Risk prediction, as a typical time series modeling problem, is usually achieved by learning trends in markers or historical behavior from sequence data, and has been widely applied in healthcare and finance. In recent years, deep learning models, especially Long Short-Term Memory neural networks (LSTMs), have led to superior performances in such sequence representation learning tasks. Despite that some attention or self-attention based models with time-aware or feature-aware enhanced strategies have achieved better performance compared with other temporal modeling methods, such improvement is limited due to a lack of guidance from global view. To address this issue, we propose a novel end-to-end Hierarchical Global View-guided (HGV) sequence representation learning framework. Specifically, the Global Graph Embedding (GGE) module is proposed to learn sequential clip-aware representations from temporal correlation graph at instance level. Furthermore, following the way of key-query attention, the harmonic $\beta$-attention ($\beta$-Attn) is also developed for making a global trade-off between time-aware decay and observation significance at channel level adaptively. Moreover, the hierarchical representations at both instance level and channel level can be coordinated by the heterogeneous information aggregation under the guidance of global view. Experimental results on a benchmark dataset for healthcare risk prediction, and a real-world industrial scenario for Small and Mid-size Enterprises (SMEs) credit overdue risk prediction in MYBank, Ant Group, have illustrated that the proposed model can achieve competitive prediction performance compared with other known baselines.
翻译:作为典型的时间序列建模问题,风险预测通常通过从序列数据中学习标记或历史行为的趋势而实现,并被广泛应用于医疗保健和金融领域。近年来,深层次学习模式,特别是长期短期记忆神经网络(LSTMs),导致在这种序列代表学习任务方面表现优异。尽管有些关注或自我关注模式,具有时间认知或地貌强化战略,与其他时间建模方法相比,取得了更好的业绩,但由于缺乏全球观点的指导,这种改进也有限。为了解决这一问题,我们提出了一个新的端到端的高层次竞争性预测全球视图指导(HGV)序列代表学习框架。具体地说,全球图表嵌嵌入式模块是为了学习从时间相关性图表中得出的连续短视表现。此外,在关键关注方式之后,由于从全球角度出发,以美元为单位(Beta美元-Attn)为单位,这种改进也由于缺乏全球观点的指导。为了在时间认知到端的全球高层次、高端全球高端预测(HGEV)级预测中进行时间到观测意义,在数据水平上,可以对数据库进行等级分析,在数据水平上,在数据定位上,在数据定位上,在数据定位上,可以对数据库进行排序分析,对数据进行排序进行。