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Automobile Accident Risk Prediction via Twitter Sentiment Analysis and Geocoding (Tweepy, ArcGIS, Smote, NLP, ML models / NYC-based)

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LookBeforeYouLeap

Leveraging predictive ML models to improve Automotive Safety and Travel Time through Twitter Sentiment Analysis and Traffic Record Analysis

Authors: Hannah Do, Kamil Sachryn

Project Summary

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  • Retrieval of tweets through Snscape, Tweepy, and geocoding through ArcGIS - 1

  • Text processing through various NLP processing and Vader methods (sentiment analysis) - 1

  • Collection of accident record and feature selection - 2

  • Integration of twitter features into traffic accident records - merging the two datasets based on the distance between instances - 3

  • SMOTE and random instance generation for balancing the class - 3

  • ML predictions and evaluation (processed files are in 'merged' folder) - 4

Project Details

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Automobile Accident Risk Prediction via Twitter Sentiment Analysis and Geocoding (Tweepy, ArcGIS, Smote, NLP, ML models / NYC-based)

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