Offered By: IBM
Classification of Yelp Reviews using Sentiment Analysis
Sentiment Analysis has become a very popular tool to extract subjective information from the social media and to help businesses understand the social sentiment of their brand, product or service. In this Guided Project, you will be introduced to several Natural Language Processing Techniques to help you derive some meaning from Yelp Business Reviews, as well as to build and test a classification model to divide these reviews into positive or negative.
Continue readingGuided Project
Text Analytics
1.17k+ EnrolledAt a Glance
Sentiment Analysis has become a very popular tool to extract subjective information from the social media and to help businesses understand the social sentiment of their brand, product or service. In this Guided Project, you will be introduced to several Natural Language Processing Techniques to help you derive some meaning from Yelp Business Reviews, as well as to build and test a classification model to divide these reviews into positive or negative.
Learn by Doing
A Look at the Project Ahead
- Explore the Yelp Business Reviews dataset to perform text cleaning, vectorization, and classification
- Use scikit-learn library tools to extract some meaning from the sentiments
- Create a model to classify reviews based on their positive or negative polarities
Certificate
No Certificate Offered
Estimated Effort
1 Hour
Level
Intermediate
Industries
Retail
Skills You Will Learn
Embeddable AI, Machine Learning, NLP, Python, Sentiment Analysis
Language
English
Course Code
GPXX0UN5EN