Affiliation:
1. University of Connecticut, USA
Abstract
Accurate citywide crowd activity prediction (CAP) can enable proactive crowd mobility management and timely responses to urban events, which has become increasingly important for a myriad of smart city planning and management purposes. However, complex correlations across the crowd activities, spatial and temporal urban environment features and their
interactive
dependencies, and relevant external factors (e.g., weather conditions) make it highly challenging to predict crowd activities accurately in terms of different venue categories (for instance, venues related to dining, services, and residence) and varying degrees (e.g., daytime and nighttime).
To address the above concerns, we propose
STICAP
, a citywide spatio-temporal interactive crowd activity prediction approach. In particular,
STICAP
takes in the location-based social network check-in data (e.g., from Foursquare/Gowalla) as the model inputs and forecasts the crowd activity within each time step for each venue category. Furthermore, we have integrated multiple levels of temporal discretization to interactively capture the relations with historical data. Then, three parallel
Residual Spatial Attention Networks
(
RSAN
) in the
Spatial Attention Component
exploit the hourly, daily, and weekly spatial features of crowd activities, which are further fused and processed by the
Temporal Attention Component
for
interactive CAP
. Along with other external factors such as weather conditions and holidays,
STICAP
adaptively and accurately forecasts the final crowd activities per venue category, enabling potential activity recommendation and other smart city applications. Extensive experimental studies based on three different real-world crowd activity datasets have demonstrated that our proposed
STICAP
outperforms the baseline and state-of-the-art algorithms in CAP accuracy, with an average error reduction of 35.02%.
Funder
National Science Foundation
Publisher
Association for Computing Machinery (ACM)
Subject
Discrete Mathematics and Combinatorics,Geometry and Topology,Computer Science Applications,Modeling and Simulation,Information Systems,Signal Processing
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