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How to generate micro-agents? A deep generative modeling approach to population synthesis

机译:如何生成微代理?人口综合的深度生成建模方法

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Population synthesis is concerned with the generation of synthetic yet realistic representations of populations. It is a fundamental problem in the modeling of transportation where the synthetic populations of micro-agents represent a key input to most agent-based models. In this paper, a new methodological framework for how to 'grow' pools of micro-agents is presented. The model framework adopts a deep generative modeling approach from machine learning based on a Variational Autoencoder (VAE). Compared to the previous population synthesis approaches, including Iterative Proportional Fitting (IPF), Gibbs sampling and traditional generative models such as Bayesian Networks or Hidden Markov Models, the proposed method allows fitting the full joint distribution for high dimensions. The proposed methodology is compared with a conventional Gibbs sampler and a Bayesian Network by using a large-scale Danish trip diary. It is shown that, while these two methods outperform the VAE in the low-dimensional case, they both suffer from scalability issues when the number of modeled attributes increases. It is also shown that the Gibbs sampler essentially replicates the agents from the original sample when the required conditional distributions are estimated as frequency tables. In contrast, the VAE allows addressing the problem of sampling zeros by generating agents that are virtually different from those in the original data but have similar statistical properties. The presented approach can support agent-based modeling at all levels by enabling richer synthetic populations with smaller zones and more detailed individual characteristics.
机译:人口综合与人口综合但现实的表现有关。这是运输建模中的一个基本问题,其中微代理的合成种群代表了大多数基于代理的模型的关键输入。在本文中,提出了一种新的方法框架,用于“增长”微代理池。模型框架采用基于变分自动编码器(VAE)的机器学习的深度生成建模方法。与以前的人口综合方法(包括迭代比例拟合(IPF),Gibbs采样和传统的生成模型,如贝叶斯网络或隐马尔可夫模型)相比,该方法可以拟合高维的完整联合分布。通过使用大型丹麦旅行日记,将提出的方法与传统的吉布斯采样器和贝叶斯网络进行了比较。结果表明,虽然这两种方法在低维情况下均优于VAE,但当建模的属性数量增加时,它们都存在可伸缩性问题。还表明,当将所需的条件分布估计为频率表时,吉布斯采样器实质上是从原始样本复制代理。相比之下,VAE允许通过生成与原始数据中的代理实际上不同但具有相似统计特性的代理来解决零采样问题。所提出的方法可以通过启用具有较小区域和更详细的个人特征的更丰富的合成种群,在所有级别上支持基于代理的建模。

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