A basic python 3 based web scraper for extracting reviews from Amazon. Built using Selectorlib and requests
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Updated
Feb 23, 2024 - Python
A basic python 3 based web scraper for extracting reviews from Amazon. Built using Selectorlib and requests
This project focuses on sentiment analysis of Amazon product reviews using machine learning and natural language processing techniques. 💬🔍📈
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🤩 Python Package for Scraping Amazon Product Reviews ✨
This ML model trains from data collected from Amazon product reviews and predicts whether the review is positive [1] or negative [-1].
Amazon reviews scraper
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