Title :
Estimation of causal structures in longitudinal data using non-Gaussianity
Author :
Kadowaki, Kazunori ; Shimizu, Shogo ; Washio, Takashi
Author_Institution :
Inst. of Sci. & Ind. Res., Osaka Univ., Ibaraki, Japan
Abstract :
Recently, there is a growing need for statistical learning of causal structures in data with many variables. A structural equation model called Linear Non-Gaussian Acyclic Model (LiNGAM) has been extensively studied to uniquely estimate causal structures in data. The key assumptions are that external influences are independent and follow non-Gaussian distributions. However, LiNGAM does not capture temporal structural changes in observed data. In this paper, we consider learning causal structures in longitudinal data that collects samples over a period of time. In previous studies of LiNGAM, there was no model specialized to handle longitudinal data with multiple samples. Therefore, we propose a new model called longitudinal LiNGAM and a new estimation method using the information on temporal structural changes and non-Gaussianity of data. The new approach requires less assumptions than previous methods.
Keywords :
Gaussian distribution; data structures; estimation theory; LiNGAM; causal structures; estimation method; linear nonGaussian acyclic model; longitudinal data; nonGaussian distributions; nonGaussianity; statistical learning; structural equation model; temporal structural changes; Algorithm design and analysis; Data models; Equations; Estimation; Mathematical model; Periodic structures; Vectors; autoregressive model; non-Gaussianity; structural equation models;
Conference_Titel :
Machine Learning for Signal Processing (MLSP), 2013 IEEE International Workshop on
Conference_Location :
Southampton
DOI :
10.1109/MLSP.2013.6661912