TY - JOUR
T1 - The time-dependent intrinsic correlation based on the empirical mode decomposition
AU - Chen, Xianyao
AU - Wu, Zhaohua
AU - Huang, Norden E.
PY - 2010/4
Y1 - 2010/4
N2 - A Time-Dependent Intrinsic Correlation (TDIC) method is introduced. This new approach includes both auto- and cross-correlation analysis designed especially to analyze, capture and track the local correlations between nonlinear and nonstationary time series pairs. The approach is based on Empirical Mode Decomposition (EMD) to decompose the nonlinear and nonstationary data into their intrinsic mode functions (IMFs) and uses the instantaneous periods of the IMFs to determine a set of the sliding window sizes for the computation of the running correlation coefficients for multi-scale data. This new method treats the selection of the sliding window sizes as an adaptive process determined by the data itself, not a "tuning" process. Therefore, it gives an intrinsic correlation analysis of the data. Furthermore, the multi-window approach makes the new method applicable to complicated data from multi-scale phenomena. The synthetic and time series from real world are used to demonstrate conclusively that the new approach is far more superior over the traditional method in its ability to reveal detailed and subtle correlations unavailable through any other methods in existence. Thus, the TDIC represents a major advance in statistical analysis of data from nonlinear and nonstationary processes.
AB - A Time-Dependent Intrinsic Correlation (TDIC) method is introduced. This new approach includes both auto- and cross-correlation analysis designed especially to analyze, capture and track the local correlations between nonlinear and nonstationary time series pairs. The approach is based on Empirical Mode Decomposition (EMD) to decompose the nonlinear and nonstationary data into their intrinsic mode functions (IMFs) and uses the instantaneous periods of the IMFs to determine a set of the sliding window sizes for the computation of the running correlation coefficients for multi-scale data. This new method treats the selection of the sliding window sizes as an adaptive process determined by the data itself, not a "tuning" process. Therefore, it gives an intrinsic correlation analysis of the data. Furthermore, the multi-window approach makes the new method applicable to complicated data from multi-scale phenomena. The synthetic and time series from real world are used to demonstrate conclusively that the new approach is far more superior over the traditional method in its ability to reveal detailed and subtle correlations unavailable through any other methods in existence. Thus, the TDIC represents a major advance in statistical analysis of data from nonlinear and nonstationary processes.
KW - Empirical Mode Decomposition
KW - nonlinear and nonstationary time series
KW - Time-Dependent Intrinsic Auto-correlation
KW - Time-Dependent Intrinsic Correlation
KW - Time-Dependent Intrinsic Cross-correlation
UR - http://www.scopus.com/inward/record.url?scp=79956357196&partnerID=8YFLogxK
U2 - 10.1142/S1793536910000471
DO - 10.1142/S1793536910000471
M3 - 期刊論文
AN - SCOPUS:79956357196
SN - 1793-5369
VL - 2
SP - 233
EP - 265
JO - Advances in Adaptive Data Analysis
JF - Advances in Adaptive Data Analysis
IS - 2
ER -