Movie recommendation using link prediction
Date
2021-09Publisher
Brac UniversityAuthor
Dhrubo, Md Alif-uz-zamanSupty, Tasfia Chowdhury
Hossin, Md Rakib
Rahman, SM Ashfaqur
Das, Ananya
Metadata
Show full item recordAbstract
Link prediction is an important task for analyzing movie recommendation which
also has applications in other domain like, information retrieval and bioinformatics.
Proximity measure quantify the closeness or similarity between nodes in movie rec ommendation and form the basis of a range of applications in social sciences different
quality based movie, information about user’s choice, networking and connecting .
Recommendation can be effective of link prediction sub-process, with unique nodes
(users and items) and connections (similar user/item relationships and user/item
interections). Through specific methods and techniques, the recommending systems
try to identify the most appropriate items, such as types of information and good
and propose the closest to the user’s tastes. One of the easiest and most under standable and authorisation for locating people with the same preferences in the
recommendation systems is mutual filtering that provides active performance data
based on the ranking of a segment of people. In this model, the process is subject
to scalability, with a growing number of users and movies. Across the other hand,
when there is little information available on the ratings, it is essential to promote the
system’s performance. This study proposes an efficient dynamic graph prediction
using link algorithm to predict the user’s choice and recommended the movie based
on that link prediction. Temporal information offers link occurrence behavior in
the dynamic network, while community clustering shows how strong the connection
between two individual nodes is, based on whether they share the same community.
These model and methods have achieved higher prediction of recommending. We got
better prediction by implementing Jaccard coefficient into methods. Furthermore,
in the future, we will use more algorithms to improve the recommending based on
the rating of the movies by sorting them for the users.