Suicidal ideation detection from social media is an evolving research with great challenges. Many of the people who have the tendency to suicide share their thoughts and opinions through social media platforms. As part of many researches it is observed that the publicly available posts from social media contain valuable criteria to effectively detect individuals with suicidal thoughts. The most difficult part to prevent suicide is to detect and understand the complex risk factors and warning signs that may lead to suicide. This can be achieved by identifying the sudden changes in a user behavior automatically. Natural language processing techniques can be used to collect behavioral and textual features from social media interactions and these features can be passed to a specially designed framework to detect anomalies in human interactions that are indicators of suicidal intentions. We can achieve fast detection of suicidal ideation using deep learning and/or machine learning based classification approaches. For such a purpose, we can employ the combination of LSTM and CNN models to detect such emotions from posts of the users. In order to improve the accuracy, some approaches like using more data for training, using attention model to improve the efficiency of existing models etc. could be done. This paper proposes a LSTM-Attention-CNN combined model to analyze social media submissions to detect any underlying suicidal intentions. During evaluations, the proposed model demonstrated an accuracy of 90.3 percent and an F1-score of 92.6 percent, which is greater than the baseline models.
翻译:在社交媒体上发现自杀感知的发现是一种不断发展的研究,具有巨大的挑战。许多倾向于自杀倾向的人通过社交媒体平台分享他们的想法和意见。作为许多研究的一部分,我们观察到,社交媒体上公开发布的文章含有有效检测自杀性思想者的宝贵标准。预防自杀的最困难部分是发现和理解可能导致自杀的复杂风险因素和警告信号。这可以通过自动识别用户行为突变来实现。自然语言处理技术可用于收集社交媒体互动中的行为和文字特征,这些特征可以传递到一个专门设计的框架,以发现人类互动中的异常现象,这些异常现象是自杀意图的指标。我们可以通过深层次学习和/或机器学习分类方法快速发现自杀感知。为了达到这一目的,我们可以使用LSTM和CNN模型的结合来检测可能导致自杀的情绪。为了提高准确性,可以使用更多的培训模式,利用关注模式来提高现有模式的效率等方法。本文件提议采用LSTM-CN-AD-N模型, 用于检测任何具有自杀性特征的模型,这是用于分析社会媒体所展示的更大程度的模型。