Similarity based deep learning model for movie recommendation system

Sankaran, Mahesh and Ganesh, E.N. and Pletnev, D. and Nguyen Khanh, B. and Kankhva, V. (2023) Similarity based deep learning model for movie recommendation system. E3S Web of Conferences, 389. 07024. ISSN 2267-1242

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Abstract

. “Movie Recommendation Systems” helps user get relative &
relevant items within millions of items. “Movie recommendation system’s” main task is to offer personalized content through information filtering. Here through this paper, we want to develop Similarity Based Deep Learning Model (SDLM) for automatic movie recommendation system. The projected technique is developed to identify the best rated movies and automatic movie recommendation system. This SDLM is a combination of “Spiking Neural Network (SNN)” and “Ebola Optimization Search Algorithm (EOSA)”. In the SNN, the EOSA is utilized to select optimal weighting parameters. The User Profile Correlation-Based Similarity (UPCS) is utilized along with proposed techniques to enable efficient movie recommendation system. To validate the proposed methodology, the movie databases is obtained from
the online solutions. The proposed methodology is executed in MATLAB in addition performances can be assessed by “performance measures like recall, precision, accuracy, recall, specificity, sensitivity and F_Measure”.
The projected methodology can be compared with the conventional methods such as “ODLM, Recurrent Neural Network (RNN) and Artificial Neural Network (ANN)” respectively. Keywords: recurrent neural network, user profile correlation-based similarity, similarity based deep learning model and spiking neural network.

Item Type: Article
Subjects: Computer Science > Software Engineering
Divisions: Computer Science
Depositing User: Mr IR Admin
Date Deposited: 18 Sep 2024 11:18
Last Modified: 18 Sep 2024 11:18
URI: https://ir.vistas.ac.in/id/eprint/6399

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