Leveraging Machine Learning Techniques and Engineering of Multi-Nature Features for National Daily Regional Ambulance Demand Prediction

The accurate prediction of ambulance demand provides great value to emergency service providers and people living within a city. It supports the rational and dynamic allocation of ambulances and hospital staffing, and ensures patients have timely access to such resources. However, this task has been...

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Veröffentlicht in:International journal of environmental research and public health 2020-06, Vol.17 (11), p.4179
Hauptverfasser: Lin, Adrian Xi, Ho, Andrew Fu Wah, Cheong, Kang Hao, Li, Zengxiang, Cai, Wentong, Chee, Marcel Lucas, Ng, Yih Yng, Xiao, Xiaokui, Ong, Marcus Eng Hock
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container_issue 11
container_start_page 4179
container_title International journal of environmental research and public health
container_volume 17
creator Lin, Adrian Xi
Ho, Andrew Fu Wah
Cheong, Kang Hao
Li, Zengxiang
Cai, Wentong
Chee, Marcel Lucas
Ng, Yih Yng
Xiao, Xiaokui
Ong, Marcus Eng Hock
description The accurate prediction of ambulance demand provides great value to emergency service providers and people living within a city. It supports the rational and dynamic allocation of ambulances and hospital staffing, and ensures patients have timely access to such resources. However, this task has been challenging due to complex multi-nature dependencies and nonlinear dynamics within ambulance demand, such as spatial characteristics involving the region of the city at which the demand is estimated, short and long-term historical demands, as well as the demographics of a region. Machine learning techniques are thus useful to quantify these characteristics of ambulance demand. However, there is generally a lack of studies that use machine learning tools for a comprehensive modeling of the important demand dependencies to predict ambulance demands. In this paper, an original and novel approach that leverages machine learning tools and extraction of features based on the multi-nature insights of ambulance demands is proposed. We experimentally evaluate the performance of next-day demand prediction across several state-of-the-art machine learning techniques and ambulance demand prediction methods, using real-world ambulatory and demographical datasets obtained from Singapore. We also provide an analysis of this ambulatory dataset and demonstrate the accuracy in modeling dependencies of different natures using various machine learning techniques.
doi_str_mv 10.3390/ijerph17114179
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subjects Ambulances
Census of Population
Datasets
Demand
Demographics
Demography
Emergency medical care
Emergency medical services
Emergency vehicles
Engineering education
Hospitals
Learning algorithms
Local government
Machine learning
Model accuracy
Modelling
Mortality
Nonlinear dynamics
Older people
Patients
Planning
Predictions
Short term
title Leveraging Machine Learning Techniques and Engineering of Multi-Nature Features for National Daily Regional Ambulance Demand Prediction
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