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When Can Association Graphs Admit A Causal Interpretation?
, 1993
"... This paper provides conditions and procedures for deciding if patterns of independencies found in covariance and concentration matrices can be generated by a stepwise recursive process represented by some directed acyclic graph. If such an agreement is found, we know that one or several causal proce ..."
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Cited by 18 (4 self)
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This paper provides conditions and procedures for deciding if patterns of independencies found in covariance and concentration matrices can be generated by a stepwise recursive process represented by some directed acyclic graph. If such an agreement is found, we know that one or several causal processes could be responsible for the observed independencies, and our procedures could then be used to elucidate the graphical structure common to these processes, so as to evaluate their compatibility against substantive knowledge of the domain. If we find that the observed pattern of independencies does not agree with any stepwise recursive process, then there are a number of different possibilities. For instance,  some weak dependencies could have been mistaken for independencies and led to the wrong omission of edges from the covariance or concentration graphs.  some of the observed linear dependencies reflect accidental cancellations or hide actual nonlinear relations, or  the process responsible for the data is nonrecursive, involving aggregated variables, simultenous reciprocal interactions, or mixtures of several causal processes. In order to recognize accidental independencies it would be helpful to conduct several longitudinal studies under slightly varying conditions. In such studies the covariances for the same set of variables is estimated under different conditions and the variations in the conditions would typically affect the numerical values of the parameters. But, if the data were generated by a causal process represented by some directed acyclic graph, then the basic structural properties reflected in the missing edges of that graph should remain unchanged. Under such assumptions, the pattern of independencies that is "implied" by the dag (see Definitio...
The Professional Career Of Sociologists: A Graphical Chain Model Reflecting Early Influences And Associations
, 1997
"... this paper we analyze data on the occupational careers of sociologists. The complexity of the underlying research question is taken into account by modelling the associations using socalled graphical chain models. These models are in general constructed such that conditional independencies can be ..."
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Cited by 3 (1 self)
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this paper we analyze data on the occupational careers of sociologists. The complexity of the underlying research question is taken into account by modelling the associations using socalled graphical chain models. These models are in general constructed such that conditional independencies can be concluded from the corresponding graph. We present the different steps in formulating the dependence structure. For checking its appropriateness, a model selection strategy is applied based on regression techniques. The final graph gives essential hints with respect to early determinants for professional success. 1. INTRODUCTION Observational studies in the social sciences usually obtain a considerable number of variables for each individual under investigation. The analysis of dependencies and associations among the variables can be fairly easy in some situations, but in most cases it is very likely that the use of more sophisticated multivariate statistical