使用深度学习检测马来西亚城市推文中的抑郁症

E.K. Priya Sri, K. Savita, Maryam Zaffar
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引用次数: 2

摘要

这份文件的灵感来自于自最近的Covid-19大流行以来,马来西亚Twitter等社交媒体平台的使用量急剧增加。虽然实行社交距离和其他流行病管制是为了改善和预防身体健康,但大多数人的心理健康受到了负面影响。人们通常围绕着与其他人的互动而转,一旦物理形式被切断,人们倾向于转向社交媒体。一种推特情绪分析方法被用来发现社交媒体和心理健康之间的偶然联系。该项目旨在利用基于社交媒体的更广泛的心理健康措施,因为研究证明了抑郁症和特定语言特征之间的联系。因此,研究需要如何实现该项目的问题陈述,即开发一种可以使用深度学习和自然语言处理(NLP)预测基于文本的抑郁症状的算法。该项目的目标是在新冠肺炎疫情初期,利用NLP和深度学习识别马来西亚城市中抑郁的推文,使个人、他们的照顾者、父母甚至医疗专业人员能够识别出指向精神健康恶化迹象的语言线索。此外,本文还研究如何使所提出的系统能够识别代表抑郁症的词语并对其进行分类,提高系统根据特定位置识别显示抑郁症相关词语的推文的准确性。这一目标将遵循使用深度学习方法和自然语言处理技术的方法来实现。在这个项目中实施了一种循环神经网络方法,称为长短期记忆,这是一种先进的RNN,可以保存信息。对推文的语言指标进行分析,可以进行低调的评估,补充传统服务,从而可以更早地发现抑郁症状。由于这项研究需要找到推文与机器学习检测抑郁症状的能力之间的联系,因此这个项目的成功对那些无法寻求帮助或不确定自己诊断的精神受影响的人来说是有意义的帮助,因为这个项目有助于提醒政府和心理学家需要它。到目前为止,该项目的准确率为94%,准确率为0.94,召回率为0.96,F1得分为0.95。
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Depression Detection in Tweets from Urban Cities of Malaysia using Deep Learning
This document was inspired by how the usage of social media platforms in Malaysia such as Twitter have drastically increased ever since the recent Covid-19 pandemic. While practicing social distancing and other pandemic regulations was for the betterment and prevention of physical health, mental health of most was affected negatively. People generally revolve around with having interactions with other humans and once the physical form of it was cut, people tend to turn to social media. A twitter sentiment analysis approach was used to find the casual link between social media and mental health. This project aims to utilise the broaden scope of social media-based mental health measures since research proves the evidence of a link between depression and specific linguistic features as well. Therefore, the research entails on how the problem statement of this project on developing an algorithm that can predict text- based depression symptoms using deep learning and Natural Language Processing (NLP) can be achieved. The objective of the project is to identify depressive tweets using NLP and Deep Learning in the urban cities of Malaysia within the beginning of the Covid-19 period to enable individuals, their caregivers, parents, and even medical professionals to identify the linguistic clues that point towards to signs of mental health deterioration. Additionally, this paper also researches to make the proposed system to identify words that represent depression and categorize them accordingly as well as improve the accuracy of the system in identifying tweets that display the depression related words based on its specific location. This objective will be achieved following the methodology using the Deep Learning approach and Natural Language Processing technique. A recurrent neural network approach was implemented in this project known as the Long-Term Short Memory, which is a form of advanced RNN, that allows information to be preserved. Conducting an analysis on the linguistic indicators from tweets allows for a low-profile assessment that can supplement traditional services which then consequently would allow for a much earlier detection of depressive symptoms. Since this research entails on finding the link between tweets and machine learning's ability to detect depressive symptoms, the success this project brings forth a meaningful help towards those who are mentally affected but are unable to seek help or are unsure on diagnosing themselves as this project helps alert the government and psychologist on the need for it. The project thus far has an accuracy rate of 94%, along with, precision rate of 0.94, recall of 0.96 and an F1 score of 0.95.
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