- π Source: Kaggle
- π Link: Traffic Accidents Dataset
- π― Purpose: Analyze traffic accident trends and derive insights for prevention strategies.
- π Event Participation
- π Analysis Objectives
- π οΈ Methodology
- π Key Findings
- π¦ Preventive Measures
- π Conclusion
- π License
- ποΈ Competition: Spring 2025 Datathon hosted by Bits
- π₯ Achievement: Honorable Mention (3rd Place)
- π₯ Team Members: Preet Patel, Azra Bano, Avani Kadlaskar, and Prisha Barot
- π Identify Common Causes: Environmental, human, and vehicular factors.
- β³ Determine High-Risk Timeframes: Time-based trends.
- π₯οΈ Tools Used: R (for data processing, visualization, and modeling)
- π Exploratory Data Analysis (EDA):
- π Accident frequency distribution
- π¦οΈ Correlation between weather conditions and accident severity
- β° Impact of time factors (hour, day, month, season)
# Load dataset
traffic_data <- read.csv("accidents.csv")
# Quick summary
summary(traffic_data)- β±οΈ Peak Accident Hours: Higher occurrences during rush hours and late nights.
- π§οΈ Weather Impact: Rain and fog significantly increase accident risks.
- ποΈ Urban vs. Rural Accidents: Higher accident rates in urban areas but more severe incidents in rural settings.
- π Human Factors: Distracted driving and speeding are major contributors.
- π Enhanced traffic monitoring and enforcement.
- π¦ Stricter speed regulations in high-risk zones.
The analysis highlights crucial insights into accident patterns and risk factors. By leveraging data-driven approaches, policymakers and urban planners can implement targeted solutions to enhance road safety and reduce traffic incidents effectively.