Assessment Of The Prevalence Of Suicide Among Young Adults Using Machine Learning

Ibode R.T., T. A. A.,, Afeye A. F., Anifowose O. T., Owolola O. I., Ogidan O. A.
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Abstract

Due to the high rate of suicide all over the world resulting in about 800,000 people dying by suicide each year. The instances where suicide victims constantly publish suicide messages deliberately to express their feelings on social media, there is need to address suicide issues, and how suicide can be prevented. Therefore, as a solution to this, there is need to create a model that classifies these users" social media posts and identify users with suicidal ideations, so as to prevent future suicide cases by getting the identified users the necessary help needed. The study adopted a binary classification of a suicide-related tweet with respect to age 15 up till 29 years, on a document-level basis. A machine learning approach was employed to solve the problem of tweet classification and predictions. The dataset was generated from a Twitter API. It was observed that suicidal issues are rampant among the young adult, which need urgent attention. The paper recommended that timely intervention should be provided so as to reduce suicidal victims and preserve the future of young adults.
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使用机器学习评估年轻人自杀率
由于世界各地的自杀率很高,每年大约有80万人死于自杀。自杀者经常故意在社交媒体上发布自杀信息来表达自己的感受,有必要解决自杀问题,以及如何预防自杀。因此,为了解决这个问题,需要创建一个模型,对这些用户的社交媒体帖子进行分类,并识别出有自杀想法的用户,从而通过为识别出的用户提供必要的帮助来防止未来的自杀事件。该研究在文件层面上对15岁至29岁的自杀相关推文进行了二元分类。采用机器学习方法解决推文分类和预测问题。数据集是从Twitter API生成的。据观察,自杀问题在年轻人中很猖獗,需要紧急关注。论文建议,应及时提供干预,以减少自杀受害者,维护年轻人的未来。
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