A practical method to draw from multivariate extreme value distributions

IF 2.8 3区 经济学 Q1 ECONOMICS Journal of Choice Modelling Pub Date : 2024-07-01 DOI:10.1016/j.jocm.2024.100506
Ke Wang , Xin Ye
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Abstract

Generating random draws from multivariate extreme value (MEV) distributions plays an important role in the microsimulation of travel behaviors, which can effectively avoid heavy computational burdens from simulation based on calculated probability values, particularly in simulations for a large population or choice behaviors from a large choice set. However, there are few practical and effective methods for drawing from MEV distributions. This paper proposes a simple and computationally efficient approach for drawing from MEV distributions in the nested logit (NL), cross-nested logit (CNL), and paired combinatorial logit (PCL) models. The proposed approach to draw from the MEV distribution for a CNL model provides a new perspective to understand the underlying choice mechanism of the CNL model. To our knowledge, this is the first study to draw from an MEV distribution in the PCL model. Random draws from the proposed approach approximately follow the standard Gumbel distribution, which is the marginal distribution of NL/CNL/PCL models, and approximate correlations among alternatives well. Simulation results of NL/CNL/PCL models show that the proposed approach provides high-level accuracy in recovering model parameters with the overall mean absolute percentage bias being less than 3%. The proposed approach is computationally more efficient than similar ones because it only needs to draw from Gumbel distributions. The proposed approach can be used to simulate NL/CNL/PCL models with a large choice set or a multiple discrete-continuous generalized extreme value model in various application settings such as joint destination-mode choices, time use allocations, etc.

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提取多元极值分布的实用方法
从多元极值(MEV)分布中生成随机抽样在旅行行为的微观模拟中发挥着重要作用,它可以有效避免基于计算概率值的模拟所带来的沉重计算负担,尤其是在模拟大量人口或从大量选择集中选择行为时。然而,从 MEV 分布中提取数据的实用有效方法并不多。本文提出了一种简单且计算效率高的方法,用于在嵌套 logit(NL)、交叉嵌套 logit(CNL)和成对组合 logit(PCL)模型中提取 MEV 分布。所提出的在 CNL 模型中提取 MEV 分布的方法为理解 CNL 模型的基本选择机制提供了一个新的视角。据我们所知,这是第一项在 PCL 模型中从 MEV 分布中抽取样本的研究。所提出方法的随机抽取近似于标准 Gumbel 分布(即 NL/CNL/PCL 模型的边际分布),并很好地近似了备选方案之间的相关性。NL/CNL/PCL 模型的仿真结果表明,所提出的方法在恢复模型参数方面具有较高的准确性,总体平均绝对百分比偏差小于 3%。与同类方法相比,所提出的方法计算效率更高,因为它只需从 Gumbel 分布中提取数据。所提出的方法可用于模拟具有大型选择集的 NL/CNL/PCL 模型或多种离散-连续广义极值模型,适用于各种应用场合,如目的地-模式联合选择、时间使用分配等。
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来源期刊
CiteScore
4.10
自引率
12.50%
发文量
31
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