Показати скорочену інформацію

dc.contributor.authorKrak, Iu.uk
dc.contributor.authorMazurets, O.uk
dc.contributor.authorOvcharuk, O.uk
dc.contributor.authorMolchanova, M.uk
dc.contributor.authorBarmak, O.uk
dc.contributor.authorAzarova, L.uk
dc.contributor.authorАзарова Л. Є.uk
dc.date.accessioned2025-09-01T09:05:51Z
dc.date.available2025-09-01T09:05:51Z
dc.date.issued2025uk
dc.identifier.citationKrak Iu., Mazurets O., Ovcharuk O., Molchanova M., Barmak O., Azarova L. Transformer-based multilabel classification for identifying hidden psychological conditions in online posts // CEUR Workshop Proceedings. Modern Machine Learning Technologies Workshop (MoMLeT 2025), Lviv, Ukraine, 14 June 2025 - 15 June 2025, 2025. Vol. 4004. Р. 86–97.uk
dc.identifier.issn1613-0073uk
dc.identifier.urihttps://ir.lib.vntu.edu.ua//handle/123456789/48961
dc.description.abstractThe paper proposes the method of multilabel classification for identifying hidden psychological conditions in online posts was proposed. The method consists of the stages of tokenization, neural network analysis of texts and the formation of conclusions about the presence of hidden psychological conditions. The features of the tokenization stage are the addition of special tokens to fix the boundaries of text fragments, supplement or trim the text to the length of a given dimension. At the stage of text analysis, the presence of each type of hidden psychological conditions is determined by a separate neural network model. The output of the method is the conclusion about the presence of each type of conditions with their numerical measures of manifestations. The created method allows to obtain in the models an improved ability to distinguish specific features for each type of psychological condition, due to training on modified sets of text data, which reduces the probability of confusion between conditions, since the model learns to distinguish their characteristic features. The developed method provides an average value 92.3% of the F1 metric for multilabel classification of hidden psychological conditions, while existing analogues provide an average value 64.5% of the F1 metric for multiclass classification.uk_UA
dc.language.isouk_UAuk_UA
dc.publisherCEUR-WSuk
dc.relation.ispartof7th International Workshop on Modern Machine Learning Technologies, MoMLeT 2025, Lviv, Ukraine, 14 June 2025 - 15 June 2025, Vol. 4004 : 86–97.uk
dc.subjecttransformer neural networkuk
dc.subjectmultilabel classificationuk
dc.subjecthidden psychological conditionsuk
dc.titleTransformer-based multilabel classification for identifying hidden psychological conditions in online postsuk
dc.typeArticle, Scopus-WoS
dc.identifier.orcidhttps://orcid.org/uk


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Показати скорочену інформацію