0092 3125718857
WhatsApp for More Details
Movie Recommendation System Test phase, srs, design phase and source code final deliverable
Category Data Science/Machine Learning
Problem:
There are thousands of movies available on the internet. Some time the user does not get to search the exact movie according to his taste. So we need to develop a model which can recommend the movies to the user based on his previous interests. First you need to know the about user’s age, region and taste in order to recommend the movie having higher chances of getting view from the user.
According to the model a user can receive recommendations for those items that he/she has not rated before, but that have been already positively rated by users in his/her neighborhood It is based on the core assumption that users who have expressed similar interests in the past will share common interests in the future.
In this model we shall be using collaborative filtering. This model shall be analyzing large amount of information depicting user behavior and preferences to be used to predict what the user is going to do w.r.t the similarity with other users. Collaborative filtering is divided into three steps
Functional Requirements:
There are eight major tasks you will typically perform when developing a system. Tasks (b-i) should be implemented iteratively while developing the system.
The program should have the machine learning approach to execute model detection.
Dataset:
First we need to download the dateset of movies in order to build and train our model. Data
can be downloaded from: https://grouplens.org/datasets/movielens/ Use 100k rating files for this model
Tools
Python
Jupyter Notebook Anaconda
Supervisor
Name: Muhammad Kaleemullah