Multitask learning for recognizing stress and depression in social media

Q1 Social Sciences Online Social Networks and Media Pub Date : 2023-09-01 DOI:10.1016/j.osnem.2023.100270
Loukas Ilias, Dimitris Askounis
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引用次数: 0

Abstract

Stress and depression are prevalent nowadays across people of all ages due to the quick paces of life. People use social media to express their feelings. Thus, social media constitute a valuable form of information for the early recognition of stress and depression. Although many research works have been introduced targeting the early recognition of stress and depression, there are still limitations. There have been proposed multi-task learning settings, which use depression and emotion (or figurative language) as the primary and auxiliary tasks respectively. However, although stress is inextricably linked with depression, researchers face these two tasks as two separate tasks. To address these limitations, we present the first study, which exploits two different datasets collected under different conditions, and introduce two multitask learning frameworks, which use depression and stress as the main and auxiliary tasks respectively. Specifically, we use a depression dataset and a stressful dataset including stressful posts from ten subreddits of five domains. In terms of the first approach, each post passes through a shared BERT layer, which is updated by both tasks. Next, two separate BERT encoder layers are exploited, which are updated by each task separately. Regarding the second approach, it consists of shared and task-specific layers weighted by attention fusion networks. We conduct a series of experiments and compare our approaches with existing research initiatives, single-task learning, and transfer learning. Experiments show multiple advantages of our approaches over state-of-the-art ones.

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多任务学习识别社交媒体中的压力和抑郁
由于生活节奏快,压力和抑郁在当今各个年龄段的人中都很普遍。人们使用社交媒体来表达自己的感受。因此,社交媒体是早期识别压力和抑郁的一种有价值的信息形式。尽管已经引入了许多针对压力和抑郁的早期识别的研究工作,但仍然存在局限性。已经提出了将抑郁和情绪(或比喻语言)分别作为主要任务和辅助任务的多任务学习环境。然而,尽管压力与抑郁症密不可分,但研究人员将这两项任务视为两项独立的任务。为了解决这些局限性,我们提出了第一项研究,该研究利用了在不同条件下收集的两个不同的数据集,并引入了两个多任务学习框架,分别将抑郁和压力作为主要和辅助任务。具体来说,我们使用了抑郁症数据集和压力数据集,其中包括来自五个领域的十个子版块的压力帖子。就第一种方法而言,每个帖子都经过一个共享的BERT层,该层由两个任务更新。接下来,利用两个独立的BERT编码器层,每个任务分别更新它们。关于第二种方法,它由注意力融合网络加权的共享层和任务特定层组成。我们进行了一系列实验,并将我们的方法与现有的研究计划、单任务学习和迁移学习进行了比较。实验表明,与最先进的方法相比,我们的方法具有多种优势。
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来源期刊
Online Social Networks and Media
Online Social Networks and Media Social Sciences-Communication
CiteScore
10.60
自引率
0.00%
发文量
32
审稿时长
44 days
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