public class SimpleRegression extends Object implements Serializable, UpdatingMultipleLinearRegression
y = intercept + slope * x
Standard errors for intercept
and slope
are
available as well as ANOVA, r-square and Pearson's r statistics.
Observations (x,y pairs) can be added to the model one at a time or they can be provided in a 2-dimensional array. The observations are not stored in memory, so there is no limit to the number of observations that can be added to the model.
Usage Notes:
NaN
. At least two observations with
different x coordinates are required to estimate a bivariate regression
model.
false
to
the SimpleRegression(boolean)
constructor. When the
hasIntercept
property is false, the model is estimated without a
constant term and getIntercept()
returns 0
.Constructor and Description |
---|
SimpleRegression()
Create an empty SimpleRegression instance
|
SimpleRegression(boolean includeIntercept)
Create a SimpleRegression instance, specifying whether or not to estimate
an intercept.
|
Modifier and Type | Method and Description |
---|---|
void |
addData(double[][] data)
Adds the observations represented by the elements in
data . |
void |
addData(double x,
double y)
Adds the observation (x,y) to the regression data set.
|
void |
addObservation(double[] x,
double y)
Adds one observation to the regression model.
|
void |
addObservations(double[][] x,
double[] y)
Adds a series of observations to the regression model.
|
void |
append(SimpleRegression reg)
Appends data from another regression calculation to this one.
|
void |
clear()
Clears all data from the model.
|
double |
getIntercept()
Returns the intercept of the estimated regression line, if
hasIntercept() is true; otherwise 0. |
double |
getInterceptStdErr()
Returns the
standard error of the intercept estimate,
usually denoted s(b0).
|
double |
getMeanSquareError()
Returns the sum of squared errors divided by the degrees of freedom,
usually abbreviated MSE.
|
long |
getN()
Returns the number of observations that have been added to the model.
|
double |
getR()
Returns
Pearson's product moment correlation coefficient,
usually denoted r.
|
double |
getRegressionSumSquares()
Returns the sum of squared deviations of the predicted y values about
their mean (which equals the mean of y).
|
double |
getRSquare()
Returns the
coefficient of determination,
usually denoted r-square.
|
double |
getSignificance()
Returns the significance level of the slope (equiv) correlation.
|
double |
getSlope()
Returns the slope of the estimated regression line.
|
double |
getSlopeConfidenceInterval()
Returns the half-width of a 95% confidence interval for the slope
estimate.
|
double |
getSlopeConfidenceInterval(double alpha)
Returns the half-width of a (100-100*alpha)% confidence interval for
the slope estimate.
|
double |
getSlopeStdErr()
Returns the standard
error of the slope estimate,
usually denoted s(b1).
|
double |
getSumOfCrossProducts()
Returns the sum of crossproducts, xi*yi.
|
double |
getSumSquaredErrors()
Returns the
sum of squared errors (SSE) associated with the regression
model.
|
double |
getTotalSumSquares()
Returns the sum of squared deviations of the y values about their mean.
|
double |
getXSumSquares()
Returns the sum of squared deviations of the x values about their mean.
|
boolean |
hasIntercept()
Returns true if the model includes an intercept term.
|
double |
predict(double x)
Returns the "predicted"
y value associated with the
supplied x value, based on the data that has been
added to the model when this method is activated. |
RegressionResults |
regress()
Performs a regression on data present in buffers and outputs a RegressionResults object.
|
RegressionResults |
regress(int[] variablesToInclude)
Performs a regression on data present in buffers including only regressors
indexed in variablesToInclude and outputs a RegressionResults object
|
void |
removeData(double[][] data)
Removes observations represented by the elements in
data . |
void |
removeData(double x,
double y)
Removes the observation (x,y) from the regression data set.
|
public SimpleRegression()
public SimpleRegression(boolean includeIntercept)
Use false
to estimate a model with no intercept. When the
hasIntercept
property is false, the model is estimated without a
constant term and getIntercept()
returns 0
.
includeIntercept
- whether or not to include an intercept term in
the regression modelpublic void addData(double x, double y)
Uses updating formulas for means and sums of squares defined in "Algorithms for Computing the Sample Variance: Analysis and Recommendations", Chan, T.F., Golub, G.H., and LeVeque, R.J. 1983, American Statistician, vol. 37, pp. 242-247, referenced in Weisberg, S. "Applied Linear Regression". 2nd Ed. 1985.
x
- independent variable valuey
- dependent variable valuepublic void append(SimpleRegression reg)
The mean update formulae are based on a paper written by Philippe Pébay: Formulas for Robust, One-Pass Parallel Computation of Covariances and Arbitrary-Order Statistical Moments, 2008, Technical Report SAND2008-6212, Sandia National Laboratories.
reg
- model to append data frompublic void removeData(double x, double y)
Mirrors the addData method. This method permits the use of SimpleRegression instances in streaming mode where the regression is applied to a sliding "window" of observations, however the caller is responsible for maintaining the set of observations in the window.
The method has no effect if there are no points of data (i.e. n=0)x
- independent variable valuey
- dependent variable valuepublic void addData(double[][] data) throws MathIllegalArgumentException
data
.
(data[0][0],data[0][1])
will be the first observation, then
(data[1][0],data[1][1])
, etc.
This method does not replace data that has already been added. The
observations represented by data
are added to the existing
dataset.
