利用 Naïve Bayes 分类器对学生自杀案例进行情感分析

Ainnur Rafli, Kusnawi Kusnawi
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引用次数: 0

摘要

目前,自杀是高等教育中的一个严重问题,尤其是在大学生中,需要采取特别的方法和关注来预防自杀。随着当今科技的发展,情感分析技术可以有效地了解学生的情感和想法,这些情感和想法可能会导致自杀行为或预示着自杀风险。在这项研究中,我们从他在 Twitter 上发布的 1,151 条推文中提取了数据,并将其清理为 817 条。其中有 745 条负面推文和 72 条正面推文。此外,这些数据是通过一种算法实现的,该算法对数据进行了 80:20 的分割,准确率为 90,24%。这就是拉塔数据可视化时经常出现的 "抑郁症"。特别是在印度尼西亚,有很多人因为抑郁而自杀。本研究的目的是了解与学生自杀相关的因素,并确定该算法的有效性和准确性。此外,本研究有望为教育和心理健康环境提供见解,以改进预防策略和更有效的方法
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pemanfaatan Analisis Sentimen Terhadap Kasus Bunuh Diri Mahasiswa Menggunakan Naïve Bayes Classifier
Suicide is currently a serious problem in higher education, especially among university students, and special approaches and attention are required to prevent it. With  today's advances in technology, emotion analysis techniques can be an effective way to understand students' feelings and thoughts that may lead to suicidal behavior or indicate a risk of suicide. For this study, we scraped the data for his 1,151 tweets on Twitter and cleaned it up to 817. Of these, there are 745 negative tweets and 72 positive tweets. Additionally, the data is implemented in an algorithm that performs a data split of 80:20 with an accuracy of 90,24%. That's the "depression" that often appears when visualizing Lata data. Especially in Indonesia, there are many suicides due to depression. The purpose of this study is to understand the factors associated with student suicide and to determine the effectiveness and accuracy of this algorithm. Additionally, this study is expected to provide insights into educational and mental health settings to improve prevention strategies and more effective approaches
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