The Movie Recommendation System using Content Based Filtering with TF-IDF¬¬-Vectorization and Levenshtein Distance

Author:

Omkar Kunde 1,Omkar Gaikwad 1,Prathamesh Kelgandre 1,Rohan Damodhar 1,Prof. Mrs. M. M. Swami 1

Affiliation:

1. AISSMS Institute of Information Technology, Pune, Maharashtra, India

Abstract

In this busy life people like to do things to make their mind calm and watching movies is one of the thing but due to large data of a movie exist in the world it is very difficult for the user to select a movie. They have to spend a lot of time in searching and selecting movie. This procedure is time consuming and difficult. So recommendation system make the things easy. Recommendation engines are trained to produce fast and accurate suggestions to users. This paper describes a movie recommendation system using content based filtering and data is processed using Term-frequency Inverse document frequency technique (TF-IDF) for vectorization. Cosine similarity method is used for similarity measure. The system is presented to the user through a web-hosted user-interface which offers a system architecture by considering the initial problem usually faced by recommendation systems, namely the cold start problem. The problem of lack of user preferences data is trying to be overcome by utilizing movies data. The raw data is processed using the TF-IDF algorithm and Vector Space Model to generate a data model. Then levenshtien distance with cosine similarity will improve the performance of existing system. Advantages of the system include efficient recommendations, correct suggestions. Future enhancements include user profiling, documentations and data acquirement through web scraping.

Publisher

Naksh Solutions

Subject

General Medicine

Reference12 articles.

1. Movie Recommendation System using Term Frequency-Inverse Document Frequency and Cosine Similarity Method N. Muthurasu, Nandhini Rengaraj, K. C. Mohan Published 2019.

2. Movie recommendation system using enhanced content- based filtering algorithm G-Sunandana; M. Reshma ; Y. Pratyush ; Madhuri Kommineni; Published 2021

3. Proposed content based movie recommendation system using python and machine learning N. Pradeep , K. K. Raoss Mangalore, B. Rajpal, N. Prasad, R. Shastri

4. Content based Collaborative Filtering using Word Embedding:A case Study on Movie Recommendation. Luong Vuong Nguyen, Tri-Hai Nguyen, Jason J. Jung Published 13 October 2020

5. Building A Movie Recommendation System Using Collaborative Filtering with TF-IDF. S.A.Azeem Farhan, Dr.K.Sagar, Smt. T.Suvarna Kumari Published on September 2021

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