we investigate current state-of-the art real time planning methods. Due to the complexity of the model, traditional mode-based planners are limited in scalability since they require an explicit enumeration of the model dynamics. To overcome this challenge, we apply sample-based planners along with efficient simulation techniques that given an initial start state, generate an action on-demand while avoiding portions of the model that are irrelevant to the start state. Results show that given reasonable resources, our approach generates improved deci- sions over existing alternatives that fail to scale as model complexity increases. We also propose a parameter tuning method that can be easily and efficiently implemented.
Autre lien(s)
hdl.handle.net
uwspace.uwaterloo.ca
uwspace.uwaterloo.ca
Sujet
Computer Science.
Date de modification :
2022-09-01