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Hierarchical neural model with attention mechanisms for the classification of social media text related to mental health

机译:带有注意机制的层次神经模型用于与心理健康相关的社交媒体文本的分类

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Mental health problems represent a major public health challenge. Automated analysis of text related to mental health is aimed to help medical decision-making, public health policies and to improve health care. Such analysis may involve text classification. Traditionally, automated classification has been performed mainly using machine learning methods involving costly feature engineering. Recently, the performance of those methods has been dramatically improved by neural methods. However, mainly Convolutional neural networks (CNNs) have been explored. In this paper, we apply a hierarchical Recurrent neural network (RNN) architecture with an attention mechanism on social media data related to mental health. We show that this architecture improves overall classification results as compared to previously reported results on the same data. Benefitting from the attention mechanism, it can also efficiently select text elements crucial for classification decisions, which can also be used for in-depth analysis.
机译:精神健康问题代表了一项重大的公共卫生挑战。对与精神卫生有关的文本进行自动分析,旨在帮助制定医疗决策,制定公共卫生政策并改善医疗保健。这种分析可能涉及文本分类。传统上,自动分类主要使用涉及成本高昂的特征工程的机器学习方法来执行。最近,神经方法极大地改善了这些方法的性能。但是,主要研究了卷积神经网络(CNN)。在本文中,我们将分层的递归神经网络(RNN)体系结构与对心理健康相关的社交媒体数据的关注机制相结合。我们显示,与以前在相同数据上报告的结果相比,该体系结构改善了总体分类结果。得益于注意力机制,它还可以有效地选择对于分类决策至关重要的文本元素,这些元素也可以用于深入分析。

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