COMPUTATIONAL MODEL FOR CREATING PERSONALIZED ROUTES BASED AT LEAST IN PART UPON PREDICTED TOTAL COST OF CLAIM FREQUENCY OR SEVERITY
DRIVE
November 2, 2023
Systems and methods are provided for providing recommendations of safe driving routes that are tailored to the driving habits of particular drivers. A machine learning model (e.g., an artificial neural network) may be trained using data indicative of insurance claim severity, road conditions, and/or vehicle telematics data associated with vehicle-related incidents, such as vehicle collisions. The machine learning model may be trained to identify road types and conditions that are predictive of claim frequency and severity. Any given driving route(s) may be provided to the trained machine learning model, and a risk value may be computed for the route(s). By further applying a personalized driver profile to the calculations of risk, personalized risk values may be computed for the route(s), and a safest route may be recommended to a driver.
Discussion in the ATmosphere