Feb. 9, 2024, 5:42 a.m. | Jos\'e Alberto Ben\'itez-Andrades Mar\'ia Teresa Garc\'ia-Ord\'as Mayra Russo Ahmad Sakor Luis Daniel Fernandes Rotger

cs.LG updates on arXiv.org arxiv.org

Social networks are vital for information sharing, especially in the health sector for discussing diseases and treatments. These platforms, however, often feature posts as brief texts, posing challenges for Artificial Intelligence (AI) in understanding context. We introduce a novel hybrid approach combining community-maintained knowledge graphs (like Wikidata) with deep learning to enhance the categorization of social media posts. This method uses advanced entity recognizers and linkers (like Falcon 2.0) to connect short post entities to knowledge graphs. Knowledge graph embeddings …

artificial artificial intelligence challenges context cs.cl cs.lg detection diseases eating disorders feature health hybrid hybrid approach information intelligence knowledge machine machine learning machine learning models media networks novel platforms sector social social media social networks understanding vital

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