Towards big data behavioral analysis: rethinking GPS trajectory mining approaches from geographic, semantic, and quantitative perspectives

Weixin Huang, Luying Wang
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Abstract

The question regarding the actual usage of built environments is of immense importance in behavioral research. Yet traditional methods of collecting and analyzing data on movements and activities often lack needed accuracy and granularity. Thus, this article reviewed and summarized the applicability of emergent GPS trajectory mining approaches in the field of architecture from geographic, semantic, and quantitative perspectives, respectively. Accordingly, three experiments based on a case study using real GPS trajectory data from visitors to the Palace Museum in China were conducted to examine the usefulness and weakness of the aforementioned approaches. The findings revealed that although all three dimensions of the trajectory mining approaches had the potential to provide useful information for architectural and urban design, the higher the dimensionality in utilizing the data, the more effective the approach was in discovering generalizable knowledge of human behavioral pattern. Furthermore, the results suggested that to gain insights into the typological characteristics of human behaviors related to the built environments, the contribution of trajectory data alone was limited, hence, conventional field surveys and questionnaires which contain information on individual characteristics and spatial features should be used in conjunction. Future research and practical implications were outlined.

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实现大数据行为分析:从地理、语义和定量角度重新思考 GPS 轨迹挖掘方法
有关建筑环境实际使用情况的问题在行为研究中极为重要。然而,收集和分析运动和活动数据的传统方法往往缺乏所需的准确性和粒度。因此,本文分别从地理、语义和定量角度回顾和总结了新兴 GPS 轨迹挖掘方法在建筑领域的适用性。因此,本文在案例研究的基础上,利用中国故宫博物院游客的真实 GPS 轨迹数据进行了三次实验,以检验上述方法的实用性和不足之处。研究结果表明,虽然轨迹挖掘方法的三个维度都有可能为建筑和城市设计提供有用信息,但利用数据的维度越高,该方法在发现人类行为模式的通用知识方面就越有效。此外,研究结果表明,要深入了解与建筑环境相关的人类行为的类型特征,仅靠轨迹数据的贡献是有限的,因此应结合使用包含个人特征和空间特征信息的传统实地调查和问卷调查。此外,还概述了未来的研究和实际意义。
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