Real-time Incident Detection Using Social Media Data
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چکیده
منابع مشابه
Big Data Analytics for Mass Casualty Incident (MCI) Situational Awareness
Introduction A variety of big data analytics, techniques and tools including social media analytics, open source visualizations, statistical anomaly detection, use of Application Programming Interfaces (APIs), and geospatial mapping, are used for infectious disease biosurveillance. Using these methodologies, policy makers and practitioners detect and monitor outbreaks across the world near real...
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