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Gender-Aware Estimation of Depression Severity Level in a Multimodal Setting

机译:多模式环境下抑郁严重程度的性别意识评估

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Depression is a severe psychological disorder that is experienced by a significant number of individuals across the globe. It greatly changes the way one thinks, triggering a constant decline in mood. Studies have shown that gender can act as a good indicator of depression. In this paper, we analyse the effects of gender information in the estimation of depression. We have carried out different experiments on the benchmark data set named Distress Analysis Interview Corpus - a Wizard of Oz (DAIC-WOZ). Concretely, we discovered that a) gender information substantially improves the performance of depression severity estimation, and b) adversarially learning to predict the depression score distributed by gender improves the performance of depression severity estimation.
机译:抑郁症是一种严重的心理疾病,全球有相当多的人都会经历这种疾病。它极大地改变了一个人的思维方式,引发情绪的持续下降。研究表明,性别可以作为抑郁症的良好指标。本文分析了性别信息在抑郁症评估中的作用。我们在名为“苦恼分析访谈语料库——绿野仙踪”(DAIC-WOZ)的基准数据集上进行了不同的实验。具体地说,我们发现a)性别信息显著提高了抑郁严重程度估计的性能,b)逆境学习预测按性别分布的抑郁评分提高了抑郁严重程度估计的性能。

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