2011
DOI: 10.1016/j.csda.2011.02.017
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A simple algorithm for checking compatibility among discrete conditional distributions

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Cited by 11 publications
(6 citation statements)
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“…The advantage of chained equations imputation is that we do not need to specify the joint distribution of the variables. In cases where it is not known that there is a joint distribution, several methods for checking compatibility have been proposed (e.g., [ 16 , 31 - 35 ]). In practice, these methods are either limited to discrete distributions or are difficult to apply for multivariate distributions of more than 2 or 3 dimensions.…”
Section: Discussionmentioning
confidence: 99%
“…The advantage of chained equations imputation is that we do not need to specify the joint distribution of the variables. In cases where it is not known that there is a joint distribution, several methods for checking compatibility have been proposed (e.g., [ 16 , 31 - 35 ]). In practice, these methods are either limited to discrete distributions or are difficult to apply for multivariate distributions of more than 2 or 3 dimensions.…”
Section: Discussionmentioning
confidence: 99%
“…and p(X ∪ Y ) are substantially equivalent, since the latter (under suitable conditions) may be recovered from the former through lightening-and-promotion, as shown by Lemma 2(v) (Kuo and Wang, 2011, pp. 2460-2461.…”
Section: Compatibility Of Probability Kernels and Sure Compatibility mentioning
confidence: 92%
“…, m. Another limitation is its expensiveness, as the acceptance of the compatibility hypothesis requires a test (with positive result) on each cycle within the graph (T • , E, R). Algorithms may be devised to simplify this testing process by exploiting redundancies implicit in the graph (Wang and Kuo, 2010;Kuo and Wang, 2011;Yao, Chen and Wang, 2014). Lastly we remark that, of the cases covered by Theorem 3, special notice should be given to the case in which the conditioned variables Y 1 , .…”
Section: Compatibility Beyond Structural Assurance: the Multiple Kernmentioning
confidence: 99%
“…The problem of characterizing a joint distribution by a collection of compatible CSDs has been extensively studied in the past two decades (see Refs . For more recent development, see Refs ).…”
Section: Conditionally Specified Distributionsmentioning
confidence: 99%