Exploring spatiotemporal changes in the multi-granularity emotions of people in the city: a case study of Nanchang, China.

IF 3.2 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Computational urban science Pub Date : 2022-01-01 Epub Date: 2022-01-04 DOI:10.1007/s43762-021-00030-x
Xin Xiao, Chaoyang Fang, Hui Lin, Li Liu, Ya Tian, Qinghua He
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引用次数: 6

Abstract

In the Internet age, emotions exist in cyberspace and geospatial space, and social media is the mapping from geospatial space to cyberspace. However, most previous studies pay less attention to the multidimensional and spatiotemporal characteristics of emotion. We obtained 211,526 Sina Weibo data with geographic locations and trained an emotion classification model by combining the Bidirectional Encoder Representation from Transformers (BERT) model and a convolutional neural network to calculate the emotional tendency of each Weibo. Then, the topic of the hot spots in Nanchang City was detected through a word shift graph, and the temporal and spatial change characteristics of the Weibo emotions were analyzed at the grid-scale. The results of our research show that Weibo's overall emotion tendencies are mainly positive. The spatial distribution of the urban emotions is extremely uneven, and the hot spots of a single emotion are mainly distributed around the city. In general, the intensity of the temporal and spatial changes in emotions in the cities is relatively high. Specifically, from day to night, the city exhibits a pattern of high in the east and low in the west. From working days to weekends, the model exhibits a low center and a four-week high. These results reveal the temporal and spatial distribution characteristics of the Weibo emotions in the city and provide auxiliary support for analyzing the happiness of residents in the city and guiding urban management and planning.

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城市人群多粒度情绪的时空变化研究——以南昌市为例
在互联网时代,情感存在于网络空间和地理空间中,社交媒体是地理空间到网络空间的映射。然而,以往的研究大多对情绪的多维度和时空特征关注较少。我们获取了211,526条带有地理位置的新浪微博数据,并结合BERT模型和卷积神经网络训练了情感分类模型,计算了每条微博的情感倾向。然后,通过词移图检测南昌市热点话题,并在网格尺度上分析微博情绪的时空变化特征。我们的研究结果表明,微博的整体情绪倾向以积极为主。城市情感的空间分布极不均匀,单一情感的热点主要分布在城市周边。总体而言,城市情绪的时空变化强度相对较高。具体来说,从白天到晚上,这座城市呈现出东高西低的格局。从工作日到周末,该模型呈现出一个低中心和四周高点。这些结果揭示了城市微博情感的时空分布特征,为分析城市居民幸福感,指导城市管理和规划提供了辅助支持。
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