Suicide ideation detection based on documents dimensionality expansion

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Abstract

Accurate and secure classifying informal documents related to mental disorders is challenging due to factors such as informal language, noisy data, cultural differences, personal information and mixed emotions. Conventional deep learning models often struggle to capture patterns in informal text, as they miss long-range dependencies, explain words and phrases literally, and have difficulty processing non-standard inputs like emojis. To address these limitations, we expand data dimensionality, transforming and fusing textual data and signs from a 1D to a 2D space. This enables the use of pre-trained 2D CNN models, such as AlexNet, Restnet-50, and VGG-16 removing the need to design and train new models from scratch. We apply this approach to a dataset of social media posts to classify informal documents as either related to suicide or non-suicide content. Our results demonstrate high classification accuracy, exceeding 99%. In addition, our 2D visual data representation conceals individual private information and helps explainability.

Original languageEnglish
Article number110266
Number of pages11
JournalComputers in biology and medicine
Volume192
DOIs
Publication statusPublished - Jun-2025

Keywords

  • Convolutional neural networks
  • Dimensionality expansion
  • Informal document classification
  • Social media
  • Suicide ideation detection

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