Missing Value Imputation for Multi-Attribute Sensor Data Streams via Message Propagation

Author:

Li Xiao1,Li Huan2,Luf Hua1,Jensen Christian S.3,Pandey Varun4,Markl Volker5

Affiliation:

1. Roskilde University, Denmark

2. Zhejiang University, China

3. Aalborg University, Denmark

4. TU Berlin, Germany

5. TU Berlin, BIFOLD, Germany

Abstract

Sensor data streams occur widely in various real-time applications in the context of the Internet of Things (IoT). However, sensor data streams feature missing values due to factors such as sensor failures, communication errors, or depleted batteries. Missing values can compromise the quality of real-time analytics tasks and downstream applications. Existing imputation methods either make strong assumptions about streams or have low efficiency. In this study, we aim to accurately and efficiently impute missing values in data streams that satisfy only general characteristics in order to benefit real-time applications more widely. First, we propose a message propagation imputation network (MPIN) that is able to recover the missing values of data instances in a time window. We give a theoretical analysis of why MPIN is effective. Second, we present a continuous imputation framework that consists of data update and model update mechanisms to enable MPIN to perform continuous imputation both effectively and efficiently. Extensive experiments on multiple real datasets show that MPIN can outperform the existing data imputers by wide margins and that the continuous imputation framework is efficient and accurate.

Publisher

Association for Computing Machinery (ACM)

Subject

General Earth and Planetary Sciences,Water Science and Technology,Geography, Planning and Development

Reference51 articles.

1. 2023. Extended Version. https://arxiv.org/pdf/2311.07344.pdf.

2. 2023. MPIN project: code and datasets. https://github.com/XLI-2020/MPIN.

3. 2023. SimpleImputer. https://scikit-learn.org/stable/modules/generated/sklearn.impute.SimpleImputer.html.

4. Aurora: a new model and architecture for data stream management

5. Ines Arous, Mourad Khayati, Philippe Cudré-Mauroux, Ying Zhang, Martin L. Kersten, and Svetlin Stalinlov. 2019. RecovDB: Accurate and Efficient Missing Blocks Recovery for Large Time Series. In 35th IEEE International Conference on Data Engineering, ICDE 2019, Macao, China, April 8--11, 2019. IEEE, 1976--1979.

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