eRum2020::CovidR
  • About
  • Submit
  • Gallery
    • COVOID: modelling transmission / interventions
    • COVID-19 Data Hub
    • Daily economic indicators
    • Covid_19 Kenya
    • The ten-day coronavirus forecast
    • COVID-19 Bulletin Board Japan
    • 100 k African Hospital and Health Facilities
    • COVID-19 in Belgium: is it over yet?
    • MINT - Monitoring Italian contagion trends
    • The Prime Minister's Speech(es)
    • PangeaCovid19
    • OzCoViz dashboard and the covidrecon package
    • Europe Tracker
    • Fighting misinformation
    • Country-specific Coronavirus Dashboard How-To
    • Covid19-Explorer
    • cRew Symptom Tracker
    • NowCastingCOVID-19
    • Coro2vid-19
    • COVID-19 in India
    • Covid'19 Twitter Analytics
    • Covid-19 in Italy
    • COVID-19 Monitor
    • COVID-19 Canada Data Explorer
    • Covid Shinyline
    • CoronaDash - clustering-analytical tool
    • Coronavirus Tracker
    • Understanding COVID-19 with Excess Deaths
    • COVID-19 Scientific Papers
    • COVID-19 and R blog series
    • Global COVID-19 Dashboard
    • COVID-19 Time-Dependent SIR Model
    • Interactive map of 2019-nCov global distribution
    • Covid19 Data and Perception (CoDaP)
    • Covid19 Shiny App
    • CovidR Example
  • e-Rum2020

Covid’19 Twitter Sentiment Analysis Shiny App

Covid'19 Twitter Sentiment Analysis Shiny App

by Simileoluwa Kafaru [repository]
eRum2020::CovidR

Covid'19 Twitter Sentiment Analysis Shiny App

Simileoluwa Kafaru

There are so many controvesies and daily trending issues surrounding the Covid'19 Pandemic. Twitter is one of the major Social Media platforms that catches news and trends in real-time, with a wide user base. Here, I focus on a Sentiment Analysis Shiny App, capable of collecting tweets in real-time with a choice of major hashtags. Sentiment Analysis is performed on the retrieved tweets and dashboarded. Also, a daily stats of the Covid'19 pandemic is presented, all with real-time updates.

Vote for "Covid'19 Twitter Sentiment Analysis Shiny App"

Like this contribution to see it presented and awarded at the e-Rum2020 CovidR contest pre-conference event

Include the badge for simmie-covid19-nlp

eRum2020::CovidR

Markdown

[![eRum2020::CovidR](https://badgen.net/https/runkit.io/erum2020-covidr/badge/branches/master/simmie-covid19-nlp?cache=300)](https://milano-r.github.io/erum2020-covidr-contest/simmie-covid19-nlp.html)

HTML

<a href="https://milano-r.github.io/erum2020-covidr-contest/simmie-covid19-nlp.html"><img src="https://badgen.net/https/runkit.io/erum2020-covidr/badge/branches/master/simmie-covid19-nlp?cache=300" alt="eRum2020::CovidR"/></a>


e-Rum2020 CovidR Contest Created with rmdgallery 0.4.0