WeatherSentiment
Comprehensive Analysis of Tweet Sentiments and Weather Data
A comprehensive suite of functions for processing, analyzing, and visualizing textual data from tweets is offered. Users can clean tweets, analyze their sentiments, visualize data, and examine the correlation between sentiments and environmental data such as weather conditions. Main features include text processing, sentiment analysis, data visualization, correlation analysis, and synthetic data generation. Text processing involves cleaning and preparing tweets by removing textual noise and irrelevant words. Sentiment analysis extracts and accurately analyzes sentiments from tweet texts using advanced algorithms. Data visualization creates various charts like word clouds and sentiment polarity graphs for visual representation of data. Correlation analysis examines and calculates the correlation between tweet sentiments and environmental variables such as weather conditions. Additionally, random tweets can be generated for testing and evaluating the performance of analyses, empowering users to effectively analyze and interpret 'Twitter' data for research and commercial purposes.
- Version1.0
- R versionunknown
- LicenseGPL-3
- Needs compilation?No
- Reference manual
- Last release08/19/2024
Team
Leila Marvian Mashhad
Mohammad Arashi
Andriette Bekker
Show author detailsRolesAuthorPriyanka Nagar
Show author detailsRolesAuthor
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- Depends3 packages
- Imports6 packages
- Suggests2 packages