Sentiment Analysis from Depression-Related User-Generated Contents from Social Media

Ananna Saha, A. Marouf, Rafayet Hossain
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引用次数: 11

Abstract

In this paper, we try to detect the sentiment levels such as positive, negative and neutral sentiments from depression related posts and comments generated in social media platforms. Social media platforms such as Facebook, Twitter are not only used for communication or building networks among connections, but also are getting useful for supporting needy peoples who are on special need or care in terms of mental support. In Facebook, there are several depression support groups, which are very much effective to provide mental support to the victims. In this paper, we try to formalize the depression-related posts and comments into a concise lexicon database and detect the sentiment levels form each instance. We have segmented the total work into two parts: sentiment detection and applying machine learning algorithms to analyze the ability to detect sentiment from such special category of texts. We have utilized python textblob package to detect the sentiment levels and applied traditional machine learning algorithms such as Naïve Bayes (NB), Decision Tree (DT), Random Forest (RF), Support Vector Machine (SVM), Sequential Minimal Optimization (SMO), Logistic Regression (LR), Adaboost (AB), Bagging (Bg), Stacking (St) and Multilayer Perceptron (MP) on the linguistic features. We have determined the precision, recall, F-measure, accuracy, ROC values for each of the classifiers. Among the classifiers Random Forest has outperformed others showing 60.54% correctly classified instance. We believe such sentiment analysis on special category of texts may lead to further investigation in natural language understandings.
社交媒体中与抑郁症相关的用户生成内容的情绪分析
在本文中,我们试图从社交媒体平台上产生的与抑郁相关的帖子和评论中检测情绪水平,如积极、消极和中性情绪。Facebook、Twitter等社交媒体平台不仅用于沟通或建立人际关系,而且在支持有特殊需要或需要照顾的人的精神支持方面也越来越有用。在Facebook上,有几个抑郁症支持小组,它们非常有效地为受害者提供精神支持。在本文中,我们试图将抑郁症相关的帖子和评论形式化到一个简洁的词汇数据库中,并检测每个实例的情绪水平。我们将整个工作分为两部分:情感检测和应用机器学习算法来分析从这种特殊类别的文本中检测情感的能力。我们利用python textblob包来检测情感水平,并在语言特征上应用了传统的机器学习算法,如Naïve贝叶斯(NB)、决策树(DT)、随机森林(RF)、支持向量机(SVM)、顺序最小优化(SMO)、逻辑回归(LR)、Adaboost (AB)、Bagging (Bg)、Stacking (St)和多层感知器(MP)。我们已经确定了每个分类器的精度,召回率,f测量值,准确度,ROC值。在分类器中,随机森林的分类准确率为60.54%,优于其他分类器。我们相信,这种对特殊类别文本的情感分析,可以为自然语言理解的进一步研究提供基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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