Question
Case Study: Tweet Sentiment Analysis with Geocoding and Mapping Following installing necessary modules, you will be able to Access the necessary information via using the
Case Study: Tweet Sentiment Analysis with Geocoding and Mapping
Following installing necessary modules, you will be able to Access the necessary information via using the Twitter API as can be found in the textbook of this course: Intro to Python for Computer Science and Data Science Learning to Program with AI, Big Data and The Cloud, Global Edition by Deitel & Deitel
Your program should ask the city or country or region and time interval to the user for specifying the place and time for acquiring the tweets. Once the tweets are obtained through the Twitter API, you analyze the data as of tweets.
This analysis must include and/or enable the user to get the information for the following attributes:
Trending topic (20pts)
Word cloud (20pts)
Sentiment analysis for a particular account and for the whole users from that region (20pts)
Visualize the tweets/trending topics on the map and show the words on a heat map (20pts)
Determine the age and gender of an individual user (20pts)
Step by Step Solution
There are 3 Steps involved in it
Step: 1
Get Instant Access to Expert-Tailored Solutions
See step-by-step solutions with expert insights and AI powered tools for academic success
Step: 2
Step: 3
Ace Your Homework with AI
Get the answers you need in no time with our AI-driven, step-by-step assistance
Get Started