jhplot.stat
Class MutualInformation
- java.lang.Object
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- jhplot.stat.MutualInformation
 
 
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public abstract class MutualInformation extends java.lang.ObjectImplements common discrete Mutual Information functions. Provides: Mutual Information I(X;Y), Conditional Mutual Information I(X,Y|Z). Defaults to log_2, and so the entropy is calculated in bits. 
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Method Summary
All Methods Static Methods Concrete Methods Modifier and Type Method and Description static doublecalculateConditionalMutualInformation(double[] firstVector, double[] secondVector, double[] conditionVector)Calculates the conditional Mutual Information I(X;Y|Z) between two random variables, conditioned on a third.static doublecalculateMutualInformation(double[] firstVector, double[] secondVector)Calculates the Mutual Information I(X;Y) between two random variables. 
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Method Detail
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calculateMutualInformation
public static double calculateMutualInformation(double[] firstVector, double[] secondVector)Calculates the Mutual Information I(X;Y) between two random variables. Uses histograms to estimate the probability distributions, and thus the information. The mutual information is bounded 0 ≤ I(X;Y) ≤ min(H(X),H(Y)). It is also symmetric, so I(X;Y) = I(Y;X).- Parameters:
 firstVector- Input vector (X). It is discretised to the floor of each value before calculation.secondVector- Input vector (Y). It is discretised to the floor of each value before calculation.- Returns:
 - The Mutual Information I(X;Y).
 
 
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calculateConditionalMutualInformation
public static double calculateConditionalMutualInformation(double[] firstVector, double[] secondVector, double[] conditionVector)Calculates the conditional Mutual Information I(X;Y|Z) between two random variables, conditioned on a third. Uses histograms to estimate the probability distributions, and thus the information. The conditional mutual information is bounded 0 ≤ I(X;Y) ≤ min(H(X|Z),H(Y|Z)). It is also symmetric, so I(X;Y|Z) = I(Y;X|Z).- Parameters:
 firstVector- Input vector (X). It is discretised to the floor of each value before calculation.secondVector- Input vector (Y). It is discretised to the floor of each value before calculation.conditionVector- Input vector (Z). It is discretised to the floor of each value before calculation.- Returns:
 - The conditional Mutual Information I(X;Y|Z).
 
 
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