Depression Analysis from Social Media Data in Bangla Language: An Ensemble Approach

M. B. Mohammed, Abu Saleh Md. Abir, Lubaba Salsabil, Mahir Shahriar, Ahmed Fahmin
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引用次数: 1

Abstract

Depression is a mental illness that has been harming individuals in their daily lives. With the advancement of technology, people rely on social media as means of communication. However, even though social media can significantly impact changing lives, the information from this platform is still considered vague and often disregarded. Moreover, with the hashtags and being on-trend, it is challenging to find depressive posts and help those in need. With the advancement of intelligence technology such as natural language processing and other machine learning algorithms, it has become easier to recognize patterns and ensure an effective digitized solution for depression analysis. There have been numerous studies about depression detection and analysis; however, most of them had not achieved a desirable outcome. Our paper intends to propose a model with a new approach for analyzing depression from Bangla social media posts. In our model, we have proposed a modified feature selection method along with different ensemble learning techniques. We have evaluated the performances of these techniques and acquired that the eXtreme Gradient Boost (XGB) Classifier with a 92.80% accuracy is the most suited for our model.
从孟加拉语的社交媒体数据分析抑郁:一个集成方法
抑郁症是一种精神疾病,在日常生活中一直对个人造成伤害。随着科技的进步,人们依赖社交媒体作为交流的手段。然而,尽管社交媒体可以显著影响改变生活,但这个平台上的信息仍然被认为是模糊的,而且经常被忽视。此外,随着话题标签的流行,找到抑郁的帖子并帮助那些有需要的人是一项挑战。随着自然语言处理和其他机器学习算法等智能技术的进步,识别模式并确保有效的抑郁症分析数字化解决方案变得更加容易。有很多关于抑郁症检测和分析的研究;但是,其中大多数都没有取得理想的结果。我们的论文打算提出一个模型,用一种新的方法来分析孟加拉国社交媒体帖子中的抑郁症。在我们的模型中,我们提出了一种改进的特征选择方法以及不同的集成学习技术。我们已经评估了这些技术的性能,并获得了具有92.80%准确率的极限梯度增强(XGB)分类器最适合我们的模型。
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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