The max-min hill-climbing Bayesian network structure learning algorithm

Machine Learning - Tập 65 Số 1 - Trang 31-78 - 2006
Ioannis Tsamardinos1, Laura E. Brown1, Constantin F. Aliferis1
1Discovery Systems Laboratory, Dept. of Biomedical Informatics, Vanderbilt University, 2209 Garland Avenue, Nashville, TN, 37232-8340

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