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From edit distance to augmented space-time-weighted edit distance: Detecting and clustering patterns of human activities in Puget Sound region

机译:从编辑距离到增强的时空加权编辑距离:普吉特海湾地区人类活动的检测和聚类模式

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摘要

Considering and measuring the similarity of human activities remains challenging. Existing studies of similarity measures based on traditional edit distance (ED), specifically on activity patterns, do not reflect the spatiotemporal characteristics in the measurement model. Additionally, interdependence between activities is ignored in existing multidimensional sequence alignment methods. To address the gap, we initially extend the traditional edit distance to a space-time-weighted edit distance (STW-ED). Specifically, differences in distance and time between activities are considered cost functions in the operation cost calculation (insertion, deletion, and substitution). We advance STW-ED to an augmented space-time-weighted edit distance method (ASTW-ED) that integrates an optimum-trajectory-based multidimensional sequence alignment method (OT-MDSAM) with STW-ED, treating the nonspatiotemporal dimensions as augment factors. In addition, ontology is considered for the similarity measure for nonspatiotemporal dimensions.To show the feasibility of our proposed approach, we conduct an empirical study based on an activity-based travel survey in the Puget Sound Region. Eight clusters (homemakers, regular workers with a colorful life, regular workers with a monotonous life, part-time workers, recreation travelers, senior travelers, no-job travelers, and night owl adventurers) are identified based on ASTW-ED and ontology. To cluster the similarity matrix derived from the introduced methods, the affinity propagation (AP) clustering method is employed because it is free of prior knowledge for clustering and can produce exemplars of the dusters. The empirical study indicates that, relative to existing methods for multidimensional activity similarity measurement and clustering, ASTW-ED performs better in terms of within-group homogeneity and between-group heterogeneity of clusters. In addition, the results reveal that ontology can improve clustering performance if it is considered for nonspatiotemporal dimensions provide better understanding of human behavior for urban governance..
机译:考虑和衡量人类活动的相似性仍然具有挑战性。现有基于传统编辑距离(ED)的相似性度量研究,特别是基于活动模式的研究,并未反映度量模型中的时空特征。此外,活动之间的相互依赖性在现有的多维序列比对方法中被忽略。为了解决这一差距,我们首先将传统的编辑距离扩展为时空加权的编辑距离(STW-ED)。具体来说,在活动成本计算(插入,删除和替换)中,活动之间的距离和时间差异被视为成本函数。我们将STW-ED推进到增强的时空加权编辑距离方法(ASTW-ED),该方法将基于最优轨迹的多维序列比对方法(OT-MDSAM)与STW-ED集成在一起,并将非时空维视为增强因子。此外,还考虑将本体用于非时空维度的相似性度量。为了显示我们提出的方法的可行性,我们在普吉特海湾地区基于活动的旅行调查的基础上进行了实证研究。根据ASTW-ED和本体论,确定了八个集群(家庭主妇,生活多姿多彩的正规工作者,生活单调的正规工作者,兼职工作者,休闲旅行者,高级旅行者,无业旅行者和夜猫子冒险家)。为了对从引入的方法得出的相似性矩阵进行聚类,使用了亲和传播(AP)聚类方法,因为它没有聚类的先验知识,并且可以产生produce粉的示例。实证研究表明,相对于现有的多维活动相似性测量和聚类方法,ASTW-ED在聚类的组内同质性和组间异质性方面表现更好。此外,结果表明,如果考虑非时空维度,则本体可以提高聚类性能,从而更好地理解城市治理中的人类行为。

著录项

  • 来源
    《Journal of Transport Geography》 |2019年第6期|41-55|共15页
  • 作者单位

    Univ Florida, Coll Design Construct & Planning, Sch Landscape Architecture & Planning, Int Ctr Adaptat & Design iAdapt, Gainesville, FL 32611 USA|Univ Florida, Dept Elect & Comp Engn, Arch Bldg,POB 115706, Gainesville, FL 32611 USA;

    Univ Florida, Coll Design Construct & Planning, Sch Landscape Architecture & Planning, Arch Bldg,POB 115706, Gainesville, FL 32611 USA;

    Univ Florida, Coll Design Construct & Planning, Sch Landscape Architecture & Planning, Int Ctr Adaptat & Design iAdapt, Gainesville, FL 32611 USA|Shanghai Jiao Tong Univ, China Inst Urban Governance, Shanghai, Peoples R China;

    Tsinghua Univ, Sch Architecture, Beijing 100084, Peoples R China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Augmented space-time-weighted edit distance; Multidimensional activities; Puget sound region;

    机译:增强空间时加权编辑距离;多维活动;Puget Sound Region;

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