Twitter’s 139 million daily active users interact with brands on the network in important ways, from retweeting your content to a broader audience to making purchases that directly impact your bottom line. If you’re not using Twitter analytics, you’re missing out on key Twitter insights that could help you refine your strategy and maximize ROI.
- Understand Contextual understanding and tone
- Visualize the sentiments behind the tweets.
pip install pandas textblob wordcloud seaborn
git clone https://github.com/kanishksh4rma/Shinzo-Abe-twitter-Sentiment-analysis.git
* pandas
* textblob
* wordcloud
* seaborn
* numpy
* matplotlib
This dataset contains Japanese Prime Minister Tweet. Japanese culture, diplomatic problem ( North Korea and Tramp etc), time of disaster, economics…
For example,14.April 2014 "Removing radiation contaminated water in all weather, 365/24 at Fukushima. I am deeply thankful for dedication and commitment of our peers." Maybe if you analyze his tweets about Japanese economy this data will be useful for stock price forecasting etc.
Dataset Source : Kaggle
Developed by : Kanishk sharma