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Methods for Estimating Population Density in Data-Limited Areas: Evaluating Regression and Tree-Based Models in Peru

机译:数据受限区域中人口密度的估算方法:秘鲁的回归分析和基于树的模型

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摘要

Obtaining accurate small area estimates of population is essential for policy and health planning but is often difficult in countries with limited data. In lieu of available population data, small area estimate models draw information from previous time periods or from similar areas. This study focuses on model-based methods for estimating population when no direct samples are available in the area of interest. To explore the efficacy of tree-based models for estimating population density, we compare six different model structures including Random Forest and Bayesian Additive Regression Trees. Results demonstrate that without information from prior time periods, non-parametric tree-based models produced more accurate predictions than did conventional regression methods. Improving estimates of population density in non-sampled areas is important for regions with incomplete census data and has implications for economic, health and development policies.
机译:获得准确的小区域人口估计数对于政策和卫生计划至关重要,但在数据有限的国家中通常很难做到这一点。代替可用的人口数据,小区域估计模型从以前的时间段或相似区域中获取信息。本研究着重于在感兴趣区域中没有直接样本可用时基于模型的人口估计方法。为了探索基于树的模型用于估计人口密度的功效,我们比较了六种不同的模型结构,包括随机森林和贝叶斯加性回归树。结果表明,在没有以前时间段信息的情况下,与传统回归方法相比,基于非参数树的模型所产生的预测更准确。对于人口普查数据不完整的地区,提高非抽样地区的人口密度估计很重要,并且对经济,卫生和发展政策具有影响。

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