Abstract
Inferring activity types from the massive human-tracking data is of great importance for the understanding of human daily activity patterns in the cities. Researchers have investigated various methods to infer activity types automatically, however, the recognition accuracy of social activity types (such as shopping, schooling, transportation, recreation, and entertainment) are not satisfactory. This research proposes a machine-learning-based method to model individual daily social activities from travel survey data. Using Guangzhou as an example, we extract 21 dimensional spatial and temporal attributes to construct the random forest (RF) method to identify and validate social activities at the individual level. The experiment result shows the recognition accuracy of our approach is 75%. The effects of different factors on social activity participation are also investigated. The proposed approach can help us better understand human behaviors and daily activities, and also provide valuable insights for land use and traffic management planning and other applications.
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Tu, W., et al.: Coupling mobile phone and social media data: a new approach to understanding urban functions and diurnal patterns. Int. J. Geographical Inf. Sci. 31(12), 2331–2358 (2017)
Rasouli, S., Timmermans, H.: Activity-based models of travel demand: promises, progress and prospects. Int. J. Urban Sci. 18(1), 31–60 (2014)
Furletti, B., et al.: Inferring human activities from GPS tracks. In: Proceedings of the 2nd ACM SIGKDD International Workshop on Urban Computing. ACM (2013)
Huang, W., Li, S.: An approach for understanding human activity patterns with the motivations behind. Int. J. Geographical Inf. Sci. 33(2), 385–407 (2019)
Diao, M., et al.: Inferring individual daily activities from mobile phone traces: a Boston example. Environ. Plan. Planning Des. 43(5), 920–940 (2016)
Zhu, Y.: Estimating the activity types of transit travelers using smart card transaction data: a case study of Singapore. Transportation, pp. 1–28 (2018)
National Bereau of Statics of China, China Statistical Yearbook (2007)
Liaw, A., Wiener, M.: Classification and regression by randomForest. R News 2(3), 18–22 (2002)
Cheng, L., et al.: Applying a random forest method approach to model travel mode choice behavior. Travel Behav. Soc. 14, 1–10 (2019)
Breiman, L.: Random forest. Mach. Learn. 45, 5–32 (2001)
Suykens, J.A., Vandewalle, J.: Least squares support vector machine classifiers. Neural Process. Lett. 9(3), 293–300 (1999)
Hastie, T., et al.: Multi-class adaboost. Stat. Interface 2(3), 349–360 (2009)
McFadden, D.: Conditional logit analysis of qualitative choice behavior (1973)
Acknowledgments
This study was supported by the National Natural Science Foundation of China (Grant # 41971345) and the Guangdong Basic and Applied Basic Research Foundation (Grant # 2020A1515010695).
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Zou, D., Li, Q. (2020). Modeling Individual Daily Social Activities from Travel Survey Data. In: Di Martino, S., Fang, Z., Li, KJ. (eds) Web and Wireless Geographical Information Systems. W2GIS 2020. Lecture Notes in Computer Science(), vol 12473. Springer, Cham. https://doi.org/10.1007/978-3-030-60952-8_18
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DOI: https://doi.org/10.1007/978-3-030-60952-8_18
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