基于社交媒体数据的居民行为活动研究:北京四个典型社区的案例研究

Information Pub Date : 2024-07-05 DOI:10.3390/info15070392
Zhiyuan Ou, Bingqing Wang, Bin Meng, Changsheng Shi, Dongsheng Zhan
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引用次数: 0

摘要

在大数据挖掘技术的支持下,利用包含位置信息和丰富语义文本信息的社交媒体数据,可以构建大规模的城市人群日常活动OD流,为研究城市时空结构提供新的数据资源和研究视角。本文采用 ST-DBSCAN 算法识别四个社区中微博用户的居住位置,然后使用 BERT 模型对微博文本进行活动类型分类。结合 TF-IDF 方法,从时间特征、空间特征和语义特征三个方面对结果进行了分析。研究结果表明在空间维度上,居民的日常活动主要以居住地为中心,但不同社区居民的活动半径和方向存在显著差异;②在时间维度上,不同社区居民在工作日和周末不同时段的活动强度表现出一致性;③从语义分析来看,不同社区居民在活动内容和场所选择上的差异深受社区综合特征的影响。本研究探索了基于社交媒体数据的OD信息挖掘方法,对于拓展居民时空行为特征的挖掘方法,丰富基于社区居民活动空间和设施需求的公共服务设施配置研究具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on Resident Behavioral Activities Based on Social Media Data: A Case Study of Four Typical Communities in Beijing
With the support of big data mining techniques, utilizing social media data containing location information and rich semantic text information can construct large-scale daily activity OD flows for urban populations, providing new data resources and research perspectives for studying urban spatiotemporal structures. This paper employs the ST-DBSCAN algorithm to identify the residential locations of Weibo users in four communities and then uses the BERT model for activity-type classification of Weibo texts. Combined with the TF-IDF method, the results are analyzed from three aspects: temporal features, spatial features, and semantic features. The research findings indicate: ① Spatially, residents’ daily activities are mainly centered around their residential locations, but there are significant differences in the radius and direction of activity among residents of different communities; ② In the temporal dimension, the activity intensities of residents from different communities exhibit uniformity during different time periods on weekdays and weekends; ③ Based on semantic analysis, the differences in activities and venue choices among residents of different communities are deeply influenced by the comprehensive characteristics of the communities. This study explores methods for OD information mining based on social media data, which is of great significance for expanding the mining methods of residents’ spatiotemporal behavior characteristics and enriching research on the configuration of public service facilities based on community residents’ activity spaces and facility demands.
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