Enhancing Cold-Start Recommendations with Innovative Co-SVD: A Sparsity Reduction Approach

Keywords: Recommendation Systems, Collaborative Filtering, Singular Value Decomposition, Cold-Start Problem, Sparsity Reduction, E-Marketing

Abstract

This research introduces a novel methodology to enhance recommendation systems, specifically targeting the challenging cold-start problem. By creatively combining Collaborative Singular Value Decomposition (Co-SVD) with an innovative sparsity reduction approach, our study significantly improves recommendation accuracy and mitigates the challenges posed by sparse user-item interaction matrices. We conduct a comprehensive set of experiments, leveraging a sample e-commerce dataset, to demonstrate the efficacy of our approach. The results illustrate the superiority of our Enhanced Co-SVD model over traditional Co-SVD, content-based filtering, and random recommendation in various evaluation metrics. In particular, our methodology excels in cold-start scenarios, providing accurate recommendations for users with limited interaction history. The implications of our research extend to practical applications in e-marketing, user engagement, and personalized marketing strategies, highlighting the potential for enhanced customer satisfaction and business success. This work represents a critical step forward in the evolution of recommendation systems and underscores the importance of addressing the cold-start problem in modern online services.
Published
2024-08-16
How to Cite
Loukili, M., & Messaoudi, F. (2024). Enhancing Cold-Start Recommendations with Innovative Co-SVD: A Sparsity Reduction Approach. Statistics, Optimization & Information Computing. Retrieved from http://47.88.85.238/index.php/soic/article/view/2048
Section
Research Articles