|Incident Analysis and Prediction Using Clustering And Bayesian Network|
Advances in data collection and storage infrastructure offer an unprecedented opportunity to integrate both data and emergency resources in a city into a dynamic learning system that can anticipate and rapidly respond to heterogeneous incidents. In this paper, we describe integration methods for spatio-temporal incident forecasting using previously collected vehicular accident data provided to us by the Nashville Fire Department.
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IEEE Conference on Smart City Innovations
San Francisco Bay Area, USA
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