CASIA OpenIR  > 复杂系统认知与决策实验室
Missing data imputation and classification of small sample missing time series data based on gradient penalized adversarial multi-task learning
Liu, Jing-Jing1,2; Yao, Jie-Peng3; Liu, Jin-Hang1,2; Wang, Zhong-Yi1,2,4; Huang, Lan1,2
发表期刊APPLIED INTELLIGENCE
ISSN0924-669X
2024-02-15
页码23
通讯作者Huang, Lan(hlan@cau.edu.cn)
摘要In practice, time series data obtained is usually small and missing, which poses a great challenge to data analysis in different domains, such as increasing the bias of model predictions, reducing the accuracy of model classification, and affecting the analysis data. This paper aims to address the problem of missing data imputation and classification of small sample time series data. By exploring and implementing efficient data interpolation strategies to improve classification accuracy, the robustness and accuracy of classification models in the face of incomplete data. To achieve this, we propose a new model that can effectively classify time series data with missing values. Our model utilizes a bi-directional long short-term memory network combined with an extreme learning machine for the imputation task, which can recover the missing time series values. For the classification task, we employ a self-attentional Inception Time network, which is regularized by a classification loss to effectively mitigate network overfitting. To improve the performance of the model on small sample time series datasets, we use a gradient penalty adversarial training approach. Our model integrates the advantages of multiple network modules, the gradient penalty adversarial multi-task model achieves optimal imputation and robust classification of missing small sample time series data. To evaluate the overall performance of our model, we selected forty datasets from the UCR time series datasets, and selected the German emotional speech datasets and the EEG epilepsy datasets, with the plant electrical signal datasets obtained from real measurements. A series of experiments were conducted to evaluate the effectiveness of our method compared to other methods, the datasets were set up with multiple missing rates, with root mean square error and coefficient of determination to assess the accuracy of imputation, and with accuracy to assess the performance of the classification task. The results show that our proposed method outperforms existing methods in terms of imputation accuracy and classification performance. To better understand the deep learning model, we used the Grad-CAM + + method to enhance the reliability and credibility of the model by visualizing the important features of the temporal data when the plant electrical signal datasets was tested. In summary, this paper presents a model framework for the imputation and classification of missing small sample time series data, and the experimental results show that our model provides an effective solution for dealing with the analysis of missing small sample time series data.
关键词Missing time series data Small samples Imputation Classification Gradient penalized adversarial Multitasking
DOI10.1007/s10489-024-05314-3
关键词[WOS]FAULT-DIAGNOSIS ; NETWORKS ; IMPACT
收录类别SCI
语种英语
资助项目National Natural Science Foundation of China ; Department of Communication Sciences, Technical University of Berlin
项目资助者National Natural Science Foundation of China ; Department of Communication Sciences, Technical University of Berlin
WOS研究方向Computer Science
WOS类目Computer Science, Artificial Intelligence
WOS记录号WOS:001162090700003
出版者SPRINGER
引用统计
文献类型期刊论文
条目标识符http://ir.ia.ac.cn/handle/173211/55622
专题复杂系统认知与决策实验室
通讯作者Huang, Lan
作者单位1.China Agr Univ, Coll Informat & Elect Engn, Beijing 100083, Peoples R China
2.Minist Agr, Key Lab Agr Informat Acquisit Technol Beijing, Beijing 100083, Peoples R China
3.Chinese Acad Sci, Inst Automat, Beijing 100190, Peoples R China
4.Minist Educ, Key Lab Modern Precis Agr Syst Integrat Beijing, Beijing 100083, Peoples R China
推荐引用方式
GB/T 7714
Liu, Jing-Jing,Yao, Jie-Peng,Liu, Jin-Hang,et al. Missing data imputation and classification of small sample missing time series data based on gradient penalized adversarial multi-task learning[J]. APPLIED INTELLIGENCE,2024:23.
APA Liu, Jing-Jing,Yao, Jie-Peng,Liu, Jin-Hang,Wang, Zhong-Yi,&Huang, Lan.(2024).Missing data imputation and classification of small sample missing time series data based on gradient penalized adversarial multi-task learning.APPLIED INTELLIGENCE,23.
MLA Liu, Jing-Jing,et al."Missing data imputation and classification of small sample missing time series data based on gradient penalized adversarial multi-task learning".APPLIED INTELLIGENCE (2024):23.
条目包含的文件
条目无相关文件。
个性服务
推荐该条目
保存到收藏夹
查看访问统计
导出为Endnote文件
谷歌学术
谷歌学术中相似的文章
[Liu, Jing-Jing]的文章
[Yao, Jie-Peng]的文章
[Liu, Jin-Hang]的文章
百度学术
百度学术中相似的文章
[Liu, Jing-Jing]的文章
[Yao, Jie-Peng]的文章
[Liu, Jin-Hang]的文章
必应学术
必应学术中相似的文章
[Liu, Jing-Jing]的文章
[Yao, Jie-Peng]的文章
[Liu, Jin-Hang]的文章
相关权益政策
暂无数据
收藏/分享
所有评论 (0)
暂无评论
 

除非特别说明,本系统中所有内容都受版权保护,并保留所有权利。