Cyberswarm: a novel swarm intelligence algorithm inspired by cyber community dynamics
Abdelsadeq Elfergany, Ammar Adl, Mohammed Kayed

TL;DR
This paper introduces Cyberswarm, a versatile swarm intelligence algorithm inspired by cyber community dynamics, that adapts to evolving user preferences in recommendation systems by modeling complex social interactions and outperforming baseline methods.
Contribution
The work presents a novel, general-purpose swarm algorithm that models user preferences and community influences within dynamic hypergraphs for improved recommendation accuracy.
Findings
Superior performance in recommendation tasks across multiple datasets
Consistently outperforms baseline methods in HR, MRR, NDCG metrics
Demonstrates adaptability to dynamic environments for real-time recommendations
Abstract
Recommendation systems face challenges in dynamically adapting to evolving user preferences and interactions within complex social networks. Traditional approaches often fail to account for the intricate interactions within cyber-social systems and lack the flexibility to generalize across diverse domains, highlighting the need for more adaptive and versatile solutions. In this work, we introduce a general-purpose swarm intelligence algorithm for recommendation systems, designed to adapt seamlessly to varying applications. It was inspired by social psychology principles. The framework models user preferences and community influences within a dynamic hypergraph structure. It leverages centrality-based feature extraction and Node2Vec embeddings. Preference evolution is guided by message-passing mechanisms and hierarchical graph modeling, enabling real-time adaptation to changing…
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Taxonomy
TopicsRecommender Systems and Techniques · Complex Network Analysis Techniques · Advanced Graph Neural Networks
