LEMF:一个具有缺失数据的多变量时间意图识别的端到端模型

Q3 Earth and Planetary Sciences
Zhirui Xie, Hongya Tuo, Junyao Li
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引用次数: 0

摘要

时间序列的处理和应用非常广泛,包括天气预报、交通流量预测和意图识别等任务。然而,在现实中,由于目标遮挡或传感器故障往往会导致数据丢失。许多深度学习模型是为均匀采样的完整数据而设计的,不能直接应用于缺失值的场景。传统的数据预处理方法,如插值和插值,会引入额外的噪声。为了解决这些挑战,我们提出了一个具有可学习嵌入和捕获多维特征(LEMF)的端到端模型。LEMF可以直接处理具有缺失值的真实时间序列。我们利用LE模块来提取更丰富的时间信息,弥补缺失数据的局限性。MF模块可以提取与变量之间关系相关的特征。我们利用这些隐藏表示进行意图识别,这是时间序列分类任务。我们在一个自构建的意图数据集上彻底评估了我们的模型。与基线模型相比,LEMF模型在每个缺失率下的准确率平均提高了10%。此外,我们在两个真实数据集上验证了模型的泛化能力。我们的模型还显示了最优或次优的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
LEMF: an end-to-end model for intention recognition in multivariate time with missing data

The processing and application of time series are widespread, including tasks like weather forecasting, traffic flow prediction and intention recognition. However, in reality, missing data often occurs due to target occlusion or sensor failures. Many deep learning models are designed for uniformly sampled complete data and cannot be directly applied to scenarios with missing values. Traditional data preprocessing methods, such as imputation and interpolation, introduce additional noise. To address these challenges, we propose an end-to-end model with Learnable Embedding and capture Multidimensional Features (LEMF). LEMF can directly handle real-world time series with missing values. We utilize the LE module to extract richer temporal information, compensating for the limitations of missing data. The MF module can extract features related to the relationships between variables. We leverage these hidden representations for intention recognition, which is the time series classification task. We thoroughly evaluate our model on a self-constructed intention dataset. Compared to baseline model, the LEMF model achieved an average of 10% higher accuracy at each missing ratio. Additionally, we validate the model’s generalization capabilities on two real-world datasets. Our model also shows optimal or suboptimal performance.

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来源期刊
Aerospace Systems
Aerospace Systems Social Sciences-Social Sciences (miscellaneous)
CiteScore
1.80
自引率
0.00%
发文量
53
期刊介绍: Aerospace Systems provides an international, peer-reviewed forum which focuses on system-level research and development regarding aeronautics and astronautics. The journal emphasizes the unique role and increasing importance of informatics on aerospace. It fills a gap in current publishing coverage from outer space vehicles to atmospheric vehicles by highlighting interdisciplinary science, technology and engineering. Potential topics include, but are not limited to: Trans-space vehicle systems design and integration Air vehicle systems Space vehicle systems Near-space vehicle systems Aerospace robotics and unmanned system Communication, navigation and surveillance Aerodynamics and aircraft design Dynamics and control Aerospace propulsion Avionics system Opto-electronic system Air traffic management Earth observation Deep space exploration Bionic micro-aircraft/spacecraft Intelligent sensing and Information fusion
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