人口时空建模中活动序列的生成与分类。

Online journal of public health informatics Pub Date : 2020-07-30 eCollection Date: 2020-01-01 DOI:10.5210/ojphi.v12i1.10588
Albert M Lund, Ramkiran Gouripeddi, Julio C Facelli
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引用次数: 6

摘要

人类活动包含一系列复杂的时空过程,这些过程难以建模,但却是人类暴露评估的重要组成部分。一个重要的经验数据源,如美国时间使用调查(ATUS),可以用来模拟人类活动。然而,可处理的模型需要对活动数据进行更好的分层,以了解表现出相似活动序列和移动模式的不同但可分类的个体群体。利用机器学习算法,我们开发了一种无监督分类和序列生成方法,该方法能够从ATUS数据中生成连贯和随机的活动序列。这种分类,当与任何时空暴露剖面相结合时,允许开发暴露模式的随机模型和显示类似活动行为的个体群体的记录。
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Generation and Classification of Activity Sequences for Spatiotemporal Modeling of Human Populations.

Human activity encompasses a series of complex spatiotemporal processes that are difficult to model but represent an essential component of human exposure assessment. A significant empirical data source, like the American Time Use Survey (ATUS), can be leveraged to model human activity. However, tractable models require a better stratification of activity data to inform about different, but classifiable groups of individuals, that exhibit similar activity sequences and mobility patterns. Using machine learning algorithms, we developed an unsupervised classification and sequence generation method that is capable of generating coherent and stochastic sequences of activity from the ATUS data. This classification, when combined with any spatiotemporal exposure profile, allows the development of stochastic models of exposure patterns and records for groups of individuals exhibiting similar activity behaviors.

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