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Graph Attention Model Embedded With Multi-Modal Knowledge For Depression Detection

机译:嵌入多模态知识的图注意力模型用于抑郁检测

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With more than 300 million people depressed worldwide annually, depression is a global problem. The goal of depression detection is to improve diagnostic accuracy and availability, leading to faster intervention. The most important and challenging problem here is to design an effective and robust depression detection model. To this end, there are two challenges to overcome: 1) Multi-modal (audio, image, text, etc.) information must be jointly considered to make accurate inferences. 2) Existing deep learning-based work suffers from multi-modal data sufficiency problem. To address these issues, we propose a graph attention model embedded with multi-modal knowledge for depression detection. This approach learns not only reasonable embeddings for nodes in the knowledge graph, but also exploits medical knowledge to improve the performance of classification and prediction with the knowledge attention mechanism. Experimental results on the real-world datasets show that the proposed approach significantly improves the classification and prediction performance compared with other major state-of-the-art approaches, with guaranteed the robustness with each modality of multi-modal data. Overall, this paper shows how multi-modal knowledge attention mechanism and deep-learning-based networks can be combined to assist mental health patients and practitioners.
机译:全世界每年有3亿抑郁症患者,抑郁症是一个全球性问题。抑郁症检测的目标是提高诊断准确性和可用性,从而加快干预速度。这里最重要和最具挑战性的问题是设计一个有效而强大的抑郁症检测模型。为此,有两个挑战需要克服:1)必须联合考虑多模式(音频,图像,文本等)信息以进行准确的推断。 2)现有的基于深度学习的工作遭受多模式数据充足性问题的困扰。为了解决这些问题,我们提出了一种嵌入多模态知识的图注意力模型,用于抑郁症检测。该方法不仅学习知识图中节点的合理嵌入,而且利用医学知识通过知识注意力机制提高分类和预测的性能。在现实世界数据集上的实验结果表明,与其他主要的最新技术相比,该方法显着提高了分类和预测性能,并保证了多模态数据每种模态的鲁棒性。总体而言,本文显示了如何将多模式知识关注机制和基于深度学习的网络相结合,以帮助心理健康患者和从业者。

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