Khan, NasrullahMa, ZongminMa, RuizhePolat, Kemal2024-09-252024-09-2520240950-7051https://doi.org/10.1016/j.knosys.2024.112475https://hdl.handle.net/20.500.12491/12442Knowledge Graph Embedding (KGE) based deep neural networks contribute to recommender systems in diverse application scenarios. However, Catastrophic Forgetting (CForg) significantly degrades their performance. Although exemplar replay is commonly adopted as a possible remedy to alleviate the intensity of CForg, a trade-off between performance and complexity occurs in this process. Therefore, in this work, we introduce Continual Knowledge graph embedding enhancement for joint Interaction-based Next click recommendation (CKIN) to defy the CForg and assuage the complexity. Typically, we introduce the Semantic Relevance Estimation (SRE) technique to ensure information relevance by filtering out irrelevant-data and reducing the space complexity. We introduce the SRE-enhanced deep probabilistic technique to probably replay the most relevant exemplars to defy the CForg and reduce the time complexity. Moreover, we introduce the integration of locality-preserving loss into the KGE framework to optimize the loss. In substantial experiments on real-world datasets, CKIN outperforms the baseline methods by effectively meeting the highlighted challenges. © 2024 Elsevier B.V.eninfo:eu-repo/semantics/closedAccessCatastrophic forgettingContinual KGE enhancementInteractions to quadrupletsNext click recommendationContinual knowledge graph embedding enhancement for joint interaction-based next click recommendationArticle10.1016/j.knosys.2024.1124753042-s2.0-85203816007Q1