Implementation of Naïve Bayes Algorithm for Classification of Mental Health of Social Media Users

bit-Tech Pub Date : 2021-12-30 DOI:10.32877/bt.v4i2.282
Aditiya Hermawan
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Abstract

Social media has become a human need to interact in everyday life. Apart from being a means of communication, social media also has the additional function of exchanging information on the internet in various forms including writing, images and videos. One of the social media that has many users is Instagram, where Instagram offers information sharing features in the form of images, photos and short videos. The purpose of this feature is for users to express themselves and attract the attention of others, thereby creating feelings of happiness and increasing self-confidence. In addition to positive impacts, there are also negative impacts on users, for example excessive use that causes addiction so that it can cause mental health disorders. Mental health needs to be handled properly so that it does not continue to get worse, but there are several obstacles in seeing a psychiatrist in mental health, including limited access and also negative stigma if someone sees a psychiatrist. Therefore, a tool is needed that can be an early indication in knowing the level of mental agitation, especially in the use of Instagram. Classification in data mining can help provide initial information on a person's condition in his mental health. The Naïve Bayes algorithm provides an accuracy rate of 92.5% in classifying mental health on data sets that have been clustered. Good accuracy can help social media users know their mental health condition.
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Naïve贝叶斯算法在社交媒体用户心理健康分类中的实现
社交媒体已经成为人们日常生活中互动的一种需要。除了作为一种沟通手段,社交媒体还具有在互联网上以各种形式交换信息的附加功能,包括文字,图像和视频。拥有众多用户的社交媒体之一是Instagram, Instagram以图像、照片和短视频的形式提供信息共享功能。这个功能的目的是让用户表达自己,吸引别人的注意,从而产生幸福感,增加自信心。除了积极影响外,对使用者也有消极影响,例如过度使用会导致成瘾,从而可能导致精神健康障碍。需要妥善处理精神健康问题,使其不会继续恶化,但在精神健康方面看精神科医生有几个障碍,包括机会有限,如果有人看精神科医生,也会受到负面的污名。因此,我们需要一种工具,可以作为了解心理躁动程度的早期指标,尤其是在使用Instagram时。数据挖掘中的分类可以帮助提供关于一个人的心理健康状况的初步信息。Naïve贝叶斯算法在对已聚类的数据集进行心理健康分类方面提供了92.5%的准确率。良好的准确性可以帮助社交媒体用户了解自己的心理健康状况。
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