TY - GEN
T1 - Granger Causality for Heterogeneous Processes
AU - Behzadi Soheil, Sahar
AU - Hlavackova-Schindler , Katerina
AU - Plant, Claudia
N1 - Publisher Copyright:
© Springer Nature Switzerland AG 2019.
PY - 2019
Y1 - 2019
N2 - Discovery of temporal structures and finding causal interactions among time series have recently attracted attention of the data mining community. Among various causal notions graphical Granger causality is well-known due to its intuitive interpretation and computational simplicity. Most of the current graphical approaches are designed for homogeneous datasets i.e. the interacting processes are assumed to have the same data distribution. Since many applications generate heterogeneous time series, the question arises how to leverage graphical Granger models to detect temporal causal dependencies among them. Profiting from the generalized linear models, we propose an efficient Heterogeneous Graphical Granger Model (HGGM) for detecting causal relation among time series having a distribution from the exponential family which includes a wider common distributions e.g. Poisson, gamma. To guarantee the consistency of our algorithm we employ adaptive Lasso as a variable selection method. Extensive experiments on synthetic and real data confirm the effectiveness and efficiency of HGGM.
AB - Discovery of temporal structures and finding causal interactions among time series have recently attracted attention of the data mining community. Among various causal notions graphical Granger causality is well-known due to its intuitive interpretation and computational simplicity. Most of the current graphical approaches are designed for homogeneous datasets i.e. the interacting processes are assumed to have the same data distribution. Since many applications generate heterogeneous time series, the question arises how to leverage graphical Granger models to detect temporal causal dependencies among them. Profiting from the generalized linear models, we propose an efficient Heterogeneous Graphical Granger Model (HGGM) for detecting causal relation among time series having a distribution from the exponential family which includes a wider common distributions e.g. Poisson, gamma. To guarantee the consistency of our algorithm we employ adaptive Lasso as a variable selection method. Extensive experiments on synthetic and real data confirm the effectiveness and efficiency of HGGM.
UR - http://www.scopus.com/inward/record.url?scp=85065035395&partnerID=8YFLogxK
U2 - 10.1007/978-3-030-16142-2_36
DO - 10.1007/978-3-030-16142-2_36
M3 - Contribution to proceedings
SN - 978-3-030-16141-5
T3 - Lecture Notes in Computer Science
SP - 463
EP - 475
BT - Advances in Knowledge Discovery and Data Mining
A2 - Yang, Qiang
A2 - Zhou, Zhi-Hua
A2 - Gong, Zhiguo
A2 - Zhang, Min-Ling
A2 - Huang, Sheng-Jun
PB - Springer
CY - Cham
ER -