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Community-Based Matrix Factorization (CBMF) Approach for Enhancing Quality of Recommendations.

Srilatha Tokala1, Murali Krishna Enduri1, T Jaya Lakshmi1

  • 1Algorithms and Complexity Theory Lab, Department of Computer Science and Engineering, SRM University-AP, Amaravati 522502, India.

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Summary
This summary is machine-generated.

Community-Based Matrix Factorization (CBMF) improves recommendation quality by leveraging network communities. This approach reduces computational demands and enhances accuracy in large-scale user rating datasets.

Keywords:
RMSEcommunity detectionmatrix factorizationrating networkrecommender system

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Area of Science:

  • Data Science
  • Network Analysis
  • Recommender Systems

Background:

  • Matrix factorization is a standard technique for extracting insights and recommendations from user rating networks.
  • Large datasets present computational challenges for traditional matrix factorization methods.
  • Community detection algorithms identify groups within complex networks.

Purpose of the Study:

  • To introduce a novel framework, Community-Based Matrix Factorization (CBMF), that integrates community information to enhance matrix factorization for recommendation systems.
  • To address the computational limitations of matrix factorization on large-scale rating networks.

Main Methods:

  • Model user rating data as a bipartite network.
  • Apply community detection (Louvain algorithm) to partition the network.
  • Extract and process community-specific rating matrices in parallel using matrix factorization (MF) techniques (basic MF, SVD++, FANMF).
  • Merge community predictions and evaluate performance using Root Mean Square Error (RMSE).

Main Results:

  • CBMF significantly enhances recommendation quality across six diverse datasets.
  • On the MovieLens 100K dataset, CBMF with SVD++ reduced RMSE from 1.26 to 0.21 by utilizing 25 communities.
  • Similar RMSE reductions were observed for FilmTrust, Jester, Wikilens, Good Books, and Cell Phone datasets.

Conclusions:

  • Community-Based Matrix Factorization offers a scalable and effective approach to improving recommendation systems.
  • Integrating community structure into matrix factorization overcomes computational bottlenecks and boosts prediction accuracy.
  • The CBMF framework demonstrates broad applicability and performance gains across various real-world datasets.