Research Article Open Access

Personalized Recommendation System: Web of Things Using Modular Density-Based Community Discovery

Vinod Patidar1, Jayashree A. Patil2, Sonika Thapak3, Manmohan Singh3, Vikas Prasad4, Shaheen Ayyub5 and Dharmendra Sharma6
  • 1 Department of Computer Science and Engineering, Parul Institute of Technology, Parul University, Vadodara, India
  • 2 Department of Information Technology, Rajarambapu Institute of Technology, Islampur, Maharashtra, India
  • 3 Department of Computer Science and Engineering, IES College of Technology, Bhopal, India
  • 4 NICMAR Business School, NICMAR University Pune, India
  • 5 Department of Computer Science and Engineering, Technocrats Institute of Technology, Bhopal, India
  • 6 Department of Computer Science and Engineering, School of Technology Management and Engineering, NMIMS University, Indore, India

Abstract

Community discovery is the cornerstone and core of study in customized recommendation, assembling group features and social network analysis on the web of things. Conventional community discovery methods, however, struggle with difficulties including low accuracy, delayed convergence, modularity resolution limits and more when dealing with more complicated social networks. Because of this, differential evolution and module density are included in community discovery and a better differential evolution and module density community discovery approach is offered. The method first alters the mutation strategy and differential evolution parameters and then uses the module density as a fitness function to get beyond the restriction of modularity resolution improve population quality overall and hasten the process of global convergence. Experiments with various commonly used community discovery techniques using computer-generated network datasets and sample real-world network datasets. When Collective Co-Evolutionary Differential Evolution-based Community Detection (CCDECD) and Classification-based Differential Evolution algorithm for Modularity Optimization (CDEMO) are used simultaneously, the difference is optimal and the Q value increases by 3.3% compared to the Overlapping Community Detection algorithm based on Density Peaks (OCDDP) and 4.6% compared to GN. However, the mutual information value NMI is not optimal since the GN method is better suited for small-scale networks. The division result of Improved Differential Evolution and modularity density Community Detection (IMDECD) on the network is the closest to the actual network since the NMI is ideal, the Q value is low and the standard deviation is minimal. The suggested method has improved accuracy and better convergence performance, according to the experimental findings.

Journal of Computer Science
Volume 20 No. 9, 2024, 918-930

DOI: https://doi.org/10.3844/jcssp.2024.918.930

Submitted On: 21 October 2023 Published On: 21 June 2024

How to Cite: Patidar, V., Patil, J. A., Thapak, S., Singh, M., Prasad, V., Ayyub, S. & Sharma, D. (2024). Personalized Recommendation System: Web of Things Using Modular Density-Based Community Discovery. Journal of Computer Science, 20(9), 918-930. https://doi.org/10.3844/jcssp.2024.918.930

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Keywords

  • Modularity-Resolution
  • Modular Density
  • Personalized Recommendation
  • Web of Things
  • Classification-Based Differential Evolution Algorithm for Modularity Optimization