Entropy Based Modelling for Estimating Demographic Trends.

In this paper, an entropy-based method is proposed to forecast the demographical changes of countries. We formulate the estimation of future demographical profiles as a constrained optimization problem, anchored on the empirically validated assumption that the entropy of age distribution is increasi...

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Main Authors: Guoqi Li, Daxuan Zhao, Yi Xu, Shyh-Hao Kuo, Hai-Yan Xu, Nan Hu, Guangshe Zhao, Christopher Monterola
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2015-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC4575178?pdf=render
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spelling doaj-25294cc1cd454474852807c88f6ec3c52020-11-25T00:49:13ZengPublic Library of Science (PLoS)PLoS ONE1932-62032015-01-01109e013732410.1371/journal.pone.0137324Entropy Based Modelling for Estimating Demographic Trends.Guoqi LiDaxuan ZhaoYi XuShyh-Hao KuoHai-Yan XuNan HuGuangshe ZhaoChristopher MonterolaIn this paper, an entropy-based method is proposed to forecast the demographical changes of countries. We formulate the estimation of future demographical profiles as a constrained optimization problem, anchored on the empirically validated assumption that the entropy of age distribution is increasing in time. The procedure of the proposed method involves three stages, namely: 1) Prediction of the age distribution of a country's population based on an "age-structured population model"; 2) Estimation the age distribution of each individual household size with an entropy-based formulation based on an "individual household size model"; and 3) Estimation the number of each household size based on a "total household size model". The last stage is achieved by projecting the age distribution of the country's population (obtained in stage 1) onto the age distributions of individual household sizes (obtained in stage 2). The effectiveness of the proposed method is demonstrated by feeding real world data, and it is general and versatile enough to be extended to other time dependent demographic variables.http://europepmc.org/articles/PMC4575178?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Guoqi Li
Daxuan Zhao
Yi Xu
Shyh-Hao Kuo
Hai-Yan Xu
Nan Hu
Guangshe Zhao
Christopher Monterola
spellingShingle Guoqi Li
Daxuan Zhao
Yi Xu
Shyh-Hao Kuo
Hai-Yan Xu
Nan Hu
Guangshe Zhao
Christopher Monterola
Entropy Based Modelling for Estimating Demographic Trends.
PLoS ONE
author_facet Guoqi Li
Daxuan Zhao
Yi Xu
Shyh-Hao Kuo
Hai-Yan Xu
Nan Hu
Guangshe Zhao
Christopher Monterola
author_sort Guoqi Li
title Entropy Based Modelling for Estimating Demographic Trends.
title_short Entropy Based Modelling for Estimating Demographic Trends.
title_full Entropy Based Modelling for Estimating Demographic Trends.
title_fullStr Entropy Based Modelling for Estimating Demographic Trends.
title_full_unstemmed Entropy Based Modelling for Estimating Demographic Trends.
title_sort entropy based modelling for estimating demographic trends.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2015-01-01
description In this paper, an entropy-based method is proposed to forecast the demographical changes of countries. We formulate the estimation of future demographical profiles as a constrained optimization problem, anchored on the empirically validated assumption that the entropy of age distribution is increasing in time. The procedure of the proposed method involves three stages, namely: 1) Prediction of the age distribution of a country's population based on an "age-structured population model"; 2) Estimation the age distribution of each individual household size with an entropy-based formulation based on an "individual household size model"; and 3) Estimation the number of each household size based on a "total household size model". The last stage is achieved by projecting the age distribution of the country's population (obtained in stage 1) onto the age distributions of individual household sizes (obtained in stage 2). The effectiveness of the proposed method is demonstrated by feeding real world data, and it is general and versatile enough to be extended to other time dependent demographic variables.
url http://europepmc.org/articles/PMC4575178?pdf=render
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AT haiyanxu entropybasedmodellingforestimatingdemographictrends
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