使用K-Means算法聚类Instagram用户的心理健康状况

bit-Tech Pub Date : 2023-08-25 DOI:10.32877/bt.v6i1.880
Y. Putri, Sugiarta Karlim, Aditiya Hermawan, Ardiane Rossi, Kurniawan Maranto
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引用次数: 0

摘要

过于频繁地使用Instagram会对用户的心理健康产生影响。心理健康状况不佳需要及早治疗,以免对其他健康产生广泛影响。精神疾病需要专业人士来治疗,以防止疾病恶化。然而,患者身上的污名是不愿寻求治疗的重要原因之一。因此,我们需要一种方法,让Instagram用户可以自己发现他们的心理健康状况。一种方法是对Instagram的使用进行聚类,这样它就可以提供一个人心理健康的早期指标。从提出的模型中,我们可以找出600名受访者的类别,这些受访者使用带有10个主要属性的问卷收集。提出的模型是使用肘部法确定的3个聚类的k-means。在本研究中,通过将k-means计算结果与心理学家的结果进行比较,使用计算得到的最后一个质心来评估k-means。K-means评估的结果精度为73.83%,因此最后一个质心可以应用于已创建的基于web的应用程序。这种心理健康聚类模型有望帮助社区尽早发现心理健康状况,减少存在的负面污名,并可作为更明智地使用社交媒体的评估材料。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Clustering Mental Health on Instagram Users Using K-Means Algorithm
The use of Instagram too often can have an impact on the mental health of its users. Mental health that is not good requires early treatment so that it does not have a widespread impact on other health. Mental illness requires a professional to treat it as an effort to prevent a disease from getting worse. However, the stigma attached to sufferers is one of the significant causes behind the reluctance to seek treatment. Therefore we need a way so that Instagram users can find out for themselves the condition of their mental health. One way is to do Clustering the use of Instagram so that it can provide an early indication of a person's mental health. From the proposed model we can find out the categories of 600 respondents who were collected using a questionnaire with 10 main attributes. The proposed model is k-means with 3 clusters determined using the elbow method. In this study, the last centroid obtained through calculations was used to evaluate the k-means by comparing the results of the k-means calculations with the results of psychologists. The results of the K-means evaluation have an accuracy of 73.83% so that the last centroid can be applied to web-based applications that have been created. This mental health clustering model is expected to be able to help the community to get mental health conditions early and reduce the negative stigma that exists and can be used as evaluation material in using social media more wisely.
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