A content-based recommender system that recommends movies similar to the movie the user likes and analyses the sentiments of the reviews given by the user
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The Movie Review App is a Django-based web application that allows users to add, view, edit, delete, and search movies. Users can upload movie posters, write reviews, and give ratings. The project uses HTML, CSS, Bootstrap, Python, Django, and SQLite with a responsive and attractive user interface.
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A content-based recommender system that recommends movies similar to the movie the user likes and analyses the sentiments of the reviews given by the user
74/100 healthRubixML /
An example project using a feed-forward neural network for text sentiment classification trained with 25,000 movie reviews from the IMDB website.
65/100 healthcezannec /
A PyTorch CNN for classifying the sentiment of movie reviews, based on the paper "Convolutional Neural Networks for Sentence Classification" by Yoon Kim (2014).
69/100 healthprojectworldsofficial /
Online movie booking system is a web portal where you can book tickets in advance , know your movie show timing, watch movie trailer and read reviews for the same. The objective of Cinema Reservation System is to provide the facility of booking movie tickets online. Customer can view timing of movie shows and book the show as per the availability. Cinema Reservation System is a PHP/MySQL based. This project provides ticket reservation system allowing bookings in a few easy steps. Users can easily book for Shows, Change time, Delete order and view all the shows available. https://youtu.be/h3DR9mBOsfc
51/100 healthSrinidhiRaghavan /
Sentiment Analysis using Stochastic Gradient Descent on 50,000 Movie Reviews Compiled from the IMDB Dataset
52/100 healthCurrie32 /
Used two different methods to predict the sentiment (positive or negative) of movie reviews.
40/100 health