ContrAttNet:多变量时间序列数据估算的贡献和关注方法。

IF 1.1 3区 计算机科学 Q4 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Network-Computation in Neural Systems Pub Date : 2024-06-03 DOI:10.1080/0954898X.2024.2360157
Yunfei Yin, Caihao Huang, Xianjian Bao
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引用次数: 0

摘要

多元时间序列数据中缺失值的估算是一项基本且流行的数据处理技术。最近,一些研究利用循环神经网络(RNN)和生成对抗网络(GAN)来估算/填补多元时间序列数据中的缺失值。然而,当面对高缺失率的数据集时,这些方法的估算误差会急剧增加。为此,我们提出了一种基于动态贡献和注意力的神经网络模型,称为 ContrAttNet。ContrAttNet 由三个新模块组成:特征注意模块、iLSTM(估算长短期记忆)模块和 1D-CNN(一维卷积神经网络)模块。ContrAttNet 利用时间信息和空间特征信息预测缺失值,而 iLSTM 则根据缺失值的特征减弱 LSTM 的记忆,以学习不同特征的贡献。此外,特征关注模块引入了基于贡献的关注机制,以计算监督权重。此外,在这些监督权重的影响下,1D-CNN 将时间序列数据视为空间特征进行处理。实验结果表明,ContrAttNet 在多变量时间序列数据的缺失值估算方面优于其他最先进的模型,在基准数据集上的平均 MAPE 为 6%,MAE 为 9%。
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ContrAttNet: Contribution and attention approach to multivariate time-series data imputation.

The imputation of missing values in multivariate time-series data is a basic and popular data processing technology. Recently, some studies have exploited Recurrent Neural Networks (RNNs) and Generative Adversarial Networks (GANs) to impute/fill the missing values in multivariate time-series data. However, when faced with datasets with high missing rates, the imputation error of these methods increases dramatically. To this end, we propose a neural network model based on dynamic contribution and attention, denoted as ContrAttNet. ContrAttNet consists of three novel modules: feature attention module, iLSTM (imputation Long Short-Term Memory) module, and 1D-CNN (1-Dimensional Convolutional Neural Network) module. ContrAttNet exploits temporal information and spatial feature information to predict missing values, where iLSTM attenuates the memory of LSTM according to the characteristics of the missing values, to learn the contributions of different features. Moreover, the feature attention module introduces an attention mechanism based on contributions, to calculate supervised weights. Furthermore, under the influence of these supervised weights, 1D-CNN processes the time-series data by treating them as spatial features. Experimental results show that ContrAttNet outperforms other state-of-the-art models in the missing value imputation of multivariate time-series data, with average 6% MAPE and 9% MAE on the benchmark datasets.

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来源期刊
Network-Computation in Neural Systems
Network-Computation in Neural Systems 工程技术-工程:电子与电气
CiteScore
3.70
自引率
1.30%
发文量
22
审稿时长
>12 weeks
期刊介绍: Network: Computation in Neural Systems welcomes submissions of research papers that integrate theoretical neuroscience with experimental data, emphasizing the utilization of cutting-edge technologies. We invite authors and researchers to contribute their work in the following areas: Theoretical Neuroscience: This section encompasses neural network modeling approaches that elucidate brain function. Neural Networks in Data Analysis and Pattern Recognition: We encourage submissions exploring the use of neural networks for data analysis and pattern recognition, including but not limited to image analysis and speech processing applications. Neural Networks in Control Systems: This category encompasses the utilization of neural networks in control systems, including robotics, state estimation, fault detection, and diagnosis. Analysis of Neurophysiological Data: We invite submissions focusing on the analysis of neurophysiology data obtained from experimental studies involving animals. Analysis of Experimental Data on the Human Brain: This section includes papers analyzing experimental data from studies on the human brain, utilizing imaging techniques such as MRI, fMRI, EEG, and PET. Neurobiological Foundations of Consciousness: We encourage submissions exploring the neural bases of consciousness in the brain and its simulation in machines.
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