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Volumn , Issue , 2007, Pages 66-75

Temporal causal modeling with graphical granger methods

Author keywords

Causal modeling; Graphical models; Time series data

Indexed keywords

CAUSAL MODELING; GRAPHICAL GRANGER METHOD; GRAPHICAL MODELS; TIME SERIES DATA;

EID: 36949024697     PISSN: None     EISSN: None     Source Type: Conference Proceeding    
DOI: 10.1145/1281192.1281203     Document Type: Conference Paper
Times cited : (291)

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