CityGuard: Citywide Fire Risk Forecasting Using A Machine Learning Approach

QIANRU WANG∗, Northwestern Polytechnical University, China JUNBO ZHANG†, JD Intelligent Cities Business Unit, JD Digits, Beijing, China and JD Intelligent Cities Research, China BIN GUO†, Northwestern Polytechnical University, China ZEXIA HAO and YIFANG ZHOU, JD Intelligent Cities Business Unit, JD Digits, Beijing, China and JD Intelligent Cities Research, China JUNKAI SUN, Xidian University, China ZHIWEN YU, Northwestern Polytechnical University, China YU ZHENG, JD Intelligent Cities Business Unit, JD Digits, Beijing, China and JD Intelligent Cities Research, China

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