Uses of Interface
edu.cmu.tetrad.algcomparison.statistic.Statistic
Packages that use Statistic
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Uses of Statistic in edu.cmu.tetrad.algcomparison.statistic
Classes in edu.cmu.tetrad.algcomparison.statistic that implement StatisticModifier and TypeClassDescriptionclass
The adjacency precision.class
The adjacency precision.class
The adjacency true positive rate.class
The adjacency precision.class
The adjacency recall.class
The adjacency precision.class
The adjacency precision.class
The adjacency true positive rate.class
Calculates the F1 statistic for adjacencies.class
Ancestor precision.class
Ancestor recall.class
The bidirected true positives.class
The bidirected true positives.class
The arrow precision.class
The arrow precision.class
The adjacency true positive rate.class
The arrow precision.class
The arrow precision.class
The arrow recall.class
The arrow recall.class
The arrow precision.class
The arrow precision.class
The adjacency precision.class
The adjacency precision.class
Difference between the true and estimated BIC scores.class
Difference between the true and estiamted BIC scores.class
Estimated BIC score.class
True BIC score.class
The bidirected true positives.class
The bidirected false negatives.class
The BidirectedLatentPrecision class implements the Statistic interface and represents a statistic that calculates the percentage of bidirected edges in an estimated graph for which a latent confounder exists in the true graph.class
The bidirected edge precision.class
The bidirected edge precision.class
The bidirected true positives.class
The bidirected true positives.class
The bidirected true positives.class
The bidirected true positives.class
The bidirected true positives.class
The bidirected true positives.class
Outputs 1 if the skeleton is correct, 0 if not..class
The bidirected true positives.class
The bidirected true positives.class
The adjacency precision.class
The adjacency precision.class
Records the elapsed time of the algorithm in seconds.class
Calculates the F1 statistic for adjacencies.class
Calculates the F1 statistic for adjacencies.class
Calculates the F1 statistic for arrowheads.class
The bidirected true positives.class
The bidirected true positives.class
Calculates the F1 statistic for adjacencies.class
Estimates whether the p-values under the null are Uniform usign the Markov Checker.class
Estimates whether the p-values under the null are Uniform usign the Markov Checker.class
Return a 1 if the graph is exactly right, 0 otherwise.class
The IDA average squared distance.class
IdaCheckAvgMaxSquaredDiffEstTrue calculates the average maximum squared difference between the estimated and true values for a given data model and graphs.class
Represents a statistic that calculates the average minimum squared difference between the estimated and true values for a given data model and graphs.class
IdaCheckAvgSquaredDifference is a class that implements the Statistic interface.class
IdaMaximumSquaredDifference is a statistic that calculates the "IDA Average Maximum Squared Difference" between a true graph and an estimated graph.class
IdaMinimumSquaredDifference is a statistic that calculates the "IDA Average Minimum Squared Difference" between a true graph and an estimated graph.class
The Implied Arrow Orientation Ratio Est statistic calculates the ratio of the number of implied arrows to the number of arrows in unshielded colliders in the estimated graph.class
The Implied Arrow Orientation Ratio Est statistic calculates the ratio of the number of implied arrows to the number of arrows in unshielded colliders in the estimated graph.class
The Implied Arrow Orientation Ratio Est statistic calculates the ratio of the number of implied arrows to the number of arrows in unshielded colliders in the estimated graph.class
Implies Legal MAGclass
Implementation of the KnowledgeSatisfied class.class
The bidirected true positives.class
The bidirected true positives.class
The bidirected true positives.class
The bidirected true positives.class
Legal PAGclass
The LocalGraphPrecision class implements the Statistic interface and represents the Local Graph Precision statistic.class
LocalGraphRecall implements the Statistic interface and represents the local graph recall statistic.class
Takes a MAG in a PAG using Zhang's method and then reports the MAG DG BIC score for it.class
Takes a MAG in a PAG using Zhang's method and then reports the MAG DG BIC score for it.class
Takes a MAG in a PAG using Zhang's method and then reports the MAG SEM BIC score for it.class
Calculates the Anderson Darling P value for the Markov check of whether the p-values for the estimated graph are distributed as U(0, 1).class
Calculates the Anderson Darling P value for the Markov check of whether the p-values for the estimated graph are distributed as U(0, 1).class
Calculates the Anderson Darling P value for the Markov check of whether the p-values for the estimated graph are distributed as U(0, 1).class
Calculates the Anderson Darling P value for the Markov check of whether the p-values for the estimated graph are distributed as U(0, 1).class
Represents a markov check statistic that calculates the Binomial P value for whether the p-values for the estimated graph are distributed as U(0, 1).class
Represents a markov check statistic that calculates the Binomial P value for whether the p-values for the estimated graph are distributed as U(0, 1).class
Represents a markov check statistic that calculates the Kolmogorov-Smirnoff P value for whether the p-values for the estimated graph are distributed as U(0, 1).class
Represents a markov check statistic that calculates the Kolmogorov-Smirnoff P value for whether the p-values for the estimated graph are distributed as U(0, 1).class
Represents a markov check statistic that calculates the Kolmogorov-Smirnoff P value for whether the p-values for the estimated graph are distributed as U(0, 1).class
Represents a markov check statistic that calculates the Kolmogorov-Smirnoff P value for whether the p-values for the estimated graph are distributed as U(0, 1).class
Calculates the Matthew's correlation coefficient for adjacencies.class
Calculates the Matthew's correlation coefficient for adjacencies.class
Checks whether a PAG is maximal.class
MaximalMag statistic.class
