This project predicts the Accident Casualty of an Individual from a given dataset which includes weather conditions , temperature , lighting conditions, etc. The approach for prediction of casualty severity has two steps: a. Cluster the data using agglomerative clustering algorithm, b. Prediction using lasso lars regression model.
=>The approach for prediction of casualty severity has two steps:
a. Cluster the data using agglomerative clustering algorithm
Cluster 0 Rules: Road Surface is in average 15.31% smaller : mean of 1.10 against 1.30 globally Casualty Severity is in average 11.63% smaller : mean of 1.00 against 1.13 globally Weather Conditions is in average 15.13% smaller : mean of 1.04 against 1.22 globally
Cluster 1 Rules: Casualty Severity is in average 80.57% greater : mean of 2.05 against 1.13 globally Type of Vehicle is in average 12.33% smaller : mean of 3.32 against 3.79 globally Number of Vehicles is in average 14.70% smaller : mean of 1.67 against 1.95 globally
Cluster 2 Rules: Road Surface is in average 57.93% greater : mean of 2.06 against 1.30 globally Weather Conditions is in average 61.05% greater : mean of 1.97 against 1.22 globally Casualty Severity is in average 10.32% smaller : mean of 1.02 against 1.13 globally