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Clustering South African households based on their asset status using latent variable models

机译:使用潜在变量模型基于南非家庭的资产状况进行聚类

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摘要

The Agincourt Health and Demographic Surveillance System has since 2001 conducted a biannual household asset survey in order to quantify household socio-economic status (SES) in a rural population living in northeast South Africa. The survey contains binary, ordinal and nominal items. In the absence of income or expenditure data, the SES landscape in the study population is explored and described by clustering the households into homogeneous groups based on their asset status. A model-based approach to clustering the Agincourt households, based on latent variable models, is proposed. In the case of modeling binary or ordinal items, item response theory models are employed. For nominal survey items, a factor analysis model, similar in nature to a multinomial probit model, is used. Both model types have an underlying latent variable structure—this similarity is exploited and the models are combined to produce a hybrid model capable of handling mixed data types. Further, a mixture of the hybrid models is considered to provide clustering capabilities within the context of mixed binary, ordinal and nominal response data. The proposed model is termed a mixture of factor analyzers for mixed data (MFA-MD). The MFA-MD model is applied to the survey data to cluster the Agincourt households into homogeneous groups. The model is estimated within the Bayesian paradigm, using a Markov chain Monte Carlo algorithm. Intuitive groupings result, providing insight to the different socio-economic strata within the Agincourt region.
机译:自2001年以来,阿金古特(Agincourt)健康与人口监控系统进行了半年一次的家庭资产调查,以量化居住在南非东北部农村人口的家庭社会经济地位(SES)。调查包含二进制,序数和名义项。在没有收入或支出数据的情况下,通过根据家庭的资产状况将住户分为同质组来探索和描述研究人群中的SES格局。提出了一种基于模型的基于潜在变量模型的阿金库尔家庭聚类方法。在对二进制或序数项目建模的情况下,将使用项目响应理论模型。对于名义调查项目,使用了本质上类似于多项式概率模型的因子分析模型。两种模型类型都有一个潜在的潜在变量结构-这种相似性得到了利用,并且将这些模型组合在一起以生成能够处理混合数据类型的混合模型。此外,混合模型的混合被认为在混合的二进制,序数和名义响应数据的上下文中提供聚类能力。所提出的模型称为混合数据混合因子分析仪(MFA-MD)。将MFA-MD模型应用于调查数据,以将Agincourt家庭聚类为同类组。使用马尔可夫链蒙特卡洛算法在贝叶斯范式内估计该模型。通过直观的分组,可以了解Agincourt地区内不同的社会经济阶层。

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