학술논문

DTW-Approach for uncorrelated multivariate time series imputation
Document Type
Conference
Source
2017 IEEE 27th International Workshop on Machine Learning for Signal Processing (MLSP) Machine Learning for Signal Processing (MLSP), 2017 IEEE 27th International Workshop on. :1-6 Sep, 2017
Subject
Computing and Processing
Signal Processing and Analysis
Time series analysis
Correlation
Heuristic algorithms
Data models
Ocean temperature
Temperature distribution
Imputation
Uncorrelated multivariate time series
Missing data
Dynamic Time Warping
Similarity measures
Language
Abstract
Missing data are inevitable in almost domains of applied sciences. Data analysis with missing values can lead to a loss of efficiency and unreliable results, especially for large missing sub-sequence(s). Some well-known methods for multivariate time series imputation require high correlations between series or their features. In this paper, we propose an approach based on the shape-behaviour relation in low/un-correlated multivariate time series under an assumption of recurrent data. This method involves two main steps. Firstly, we find the most similar sub-sequence to the sub-sequence before (resp. after) a gap based on the shape-features extraction and Dynamic Time Warping algorithms. Secondly, we fill in the gap by the next (resp. previous) sub-sequence of the most similar one on the signal containing missing values. Experimental results show that our approach performs better than several related methods in case of multivariate time series having low/non-correlations and effective information on each signal.