United States Road Accident Prediction using Random Forest Predictor
Dominic Parosh Yamarthi, Haripriya Raman, Shamsad Parvin

TL;DR
This paper presents a machine learning approach using Random Forest to predict road accidents across the US, integrating diverse data sources for accurate, actionable insights to improve road safety.
Contribution
The study applies Random Forest regression to a comprehensive US traffic dataset, incorporating environmental, behavioral, and infrastructural factors for accident prediction.
Findings
Accurate accident rate predictions across 49 states.
Identification of high-risk areas and seasonal trends.
Enhanced decision-making for traffic safety policies.
Abstract
Road accidents significantly threaten public safety and require in-depth analysis for effective prevention and mitigation strategies. This paper focuses on predicting accidents through the examination of a comprehensive traffic dataset covering 49 states in the United States. The dataset integrates information from diverse sources, including transportation departments, law enforcement, and traffic sensors. This paper specifically emphasizes predicting the number of accidents, utilizing advanced machine learning models such as regression analysis and time series analysis. The inclusion of various factors, ranging from environmental conditions to human behavior and infrastructure, ensures a holistic understanding of the dynamics influencing road safety. Temporal and spatial analysis further allows for the identification of trends, seasonal variations, and high-risk areas. The implications…
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Taxonomy
TopicsTraffic Prediction and Management Techniques · Traffic and Road Safety · IoT and GPS-based Vehicle Safety Systems
MethodsTanh Activation · Sigmoid Activation · Long Short-Term Memory
