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Assessment of Lifestyle and Mental Health: Case Study of the FST Beni Mellal

机译:评估生活方式和心理健康:FST Beni Mellal的案例研究

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Lifestyle habits are defined as behaviors of a sustainable nature which are based on a set of elements incorporating cultural heritage, social relations, geographic and socio-economic circumstances as well as personality. Mental health encompasses the promotion of well-being, the prevention of mental disorders, and the treatment and rehabilitation of people with these disorders. In order to address this issue, we propose a solution which consists of the development of an extended autonomous computer model for large textual data. This model will make it possible to give a psychological, emotional or even a lifestyle character from tweets or a web forum. So we turned to the notions of sentiment analysis and Text Mining using Deep Learning. This work (which will be limited to a Moroccan context) concerns the development of a computer model that allows to determine the habits of life and the Health of the students of the Faculty of Sciences and Technologies at the Sultan Moulay Slimane university in Beni Mellal. We started by developing a script to retrieve posts made by students from a Facebook group. The choice of Facebook and not Twitter is due to the fact that the twitter community among the students is relatively small. Afterwards, we built our deep learning model and we tested it with data from twitter comprising of thirteen (13) classes (anger, joy, sadness, disgust etc.). We also submitted these textual data to automatic learning algorithms (naive Bayesian, K nearest neighbors).
机译:生活方式习惯被定义为可持续性的行为,这些性是基于一组包含文化遗产,社会关系,地理和社会经济情况以及个性的元素。心理健康包括促进福祉,预防精神障碍,以及这些疾病的人们的治疗和康复。为了解决这个问题,我们提出了一种解决方案,该解决方案包括扩展自主计算机模型的大型文本数据。此模型将使您可以从推文或网络论坛中给出一种心理,情感甚至是生活方式性格。所以我们转向使用深度学习的情绪分析和文本挖掘的概念。这项工作(将限于摩洛哥语境)涉及开发计算机模型,该计算机模型允许确定生命的习惯和苏丹·莫勒斯·斯坦尔苏丹法尔斯莱纳大学的科学学院的学生的健康。我们首先开发一个脚本来检索来自Facebook集团的学生所做的帖子。 Facebook和Twitter的选择是由于学生中的Twitter社区相对较小。之后,我们建立了我们的深度学习模式,我们用来自包括十三(13)级(愤怒,快乐,悲伤,厌恶等)的Twitter的数据测试了它。我们还向自动学习算法(天真贝叶斯,K最近邻居)提交了这些文本数据。

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