Deep Learning Approach for Loneliness Identification from Speech using DNN-LSTM

Ririn Tri Rahayu, E. M. Yuniarno, Derry Pramono Adi, Andreas Agung Kristanto
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Abstract

Perceived loneliness and social isolation have been on the rise over the past decade, especially in countries with rapidly ageing populations and, most notably, as a result of the stress of dealing with the COVID-19 outbreak over the past two years. By using a natural language processing (NLP) approach to quantify sentiment and variables that signal loneliness in transcribed spoken text of older persons, this paper investigates the use of deep learning technology in the evaluation of interviews on loneliness. We conducted loneliness state detection using Deep Neural Network (DNN) and Long Short-Term Memory (LSTM). Participants who were lonely and those who weren't were compared (using both qualitative and quantitative measures). Individuals who were lonelier (as determined by qualitative measures) took longer to respond to questions about their loneliness and expressed more grief in their answers. When asked about loneliness, more women than men admitted it during the qualitative interview. When responding, men were more likely to utilize expressions of dread and happiness. When trained on textual data, DNN models were 100% accurate at predicting qualitative loneliness and LSTM models were 75.42% accurate at predicting loneliness on textual data.
基于DNN-LSTM的语音孤独感识别深度学习方法
在过去十年中,人们感受到的孤独和社会孤立有所上升,特别是在人口迅速老龄化的国家,尤其是在过去两年应对COVID-19疫情的压力下。通过使用自然语言处理(NLP)方法量化老年人转录口语文本中信号孤独的情绪和变量,本文研究了深度学习技术在孤独感访谈评估中的应用。我们使用深度神经网络(DNN)和长短期记忆(LSTM)进行孤独感状态检测。将孤独和不孤独的参与者进行比较(使用定性和定量测量)。更孤独的人(由定性测量确定)需要更长的时间来回答关于他们孤独的问题,并在他们的回答中表达更多的悲伤。在定性访谈中,当被问及孤独时,承认孤独的女性多于男性。在回应时,男性更倾向于使用恐惧和快乐的表情。当在文本数据上训练时,DNN模型在预测定性孤独方面的准确率为100%,LSTM模型在预测文本数据上的孤独方面的准确率为75.42%。
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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