Incident Analysis and Prediction Using Clustering And Bayesian Network
Author
Abstract

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.

Year of Publication
2017
Conference Name
IEEE Conference on Smart City Innovations
Date Published
08/2017
Publisher
IEEE
Conference Location
San Francisco Bay Area, USA
Attachments
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