학술논문

Time Series Data and Recent Imputation Techniques for Missing Data: A Review
Document Type
Conference
Source
2022 International Conference on Green Energy, Computing and Sustainable Technology (GECOST) Green Energy, Computing and Sustainable Technology (GECOST), 2022 International Conference on. :346-350 Oct, 2022
Subject
Communication, Networking and Broadcast Technologies
Components, Circuits, Devices and Systems
Computing and Processing
Engineered Materials, Dielectrics and Plasmas
Power, Energy and Industry Applications
Robotics and Control Systems
Signal Processing and Analysis
Radio frequency
Sequential analysis
Time series analysis
Predictive models
Multivariate regression
Data models
Time measurement
data imputation
deep learning
machine learning
sparse data
univariate time series data
Language
Abstract
The development of multisensory systems and the ongoing application of data collection technologies have both contributed to the explosion of time series data. However, due to many factors, undesirable missing data points are often encountered. The inability to analyse and model the missing data greatly hinders categorization and forecasting activities. Traditional techniques for processing time series data frequently add bias and make significant assumptions about the underlying data creation process, which can result in inaccurate development of prediction or classification models. The characteristic of the time series data needs to be well understood before applying the correct approach for imputation. This study aims to brief the types of time series data, and missing data mechanisms and also reviews several approaches to filling data gaps that are convenient for time series data. The review highlights current approaches in handling missing values at the data pre-processing stage for univariate and multivariate time series data together with the methods used to evaluate the performance of the imputation approach. It includes some advantages and drawbacks of these approaches practically. The results provide information which can be used to further develop a new imputation approach.