Suicide and self-harm prediction based on social media data using machine learning algorithms

Abdulrazak Yahya Saleh, Fadzlyn Nasrini Binti Mostapa
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Abstract

Online social networking (SN) data is a context and time rich data stream that has showed potential for predicting suicidal ideation and behaviour. Despite the obvious benefits of this digital media, predictive modelling of acute suicidal ideation (SI) remains underdeveloped at now. In combined with robust machine learning algorithms, social networking data may provide a potential path ahead. Researchers applied a machine learning models to a previously published Instagram dataset of youths. Using predictors that reflect language use and activity inside this social networking, researchers compared the performance of the out-of-sample, cross-validated model to that of earlier efforts and used a model explanation to further investigate relative predictor relevance and subject-level phenomenology. The application of ensemble learning approaches to SN data for the prediction of acute SI may reduce the complications and modelling issues associated with acute SI at these time scales. Future research is required on bigger, more diversified populations to refine digital biomarkers and assess their external validity with more rigor
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基于使用机器学习算法的社交媒体数据的自杀和自残预测
在线社交网络(SN)数据是一个背景和时间丰富的数据流,已显示出预测自杀意念和行为的潜力。尽管这种数字媒体有明显的好处,但急性自杀意念(SI)的预测模型目前仍不发达。与强大的机器学习算法相结合,社交网络数据可能会提供一条潜在的前进道路。研究人员将机器学习模型应用于之前发布的Instagram青少年数据集。研究人员使用反映该社交网络内部语言使用和活动的预测因子,将样本外交叉验证模型的表现与早期的研究结果进行了比较,并使用模型解释来进一步研究相对预测因子的相关性和学科层面的现象学。将集成学习方法应用于SN数据以预测急性SI可能会减少这些时间尺度上与急性SI相关的并发症和建模问题。未来的研究需要在更大、更多样化的人群中进行,以完善数字生物标志物,并更严格地评估其外部有效性
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