RT info:eu-repo/semantics/article T1 Empowering machine learning models with contextual knowledge for enhancing the detection of eating disorders in social media posts A1 Benítez Andrades, José Alberto A1 García Ordás, María Teresa A1 Russo, Marya A1 Sakor, Ahmad A1 Fernandes Rotger, Luis Daniel A1 Vidal, María Esther A2 Ingenieria de Sistemas y Automatica K1 Informática K1 Ingeniería de sistemas K1 Name entity linking K1 Wikidata K1 Deep learning K1 Natural language processing K1 Knowledge graphs K1 Health data K1 33 Ciencias Tecnológicas AB [EN] Social networks have become information dissemination channels, where announcements are posted frequently; they also serve as frameworks for debates in various areas (e.g., scientific, political, and social). In particular, in the health area, social networks represent a channel to communicate and disseminate novel treatments’ success; they also allow ordinary people to express their concerns about a disease or disorder. The Artificial Intelligence (AI) community has developed analytical methods to uncover and predict patterns from posts that enable it to explain news about a particular topic, e.g., mental disorders expressed as eating disorders or depression. Albeit potentially rich while expressing an idea or concern, posts are presented as short texts, preventing, thus, AI models from accurately encoding these posts’ contextual knowledge. We propose a hybrid approach where knowledge encoded in community-maintained knowledge graphs (e.g., Wikidata) is combined with deep learning to categorize social media posts using existing classification models. The proposed approach resorts to state-of-the-art named entity recognizers and linkers (e.g., Falcon 2.0) to extract entities in short posts and link them to concepts in knowledge graphs. Then, knowledge graph embeddings (KGEs) are utilized to compute latent representations of the extracted entities, which result in vector representations of the posts that encode these entities’ contextual knowledge extracted from the knowledge graphs. These KGEs are combined with contextualized word embeddings (e.g., BERT) to generate a context-based representation of the posts that empower prediction models. We apply our proposed approach in the health domain to detect whether a publication is related to an eating disorder (e.g., anorexia or bulimia) and uncover concepts within the discourse that could help healthcare providers diagnose this type of mental disorder. We evaluate our approach on a dataset of 2,000 tweets about eating disorders. Our experimental results suggest that combining contextual knowledge encoded in word embeddings with the one built from knowledge graphs increases the reliability of the predictive models. The ambition is that the proposed method can support health domain experts in discovering patterns that may forecast a mental disorder, enhancing early detection and more precise diagnosis towards personalized medicine. PB IOS Press SN 1570-0844 LK https://hdl.handle.net/10612/18211 UL https://hdl.handle.net/10612/18211 NO Benítez-Andrades, J. A., García-Ordás, M. T., Russo, M., Sakor, A., Fernandes Rotger, L. D., & Vidal, M.-E. (2023). Empowering machine learning models with contextual knowledge for enhancing the detection of eating disorders in social media posts. Semantic Web, 14(5), 873-892. https://doi.org/10.3233/SW-223269 DS BULERIA. Repositorio Institucional de la Universidad de León RD 21-may-2024