Missing Data Imputation with Bayesian Maximum Entropy for Internet of Things Applications
Autor: | Aurora González-Vidal, Jose Mendoza-Bernal, Antonio F. Skarmeta-Gomez, Punit Rathore, Aravinda S. Rao, Marimuthu Palaniswami |
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Rok vydání: | 2020 |
Předmět: |
Observational error
Computer Networks and Communications business.industry Computer science 020206 networking & telecommunications 02 engineering and technology Missing data computer.software_genre Computer Science Applications Hardware and Architecture Robustness (computer science) Missing data imputation Signal Processing Bayesian maximum entropy 0202 electrical engineering electronic engineering information engineering 020201 artificial intelligence & image processing Imputation (statistics) Data mining Internet of Things business Wireless sensor network computer Information Systems |
Zdroj: | IEEE Internet of Things Journal |
ISSN: | 2327-4662 |
DOI: | 10.1109/jiot.2020.2987979 |
Popis: | Internet of Things (IoT) enables the seamless integration of sensors, actuators, and communication devices for real-time applications. IoT systems require good quality sensor data in order to make real-time decisions. However, values are often missing from the sensor data collected owing to faulty sensors, a loss of data during communication, interference, and measurement errors. Considering the spatiotemporal nature of IoT data and the uncertainty of the data collected by sensors, we propose a new framework with which to impute missing values utilizing Bayesian maximum entropy (BME) as a convenient means to estimate the missing data from IoT applications. Missing sensor measurements adversely affect the quality of data, and consequently the performance and outcomes of IoT systems. Our proposed framework incorporates BME in order to impute missing values in diverse IoT scenarios by making use of the combination of low- and high-precision sensors. Our approach can incorporate the measurement errors of low-precision sensors as interval quantities along with the high-precision sensor measurements, making it highly suitable for real-time IoT systems. Our framework is robust to variations in data, requires less execution time, and requires only a single input parameter, thus outperforming existing IoT data imputation methods. The experimental results obtained for three IoT data sets demonstrate the superiority of the BME framework as regards accuracy, running time, and robustness. The framework can additionally be extended to distributed IoT nodes for the online imputation of missing values. |
Databáze: | OpenAIRE |
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