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Title Comprehensive Review Of Smart Healthcare Recommendation Systems Using Deep Learning
ID_Doc 15326
Authors Bouslah S.; Benharzallah S.; Hamouma M.; Kahloul L.
Year 2024
Published 2024 1st International Conference on Innovative and Intelligent Information Technologies, IC3IT 2024
DOI http://dx.doi.org/10.1109/IC3IT63743.2024.10869404
Abstract As smart cities advance and increasingly use data from Internet of Things (IoT) sources to enhance urban environments, smart healthcare has become a key focus area. This paper investigates the integration of Deep Learning (DL) techniques in Smart Healthcare Recommendation Systems (SHRSs), presenting a foundational taxonomy, that categorizes these systems into four distinct types: Content-Based Filtering (CBF), Collaborative Filtering (CF), Context-Aware Filtering (CAF), and Hybrid Filtering (HF). These approaches, implemented through DL, enable advanced data processing, pattern recognition, and personalization. Additionally, the paper introduces a new classification based on the nature of intervention, dividing SHRSs into preventive, diagnostic, treatment-focused, and hybrid categories. This dual classification fills a critical gap in the comparative analysis of DL-driven healthcare, which demonstrates the efficacy of these systems in providing personalized health advice, leveraging real-time sensor data and optimizing the handling of complex health datasets. Furthermore, this research outlines future work and potential directions for advancing SHRSs, offering insights into the application and impact of sophisticated recommendation techniques within the context of urban health management. © 2024 IEEE.
Author Keywords Comprehensive Review; Deep learning; Recommendation System; Smart Healthcare


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