@Beta @GwtIncompatible public final class PairedStatsAccumulator extends Object
| Constructor and Description | 
|---|
| PairedStatsAccumulator() | 
| Modifier and Type | Method and Description | 
|---|---|
| void | add(double x,
   double y)Adds the given pair of values to the dataset. | 
| void | addAll(PairedStats values)Adds the given statistics to the dataset, as if the individual values used to compute the
 statistics had been added directly. | 
| long | count()Returns the number of pairs in the dataset. | 
| LinearTransformation | leastSquaresFit()Returns a linear transformation giving the best fit to the data according to
 Ordinary Least Squares linear
 regression of  yas a function ofx. | 
| double | pearsonsCorrelationCoefficient()Returns the Pearson's or
 product-moment correlation coefficient of the values. | 
| double | populationCovariance()Returns the population covariance of the values. | 
| double | sampleCovariance()Returns the sample covariance of the values. | 
| PairedStats | snapshot()Returns an immutable snapshot of the current statistics. | 
| Stats | xStats()Returns an immutable snapshot of the statistics on the  xvalues alone. | 
| Stats | yStats()Returns an immutable snapshot of the statistics on the  yvalues alone. | 
public PairedStatsAccumulator()
public void add(double x, double y)
public void addAll(PairedStats values)
public PairedStats snapshot()
public long count()
public double populationCovariance()
This is guaranteed to return zero if the dataset contains a single pair of finite values. It is not guaranteed to return zero when the dataset consists of the same pair of values multiple times, due to numerical errors.
If the dataset contains any non-finite values (Double.POSITIVE_INFINITY,
 Double.NEGATIVE_INFINITY, or Double.NaN) then the result is Double.NaN.
IllegalStateException - if the dataset is emptypublic final double sampleCovariance()
This is not guaranteed to return zero when the dataset consists of the same pair of values multiple times, due to numerical errors.
If the dataset contains any non-finite values (Double.POSITIVE_INFINITY,
 Double.NEGATIVE_INFINITY, or Double.NaN) then the result is Double.NaN.
IllegalStateException - if the dataset is empty or contains a single pair of valuespublic final double pearsonsCorrelationCoefficient()
x and y values must both have non-zero population variance (i.e.
 xStats().populationVariance() > 0.0 && yStats().populationVariance() > 0.0). The result
 is not guaranteed to be exactly +/-1 even when the data are perfectly (anti-)correlated, due to
 numerical errors. However, it is guaranteed to be in the inclusive range [-1, +1].
 If the dataset contains any non-finite values (Double.POSITIVE_INFINITY,
 Double.NEGATIVE_INFINITY, or Double.NaN) then the result is Double.NaN.
IllegalStateException - if the dataset is empty or contains a single pair of values, or
     either the x and y dataset has zero population variancepublic final LinearTransformation leastSquaresFit()
y as a function of x. The count must be greater than one, and
 either the x or y data must have a non-zero population variance (i.e.
 xStats().populationVariance() > 0.0 || yStats().populationVariance() > 0.0). The result
 is guaranteed to be horizontal if there is variance in the x data but not the y
 data, and vertical if there is variance in the y data but not the x data.
 This fit minimizes the root-mean-square error in y as a function of x. This
 error is defined as the square root of the mean of the squares of the differences between the
 actual y values of the data and the values predicted by the fit for the x
 values (i.e. it is the square root of the mean of the squares of the vertical distances between
 the data points and the best fit line). For this fit, this error is a fraction
 sqrt(1 - R*R) of the population standard deviation of y, where R is the
 Pearson's correlation coefficient (as given by pearsonsCorrelationCoefficient()).
 
The corresponding root-mean-square error in x as a function of y is a
 fraction sqrt(1/(R*R) - 1) of the population standard deviation of x. This fit
 does not normally minimize that error: to do that, you should swap the roles of x and
 y.
 
If the dataset contains any non-finite values (Double.POSITIVE_INFINITY,
 Double.NEGATIVE_INFINITY, or Double.NaN) then the result is
 LinearTransformation.forNaN().
IllegalStateException - if the dataset is empty or contains a single pair of values, or
     both the x and y dataset have zero population varianceCopyright © 2010–2017. All rights reserved.