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    <dc:publisher>Economics: The Open-Access, Open Assessment E-Journal</dc:publisher>
    <dc:publisher>http://www.economics-ejournal.org</dc:publisher>
    <dc:language>en</dc:language>

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<dc:creator>Pu Chen</dc:creator>
<dc:creator>Hsiao Chihying</dc:creator>
<dc:title>Learning Causal Relations in Multivariate Time Series Data</dc:title>
<dc:date>2007-08-27</dc:date>
<dc:description>Applying a probabilistic causal approach, we define a class of time series causal models
(TSCM) based on stationary Bayesian networks. A TSCM can be seen as a structural VAR
identified by the causal relations among the variables. We classify TSCMs into
observationally equivalent classes by providing a necessary and sufficient condition for
the observational equivalence. Applying an automated learning algorithm, we are able to
consistently identify the data-generating causal structure up to the class of
observational equivalence. In this way we can characterize the empirical testable causal
orders among variables based on their observed time series data. It is shown that while an
unconstrained VAR model does not imply any causal orders in the variables, a TSCM that
contains some empirically testable causal orders implies a restricted SVAR model. We also
discuss the relation between the probabilistic causal concept presented in TSCMs and the
concept of Granger causality. It is demonstrated in an application example that this
methodology can be used to construct structural equations with causal interpretations</dc:description>
<dc:identifier>http://www.economics-ejournal.org/economics/journalarticles/2007-11</dc:identifier>
<dc:subject>JEL C1</dc:subject>


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