WE HAVE DONE THE TWO PROJECTS
We have developed a recommendation system using the Hollywood Movie Dataset. The system suggests movies based on user preferences and leverages machine learning techniques for accurate predictions.
Kaggle link: https://www.kaggle.com/code/bandimohitha/movie-recommendation-using-m-l
This project focuses on building a recommendation system for the Tollywood Movie Dataset using Collaborative Filtering and the PIP (Proximity, Impact, Popularity) measure.
- Content-Based and Collaborative Filtering Systems: Implemented to provide personalized recommendations.
- PIP Measure: Enhances the recommendation accuracy by considering proximity, impact, and popularity.
- Process Workflow:
- Data Collection using Web Scraping
- Data Preparation and Cleaning
- Exploratory Data Analysis (EDA)
- Data Visualizations
- Machine Learning Model Application
- Mohitha Bandi (22WU0105037)
- Satya Vaishnavi Gumpally (22WU0106017) - @vaishnavi0307
- Hemanth Bandi (22WU0106028)
We are in the process of writing a research paper based on this project. As a result, no code or additional details have been shared in this repository. Please stay tuned for updates!