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Lifestyle classifications with and without activity-travel patterns

机译:有无活动模式的生活方式分类

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Trip-based approach and activity-based approach are two extremes in the use of activity related information when developing travel demand models. Creating lifestyle clusters for a population is a compromise between the two. On the one hand, it has taken into account travel-activity patterns in the development of the clusters. On the other hand, the clusters represent homogenous groups of individuals and simple activity-based travel demand models can be developed for each cluster. However, the development of such clusters requires knowledge of activity-travel patterns of individuals, which can only be obtained from a large-scale survey. It is still an open question how to create travel/activity-related lifestyle clusters using readily available socio-demographic data (such as census data) alone. This paper attempts to answer this question by proposing a procedure of lifestyle classification that moves from specific surveys to a general population. This paper first studies issues related to the development of homogeneous clusters using socio-economic, demographic and activity-travel data. The second part of the paper addresses the issue of data insufficiency and points out that in order to use the clusters developed for travel demand estimation, it is important to know how to allocate individuals in the population to the developed clusters. As a first attempt, this paper proposes to use a recently developed technique called. Support Vector Machine (SVM), to develop classification functions that based on readily available information only. The methodologies proposed are applied to a sub-urban area in Hong Kong. Six lifestyle clusters are first produced using factor analysis and cluster analysis. SVM is then used to develop classification functions that are based on fewer variables. Results show that the two sets of lifestyle clusters are similar and that the SVM outperforms other traditional classification methods.
机译:在开发旅行需求模型时,基于旅行的方法和基于活动的方法是使用与活动相关的信息的两个极端。为人口创造生活方式集群是两者之间的折衷。一方面,它在集群发展中考虑了旅行活动模式。另一方面,这些集群代表同质的个人群体,可以为每个集群开发基于活动的简单旅行需求模型。然而,这类集群的发展需要了解个人的活动-旅行模式,这只能从大规模调查中获得。如何仅使用现有的社会人口统计数据(例如人口普查数据)来创建与旅行/活动相关的生活方式集群仍然是一个悬而未决的问题。本文试图通过提出一种从特定调查到普通人群的生活方式分类程序来回答这个问题。本文首先使用社会经济,人口和活动旅行数据研究与同质集群发展有关的问题。本文的第二部分解决了数据不足的问题,并指出,为了使用为旅行需求估计而开发的聚类,了解如何将人口中的个人分配给发达的聚类非常重要。作为首次尝试,本文建议使用一种最新开发的技术,称为。支持向量机(SVM),以仅基于随时可用的信息来开发分类功能。建议的方法适用于香港郊区。首先使用因子分析和聚类分析产生了六个生活方式聚类。然后,将SVM用于开发基于较少变量的分类函数。结果表明,两组生活方式聚类相似,并且SVM优于其他传统分类方法。

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