| Authors | Hadi Pourshafei,Fereshteh Hesari,Mohsen Ayati |
| Journal | Social Sciences and Humanities Open |
| Page number | 3-6 |
| Serial number | 14 |
| Volume number | 14 |
| Paper Type | Full Paper |
| Published At | 2026 |
| Journal Type | Electronic |
| Journal Country | Iran, Islamic Republic Of |
| Journal Index | Scopus |
| Keywords | Personalized learning Recommender systems Complexity theory Adaptive algorithms Educational technology |
|---|
Abstract
This study addresses the persistent limitations of traditional educational recommender systems (ERS), which
often fail to model the dynamic, non-linear, and emergent nature of learning. We propose a complexity-informed
theoretical framework to reconceptualize the design of these systems, aiming to enhance personalized learning
by treating educational technologies as coadaptive ecosystems. To this end, the study addresses four research
questions: (1) how the core requirements of personalized learning expose the limitations of static ERS; (2) how
principles of complexity theory can redefine their functional architecture; (3) which contextual, behavioral, and
pedagogical components most influence their effectiveness; and (4) what algorithmic and design characteristics
enable emergent and adaptive behaviors. A structured theoretical review was conducted, involving a systematic
search of academic databases from 2008 to 2025 and a two-phase conceptual content analysis. The findings
indicate that complexity principles—such as emergence, self-organization, and feedback loops—can fundamentally
transform ERS from static filtering tools into dynamic systems that co-evolve with learners. Key
characteristics of such systems include adaptive architectures, decentralized processing, and integrated feedback
mechanisms. This framework provides a new design logic for creating educational technologies that are more
responsive, resilient, and context-aware. Future research must prioritize empirical validation, ensure ethical
safeguards such as privacy and transparency, and develop culturally localized models to ensure equitable and
effective personalized learning experiences.
Paper URL