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Current movie recommendation systems often struggle to capture complex user preferences and dynamics, primarily relying on content-based or collaborative filtering techniques. This research introduces a novel deep learning-powered method to enhance movie recommendation models, addressing the limitations of existing systems. By analyzing user behavior records and utilizing movie content elements, our method guarantees the greatest degree of customisation. In this study, we employ Artificial Intelligence (AI), graph-based techniques, and text mining to accurately estimate user preferences. While PageRank ranks the films based on their importance in the individual's history of surfing, Convolutional Neural Network (CNN) predicts the possibility that the movie would be accepted. The experiments employed a dataset of 215 users' browsing activity in 508 movie pages for evaluation. The presented approach achieved significant enhancement in recommendation precision and recall metrics resulting in 7.15% precision expansion and 5.19% recall growth which indicates its potential implementation in personalized movie recommendation systems.
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http://dx.doi.org/10.1038/s41598-025-00030-5 | DOI Listing |
J Med Internet Res
September 2025
Chulalongkorn University, Bangkok, Thailand.
Background: The interprofessional educational curriculum for patient and personnel safety is of critical importance, especially in the context of the COVID-19 pandemic, to prepare junior multiprofessional teams for emergency settings.
Objective: This study aimed to evaluate the effectiveness of an innovative interprofessional educational curriculum that integrated medical movies, massive open online courses (MOOCs), and 3D computer-based or virtual reality (VR) simulation-based interprofessional education (SimBIE) with team co-debriefing to enhance interprofessional collaboration and team performance using Team Strategies and Tools to Enhance Performance and Patient Safety (TeamSTEPPS). This study addressed 3 key questions.
Neural Netw
August 2025
organization=School of Computer Science and Technology, addressline=China University of Mining and Technology, city=Xuzhou, postcode=221116, state=Jiangsu, country=China.
Recommender systems are essential for filtering content to match user preferences. However, traditional recommender systems often suffer from biases inherent in the data, such as popularity bias. These biases, particularly those stemming from latent confounders, can result in inaccurate recommendations and reduce both the diversity and effectiveness of the system.
View Article and Find Full Text PDFNeural Netw
August 2025
School of Computer Science and Technology, Beijing Institute of Technology, Beijing, 100081, China; The University of Dodoma, Dodoma, Tanzania. Electronic address:
Cross-domain sequential recommendation faces persistent challenges in addressing domain shift, data sparsity, and the trade-off between performance, efficiency, and explainability. Existing methods often struggle with inefficient cross-domain adaptation or fail to generate coherent explanations that bridge user preferences across domains. To overcome these limitations, we propose Domain-Aware Self-Prompting (DASP), a novel framework that integrates cross-domain recommendation with natural language explanation generation.
View Article and Find Full Text PDFImaging Neurosci (Camb)
July 2025
CerebroScope, the dba entity of SciencePlusPlease LLC, Pittsburgh, PA, United States.
Cortical spreading depolarization (SD) is increasingly recognized as a major contributor to secondary brain injury. Noninvasive SD monitoring would enable the institution of SD-based therapeutics. Our primary objective is to establish proof-of-concept validation that scalp direct-current (DC)-potentials can provide noninvasive SD detection by comparing scalp DC-shifts from a high-density electrode array to SDs detected by gold-standard electrocorticography (ECoG).
View Article and Find Full Text PDFImaging Neurosci (Camb)
August 2024
School of Psychological Sciences, College of Engineering, Science and Environment, University of Newcastle, Newcastle, NSW, Australia.
Aligning brain maps using functional features rather than anatomical landmarks potentially improves individual identifiability and increases power in group neuroimaging studies. However, alignment based purely on functional magnetic resonance imaging (fMRI) risks omitting useful anatomical constraints. An optimized combination of anatomical and functional feature alignment could balance the advantages of each approach.
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