Real Time Efficient Accident Predictor System using Machine Learning Techniques (kNN, RF, LR, DT)

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Abstract

Real time crash predictor system is determining frequency of crashes and also severity of crashes. Nowadays machine learning based methods are used to predict the total number of crashes. In this project, prediction accuracy of machine learning algorithms like Decision tree (DT), K-nearest neighbors (KNN), Random forest (RF), Logistic Regression (LR) are evaluated. Performance analysis of these classification methods are evaluated in terms of accuracy. Dataset included for this project is obtained from 49 states of US and 27 states of India which contains 2.25 million US accident crash records and 1.16 million crash records respectively. Results prove that classification accuracy obtained from Random Forest (RF) is96% compared to other classification methods.

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Tamijeselvy, Dr. P., Ragul, M., … Anitha, M. (2020). Real Time Efficient Accident Predictor System using Machine Learning Techniques (kNN, RF, LR, DT). International Journal of Engineering and Advanced Technology, 10(2), 108–111. https://doi.org/10.35940/ijeat.d6910.1210220

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