Network-Based Video Recommendation Using Viewing Patterns and Modularity Analysis: An Integrated Framework
Mehrdad Maghsoudi, Mohammad Hossein valikhani, Mohammad Hossein Zohdi

TL;DR
This paper presents a network-based video recommendation system that leverages viewing patterns and modularity analysis to improve personalization, significantly boosting user engagement metrics on a VOD platform.
Contribution
It introduces a novel framework combining social network analysis and modularity clustering with implicit viewing data for enhanced video recommendations.
Findings
63% increase in click-through rate
24% increase in view completion rate
17% improvement in user satisfaction
Abstract
The proliferation of video-on-demand (VOD) services has led to a paradox of choice, overwhelming users with vast content libraries and revealing limitations in current recommender systems. This research introduces a novel approach by combining implicit user data, such as viewing percentages, with social network analysis to enhance personalization in VOD platforms. The methodology constructs user-item interaction graphs based on viewing patterns and applies centrality measures (degree, closeness, and betweenness) to identify important videos. Modularity-based clustering groups related content, enabling personalized recommendations. The system was evaluated on a documentary-focused VOD platform with 328 users over four months. Results showed significant improvements: a 63% increase in click-through rate (CTR), a 24% increase in view completion rate, and a 17% improvement in user…
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Taxonomy
TopicsRecommender Systems and Techniques · Complex Network Analysis Techniques · Opinion Dynamics and Social Influence
MethodsSupport Vector Machine
