Features Fusion Framework for Multimodal Irregular Time-series Events

Peiwang Tang, Xianchao Zhang
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引用次数: 2

Abstract

Some data from multiple sources can be modeled as multimodal time-series events which have different sampling frequencies, data compositions, temporal relations and characteristics. Different types of events have complex nonlinear relationships, and the time of each event is irregular. Neither the classical Recurrent Neural Network (RNN) model nor the current state-of-the-art Transformer model can deal with these features well. In this paper, a features fusion framework for multimodal irregular time-series events is proposed based on the Long Short-Term Memory networks (LSTM). Firstly, the complex features are extracted according to the irregular patterns of different events. Secondly, the nonlinear correlation and complex temporal dependencies relationship between complex features are captured and fused into a tensor. Finally, a feature gate are used to control the access frequency of different tensors. Extensive experiments on MIMIC-III dataset demonstrate that the proposed framework significantly outperforms to the existing methods in terms of AUC (the area under Receiver Operating Characteristic curve) and AP (Average Precision).
多模态不规则时间序列事件特征融合框架
一些来自多个数据源的数据可以建模为具有不同采样频率、数据组成、时间关系和特征的多模态时间序列事件。不同类型的事件具有复杂的非线性关系,各事件发生的时间具有不规则性。经典的递归神经网络(RNN)模型和当前最先进的Transformer模型都不能很好地处理这些特征。提出了一种基于长短期记忆网络的多模态不规则时间序列事件特征融合框架。首先,根据不同事件的不规则模式提取复杂特征;其次,捕获复杂特征之间的非线性相关关系和复杂的时间依赖关系并融合成张量;最后,利用特征门控制不同张量的访问频率。在MIMIC-III数据集上的大量实验表明,该框架在AUC (Receiver Operating Characteristic curve下面积)和AP (Average Precision)方面明显优于现有方法。
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