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Missing Value Imputation Based on Gaussian Mixture Model for the Internet of Things

Author

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  • Xiaobo Yan
  • Weiqing Xiong
  • Liang Hu
  • Feng Wang
  • Kuo Zhao

Abstract

This paper addresses missing value imputation for the Internet of Things (IoT). Nowadays, the IoT has been used widely and commonly by a variety of domains, such as transportation and logistics domain and healthcare domain. However, missing values are very common in the IoT for a variety of reasons, which results in the fact that the experimental data are incomplete. As a result of this, some work, which is related to the data of the IoT, can’t be carried out normally. And it leads to the reduction in the accuracy and reliability of the data analysis results. This paper, for the characteristics of the data itself and the features of missing data in IoT, divides the missing data into three types and defines three corresponding missing value imputation problems. Then, we propose three new models to solve the corresponding problems, and they are model of missing value imputation based on context and linear mean (MCL), model of missing value imputation based on binary search (MBS), and model of missing value imputation based on Gaussian mixture model (MGI). Experimental results showed that the three models can improve the accuracy, reliability, and stability of missing value imputation greatly and effectively.

Suggested Citation

  • Xiaobo Yan & Weiqing Xiong & Liang Hu & Feng Wang & Kuo Zhao, 2015. "Missing Value Imputation Based on Gaussian Mixture Model for the Internet of Things," Mathematical Problems in Engineering, Hindawi, vol. 2015, pages 1-8, March.
  • Handle: RePEc:hin:jnlmpe:548605
    DOI: 10.1155/2015/548605
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    Cited by:

    1. Yingpeng Fu & Hongjian Liao & Longlong Lv, 2021. "A Comparative Study of Various Methods for Handling Missing Data in UNSODA," Agriculture, MDPI, vol. 11(8), pages 1-28, July.

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