chiragsamal/Zomato
Zomato Restaurants Exploratory Data Analysis, Visualization and Prediction with Sentiment Analysis of Reviews and Recommendation System
Implements a four-phase pipeline combining web scraping of restaurant metadata, natural language processing for review sentiment classification, and content-based filtering for personalized recommendations using Python data science stack (pandas, scikit-learn, matplotlib). Focuses on Bengaluru's restaurant market with analysis of location demographics, cuisine distribution, and price-rating relationships to inform new restaurant positioning decisions.
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Jupyter Notebook
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MIT
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Last pushed
Aug 16, 2020
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