No almost cyclic paths condition.class
No cyclic paths condition.class
The adjacency precision.class
The adjacency precision.class
Number of NOT X~~>Y in true graph for which also NOT X~~>Y in estimated graph.class
Number of NOT X~~>Y in true graph for which also NOT X~~>Y in estimated graph.class
Calculates the F1 statistic for adjacencies.class
The bidirected true positives.class
The bidirected true positives.class
The adjacency precision.class
Represents the NumberEdgesEst statistic, which calculates the number of arrows in the estimated graph.class
Represents the NumberEdgesEst statistic, which calculates the number of arrows not in unshielded colliders in the estimated graph.class
Represents the NumberEdgesEst statistic, which calculates the number of unshielded colliders in the estimated graph.class
Represents the NumberEdgesEst statistic, which calculates the number of edges in the estimated graph.class
Represents the NumberEdgesEst statistic, which calculates the number of edges in colliders in the estimated graph.class
Represents the NumberEdgesEst statistic, which calculates the number of edges in unshielded colliders in the estimated graph.class
The NumberEdgesTrue class is an implementation of the Statistic interface.class
Prints the number of edges in the estimated graph.class
Prints the number of edges in the true graph.class
Represents the NumberEdgesEst statistic, which calculates the number of tails in the estimated graph.class
Represents the NumberEdgesEst statistic, which calculates the number of unshielded colliders in the estimated graph.class
The bidirected edge precision.class
The adjacency precision.class
The adjacency precision.class
The bidirected true positives.class
The bidirected true positives.class
The bidirected true positives.class
The bidirected true positives.class
The bidirected true positives.class
The bidirected true positives.class
The bidirected true positives.class
The bidirected true positives.class
The bidirected true positives.class
The bidirected true positives.class
The bidirected true positives.class
The bidirected true positives.class
Counts the number of X<->Y edges for which a latent confounder of X and Y exists.class
The bidirected true positives.class
The bidirected true positives.class
Represents a statistic that calculates the number of correct visible ancestors in the true graph that are also visible ancestors in the estimated graph.class
The number of covering adjacencies in an estimated PAG compared to the true PAG.class
The bidirected true positives.class
The bidirected true positives.class
The bidirected true positives.class
The bidirected true positives.class
The bidirected true positives.class
The bidirected true positives.class
The bidirected true positives.class
Number of X-->Y in est.class
The bidirected true positives.class
The bidirected true positives.class
The bidirected true positives.class
The number of adjacencies in the estimated graph but not in the true graph.class
The number of genuine adjacencies in an estimated PAG compared to the true PAG.class
The bidirected true positives.class
The bidirected true positives.class
The bidirected true positives.class
The bidirected true positives.class
Number of X---Y in est.class
Number of parameters for a discrete Bayes model of the data.class
Number of Xo->Y in est.class
The bidirected true positives.class
Number of X---Y in est.class
NumVisibleEdgeEst is a class that implements the Statistic interface.class
Represents a statistic that calculates the number of correct visible ancestors in the true graph that are also visible ancestors in the estimated graph.class
A class that implements the Statistic interface to calculate the number of visible edges in the true PAG.class
The orientation precision.class
Represents an implementation of the Statistic interface that calculates the Orientation Recall.class
The PagAdjacencyPrecision class implements the Statistic interface and represents the adjacency precision compared to the true PAG (Partially Ancestral Graph).class
A class that implements the PagAdjacencyRecall statistic.class
Adds a column to the output table in which values for the given parameter are listed.class
The adjacency precision.class
The adjacency precision.class
Proportion of semi(X, Y) in estimated graph for which there is no semi(Y, X) in true graph.class
Proportion of semi(X, Y) in true graph for which there is no semi(Y, Z) in estimated graph.class
Estimates whether the p-values under the null are Uniform usign the Markov Checker.class
Estimates whether the p-values under the null are Uniform using the Markov Checker.class
Calculates the F1 statistic for adjacencies.class
The bidirected true positives.class
A class implementing the Semidirected-Rec statistic.class
Calculates the structural Hamming distance (SHD) between the estimated graph and the true graph.class
TailPrecision is a class that implements the Statistic interface.class
Implements the TailRecall statistic, which calculates the tail recall value for a given true graph, estimated graph, and data model.class
Represents the statistic of False Negatives for Arrows compared to the true DAG.class
The class TrueDagFalseNegativesTails implements the Statistic interface to calculate the number of false negatives for tails compared to the true Directed Acyclic Graph (DAG).class
Represents a statistic that calculates the false positives for arrows compared to the true directed acyclic graph (DAG).class
TrueDagFalsePositiveTails is a class that implements the Statistic interface.class
The proportion of X*->Y in the estimated graph for which there is no path Y~~>X in the true graph.class
A class that implements the Statistic interface to calculate the proportion of X-->Y edges in the estimated graph for which there is a path X~~>Y in the true graph.class
The bidirected true positives.class
The bidirected true positives.class
The bidirected true positives.class
The bidirected true positives.class
The bidirected true positives.class
The 2-cycle precision.class
The 2-cycle precision.class
The 2-cycle precision.class
The 2-cycle recall.class
The 2-cycle precision.Methods in edu.cmu.tetrad.algcomparison.statistic that return types with arguments of type StatisticMethods in edu.cmu.tetrad.algcomparison.statistic with parameters of type Statistic