Linguistic Markers in Individuals With Symptoms of Depression in Bi-Multilingual Context

Anbu Savekar, Shashikanta Tarai, Moksha Singh
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引用次数: 4

Abstract

Depression has been identified as the most prevalent mental disorder worldwide. Due to the stigma of mental illness, the population remains unidentified, undiagnosed, and untreated. Various studies have been carried out to detect and track depression following symptoms of dichotomous thinking, absolutist thinking, linguistic markers, and linguistic behavior. However, there is little study focused on the linguistic behavior of bilingual and multilingual with anxiety and depression. This chapter aims to identify the bi-multilingual linguistic markers by analyzing the recorded verbal content of depressive discourse resulting from life situations and stressors causing anxiety, depression, and suicidal ideation. Different contextual domains of word usage, content words, function words (pronouns), and negative valance words have been identified as indicators of psychological process affecting cognitive behavior, emotional health, and mental illness. These findings are discussed within the framework of Beck's model of depression to support the linguistic connection to mental illness-depression.
双语多语背景下抑郁症状个体的语言标记
抑郁症已被确定为世界上最普遍的精神障碍。由于对精神疾病的耻辱感,这一人群仍然身份不明、未得到诊断和治疗。已经开展了各种各样的研究来检测和跟踪抑郁症的症状,包括二分思维、绝对思维、语言标记和语言行为。然而,关于双语和多语焦虑和抑郁的语言行为的研究很少。本章旨在通过分析由生活情境和压力源引起的焦虑、抑郁和自杀意念所产生的抑郁话语的记录言语内容,来识别双多语语言标记。词汇使用、实词、虚词(代词)和负价词的不同语境域已被确定为影响认知行为、情绪健康和精神疾病的心理过程的指标。这些发现在贝克抑郁模型的框架内进行了讨论,以支持语言与精神疾病-抑郁症的联系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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