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Depression and Impaired Mental Health Analysis from Social Media Platforms using Predictive Modelling Techniques

机译:使用预测建模技术从社交媒体平台进行的抑郁症和心理健康受损分析

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Depression is the leading global disability, and unipolar (as opposed to bipolar) depression is the 10th leading cause of early death, as stated by the World Health Organization (WHO) in 2015. The study aims to build an approach for depression and impaired mental health analysis from social media platforms. Although for Depression analysis and cure. Psyscologists preferred over machines because they are manipulative and precautionary to Human emotions to a greater extent, Machine Learning has an added advantage. It has no emotions; it studies patterns, not face or beauty or other factors. It studies a wide variety of data and then trains to give better predictions. Although it is not 100% reliable nor are the doctors. Moreover, in countries like India where people don't treat Depression as a Chronic Illness or don't even consider it as an illness of any sort, embedding Machine Learning Depression Detection Algorithms in Social Media combined with recommendation systems to treat a Human Mind positively, still being unnoticeable is a Great Boon to humanity The study is assisted by data collected from users after obtaining their consent and applying data preprocessing techniques. Several machine learning is used to analyze the data in the best way possible. A VAPID Technique is developed that performs far better than a classic feed-forward neural network. This study aims to develop a correlation between features and depressed people to observe a continuous pattern. Moreover, the aim is to conclude that social media can be a new exceptional methodology for analyzing depression and analyzing indirect patterns, improving many lives.
机译:正如世界卫生组织(WHO)在2015年所指出的,抑郁症是全球领先的残疾,单相(相对于双相性)抑郁是导致早期死亡的第十大原因。该研究旨在建立一种解决抑郁症和精神障碍的方法。来自社交媒体平台的健康分析。虽然用于抑郁症的分析和治疗。心理学家比机器更喜欢,因为机器在很大程度上可以操纵和预防人类的情绪,因此机器学习具有更多的优势。它没有情感。它研究的是模式,而不是面孔,美丽或其他因素。它研究了各种各样的数据,然后进行训练以提供更好的预测。尽管不是100%可靠,医生也不是。此外,在印度这样的国家/地区,人们不将抑郁症视为慢性病,甚至根本不将其视为任何疾病,因此将社交网络中的机器学习抑郁症检测算法与推荐系统相结合,以积极地对待人的心灵仍然是引人注目的人类福祉。这项研究得到了用户的同意并应用了数据预处理技术后从用户那里收集的数据的帮助。几种机器学习被用来以最佳方式分析数据。开发了一种VAPID技术,其性能远胜于经典的前馈神经网络。这项研究旨在发展特征与沮丧的人之间的相关性,以观察连续的模式。此外,目的是得出结论,社交媒体可以成为分析抑郁症和分析间接模式,改善许多生活的一种新的特殊方法。

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