Depression is a prominent health challenge to the world, and early risk detection (ERD) of depression from online posts can be a promising technique for combating the threat. Early depression detection faces the challenge of efficiently tackling streaming data, balancing the tradeoff between timeliness, accuracy and explainability. To tackle these challenges, we propose a psychiatric scale guided risky post screening method that can capture risky posts related to the dimensions defined in clinical depression scales, and providing interpretable diagnostic basis. A Hierarchical Attentional Network equipped with BERT (HAN-BERT) is proposed to further advance explainable predictions. For ERD, we propose an online algorithm based on an evolving queue of risky posts that can significantly reduce the number of model inferences to boost efficiency. Experiments show that our method outperforms the competitive feature-based and neural models under conventional depression detection settings, and achieves simultaneous improvement in both efficacy and efficiency for ERD.
翻译:早期抑郁症检测面临着有效处理流数据、平衡及时性、准确性和可解释性之间的权衡等挑战。为了应对这些挑战,我们建议了一种精神病规模的有风险的后检方法,该方法可以捕捉与临床抑郁程度界定的维度相关的风险职位,并提供可解释的诊断依据。 提议建立一个配备有BERT(HAN-BERT)的高层关注网络,以进一步推进可解释的预测。对于 ERD,我们建议基于不断变化的风险职位排队的在线算法,以大幅降低模型推论数量,提高效率。 实验表明,在常规抑郁症检测环境中,我们的方法超越了有竞争力的基于特征和神经的模式,同时提高了ERD的效能和效率。