NeighViz: Towards Better Understanding of Neighborhood Effects on Social Groups with Spatial Data
September 20, 2023 Β· Declared Dead Β· π 2023 IEEE Visualization in Data Science (VDS)
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Authors
Yue Yu, Yifang Wang, Qisen Yang, Di Weng, Yongjun Zhang, Xiaogang Wu, Yingcai Wu, Huamin Qu
arXiv ID
2309.11454
Category
cs.HC: Human-Computer Interaction
Citations
2
Venue
2023 IEEE Visualization in Data Science (VDS)
Last Checked
4 months ago
Abstract
Understanding how local environments influence individual behaviors, such as voting patterns or suicidal tendencies, is crucial in social science to reveal and reduce spatial disparities and promote social well-being. With the increasing availability of large-scale individual-level census data, new analytical opportunities arise for social scientists to explore human behaviors (e.g., political engagement) among social groups at a fine-grained level. However, traditional statistical methods mostly focus on global, aggregated spatial correlations, which are limited to understanding and comparing the impact of local environments (e.g., neighborhoods) on human behaviors among social groups. In this study, we introduce a new analytical framework for analyzing multi-variate neighborhood effects between social groups. We then propose NeighVi, an interactive visual analytics system that helps social scientists explore, understand, and verify the influence of neighborhood effects on human behaviors. Finally, we use a case study to illustrate the effectiveness and usability of our system.
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