To replace all data, use clear()
before adding the new
data.
data
- array of observations to be addedMathIllegalArgumentException
- if the length of data[i]
is not
greater than or equal to 2public void addObservation(double[] x, double y) throws MathIllegalArgumentException
addObservation
in interface UpdatingMultipleLinearRegression
x
- the independent variables which form the design matrixy
- the dependent or response variableMathIllegalArgumentException
- if the length of x
does not equal
the number of independent variables in the modelpublic void addObservations(double[][] x, double[] y) throws MathIllegalArgumentException
addObservations
in interface UpdatingMultipleLinearRegression
x
- a series of observations on the independent variablesy
- a series of observations on the dependent variable
The length of x and y must be the sameMathIllegalArgumentException
- if x
is not rectangular, does not match
the length of y
or does not contain sufficient data to estimate the modelpublic void removeData(double[][] data)
data
.
If the array is larger than the current n, only the first n elements are processed. This method permits the use of SimpleRegression instances in streaming mode where the regression is applied to a sliding "window" of observations, however the caller is responsible for maintaining the set of observations in the window.
To remove all data, use clear()
.
data
- array of observations to be removedpublic void clear()
clear
in interface UpdatingMultipleLinearRegression
public long getN()
getN
in interface UpdatingMultipleLinearRegression
public double predict(double x)
y
value associated with the
supplied x
value, based on the data that has been
added to the model when this method is activated.
predict(x) = intercept + slope * x
Preconditions:
Double,NaN
is
returned.
x
- input x
valuey
valuepublic double getIntercept()
hasIntercept()
is true; otherwise 0.
The least squares estimate of the intercept is computed using the normal equations. The intercept is sometimes denoted b0.
Preconditions:
Double,NaN
is
returned.
SimpleRegression(boolean)
public boolean hasIntercept()
hasIntercept
in interface UpdatingMultipleLinearRegression
SimpleRegression(boolean)
public double getSlope()
The least squares estimate of the slope is computed using the normal equations. The slope is sometimes denoted b1.
Preconditions:
Double.NaN
is
returned.
public double getSumSquaredErrors()
The sum is computed using the computational formula
SSE = SYY - (SXY * SXY / SXX)
where SYY
is the sum of the squared deviations of the y
values about their mean, SXX
is similarly defined and
SXY
is the sum of the products of x and y mean deviations.
The sums are accumulated using the updating algorithm referenced in
addData(double, double)
.
The return value is constrained to be non-negative - i.e., if due to rounding errors the computational formula returns a negative result, 0 is returned.
Preconditions:
Double,NaN
is
returned.
public double getTotalSumSquares()
This is defined as SSTO here.
If n < 2
, this returns Double.NaN
.
public double getXSumSquares()
n < 2
, this returns Double.NaN
.public double getSumOfCrossProducts()
public double getRegressionSumSquares()
This is usually abbreviated SSR or SSM. It is defined as SSM here
Preconditions:
Double.NaN
is
returned.
public double getMeanSquareError()
If there are fewer than three data pairs in the model,
or if there is no variation in x
, this returns
Double.NaN
.
public double getR()
Preconditions:
Double,NaN
is
returned.
public double getRSquare()
Preconditions:
Double,NaN
is
returned.
public double getInterceptStdErr()
If there are fewer that three observations in the
model, or if there is no variation in x, this returns
Double.NaN
.
Double.NaN
is
returned when the intercept is constrained to be zeropublic double getSlopeStdErr()
If there are fewer that three data pairs in the model,
or if there is no variation in x, this returns Double.NaN
.
public double getSlopeConfidenceInterval() throws MathIllegalArgumentException
The 95% confidence interval is
(getSlope() - getSlopeConfidenceInterval(),
getSlope() + getSlopeConfidenceInterval())
If there are fewer that three observations in the
model, or if there is no variation in x, this returns
Double.NaN
.
Usage Note:
The validity of this statistic depends on the assumption that the
observations included in the model are drawn from a
Bivariate Normal Distribution.
MathIllegalArgumentException
- if the confidence interval can not be computed.public double getSlopeConfidenceInterval(double alpha) throws MathIllegalArgumentException
The (100-100*alpha)% confidence interval is
(getSlope() - getSlopeConfidenceInterval(),
getSlope() + getSlopeConfidenceInterval())
To request, for example, a 99% confidence interval, use
alpha = .01
Usage Note:
The validity of this statistic depends on the assumption that the
observations included in the model are drawn from a
Bivariate Normal Distribution.
Preconditions:
Double.NaN
.
(0 < alpha < 1)
; otherwise an
MathIllegalArgumentException
is thrown.
alpha
- the desired significance levelMathIllegalArgumentException
- if the confidence interval can not be computed.public double getSignificance()
Specifically, the returned value is the smallest alpha
such that the slope confidence interval with significance level
equal to alpha
does not include 0
.
On regression output, this is often denoted Prob(|t| > 0)
Usage Note:
The validity of this statistic depends on the assumption that the
observations included in the model are drawn from a
Bivariate Normal Distribution.
If there are fewer that three observations in the
model, or if there is no variation in x, this returns
Double.NaN
.
MathIllegalStateException
- if the significance level can not be computed.public RegressionResults regress() throws MathIllegalArgumentException
If there are fewer than 3 observations in the model and hasIntercept
is true
a MathIllegalArgumentException
is thrown. If there is no intercept term, the model must
contain at least 2 observations.
regress
in interface UpdatingMultipleLinearRegression
MathIllegalArgumentException
- if the model is not correctly specifiedMathIllegalArgumentException
- if there is not sufficient data in the model to
estimate the regression parameterspublic RegressionResults regress(int[] variablesToInclude) throws MathIllegalArgumentException
regress
in interface UpdatingMultipleLinearRegression
variablesToInclude
- an array of indices of regressors to includeMathIllegalArgumentException
- if the variablesToInclude array is null or zero lengthMathIllegalArgumentException
- if a requested variable is not present in modelCopyright © 2016–2019 Hipparchus.org. All rights reserved.