fb436d48f9
* move the test counter into bnlearn's namespace. * include Tsamardinos' optimizations in mmpc(..., optimized = FALSE), but not backtracking, to make it comparable with other learning algorithms. * check whether the residuals and the fitted values are present before trying to plot a bn.fit{,.gnode} object. * fixed two integer overflows in factors' levels and degrees of freedom in large networks. * added {compelled,reversible}.arcs(). * added the MSE and predictive correlation loss functions to bn.cv(). * use the unbiased estimate of residual variance to compute the standard error in bn.fit(..., method = "mle") (thanks Jean-Baptiste Denis). * revised optimizations in constraint-based algorithms, removing most false positives by sacrificing speed. * fixed warning in cp{dist,query}(). * added support for ordered factors. * implemented the Jonckheere-Terpstra test to support ordered factors in constraint-based structure learning. * added a plot() method for bn.strength objects containing bootstrapped confidence estimates; it prints their ECDF and the estimated significance threshold. * fixed dimension reduction in cpdist(). * reimplemented Gaussian rbn() in C, it's now twice as fast. * improve precision and robustness of (partial) correlations. * remove the old network scripts for network that are now available from www.bnlearn.com/bnrepository. * implemented likelihood weighting in cp{dist,query}(). |
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