NAG FL Interface
g08ccf (test_ks_1sample_user)
1
Purpose
g08ccf performs the one sample Kolmogorov–Smirnov distribution test, using a user-specified distribution.
2
Specification
Fortran Interface
Integer, Intent (In) |
:: |
n, ntype |
Integer, Intent (Inout) |
:: |
ifail |
Real (Kind=nag_wp), External |
:: |
cdf |
Real (Kind=nag_wp), Intent (In) |
:: |
x(n) |
Real (Kind=nag_wp), Intent (Out) |
:: |
d, z, p, sx(n) |
|
C Header Interface
#include <nag.h>
void |
g08ccf_ (const Integer *n, const double x[], double (NAG_CALL *cdf)(const double *x), const Integer *ntype, double *d, double *z, double *p, double sx[], Integer *ifail) |
|
C++ Header Interface
#include <nag.h> extern "C" {
void |
g08ccf_ (const Integer &n, const double x[], double (NAG_CALL *cdf)(const double &x), const Integer &ntype, double &d, double &z, double &p, double sx[], Integer &ifail) |
}
|
The routine may be called by the names g08ccf or nagf_nonpar_test_ks_1sample_user.
3
Description
The data consists of a single sample of observations, denoted by . Let and represent the sample cumulative distribution function and the theoretical (null) cumulative distribution function respectively at the point , where is the th smallest sample observation.
The Kolmogorov–Smirnov test provides a test of the null hypothesis
: the data are a random sample of observations from a theoretical distribution specified by you (in
cdf) against one of the following alternative hypotheses.
-
(i): the data cannot be considered to be a random sample from the specified null distribution.
-
(ii): the data arise from a distribution which dominates the specified null distribution. In practical terms, this would be demonstrated if the values of the sample cumulative distribution function tended to exceed the corresponding values of the theoretical cumulative distribution function .
-
(iii): the data arise from a distribution which is dominated by the specified null distribution. In practical terms, this would be demonstrated if the values of the theoretical cumulative distribution function tended to exceed the corresponding values of the sample cumulative distribution function .
One of the following test statistics is computed depending on the particular alternative hypothesis specified (see the description of the argument
ntype in
Section 5).
For the alternative hypothesis
:
- – the largest absolute deviation between the sample cumulative distribution function and the theoretical cumulative distribution function. Formally .
For the alternative hypothesis
:
- – the largest positive deviation between the sample cumulative distribution function and the theoretical cumulative distribution function. Formally .
For the alternative hypothesis
:
- – the largest positive deviation between the theoretical cumulative distribution function and the sample cumulative distribution function. Formally . This is only true for continuous distributions. See Section 9 for comments on discrete distributions.
The standardized statistic,
, is also computed, where
may be
or
depending on the choice of the alternative hypothesis. This is the standardized value of
with no continuity correction applied and the distribution of
converges asymptotically to a limiting distribution, first derived by
Kolmogorov (1933), and then tabulated by
Smirnov (1948). The asymptotic distributions for the one-sided statistics were obtained by
Smirnov (1933).
The probability, under the null hypothesis, of obtaining a value of the test statistic as extreme as that observed, is computed. If
, an exact method given by
Conover (1980) is used. Note that the method used is only exact for continuous theoretical distributions and does not include Conover's modification for discrete distributions. This method computes the one-sided probabilities. The two-sided probabilities are estimated by doubling the one-sided probability. This is a good estimate for small
, that is
, but it becomes very poor for larger
. If
then
is computed using the Kolmogorov–Smirnov limiting distributions; see
Feller (1948),
Kendall and Stuart (1973),
Kolmogorov (1933),
Smirnov (1933) and
Smirnov (1948).
4
References
Conover W J (1980) Practical Nonparametric Statistics Wiley
Feller W (1948) On the Kolmogorov–Smirnov limit theorems for empirical distributions Ann. Math. Statist. 19 179–181
Kendall M G and Stuart A (1973) The Advanced Theory of Statistics (Volume 2) (3rd Edition) Griffin
Kolmogorov A N (1933) Sulla determinazione empirica di una legge di distribuzione Giornale dell' Istituto Italiano degli Attuari 4 83–91
Siegel S (1956) Non-parametric Statistics for the Behavioral Sciences McGraw–Hill
Smirnov N (1933) Estimate of deviation between empirical distribution functions in two independent samples Bull. Moscow Univ. 2(2) 3–16
Smirnov N (1948) Table for estimating the goodness of fit of empirical distributions Ann. Math. Statist. 19 279–281
5
Arguments
-
1:
– Integer
Input
-
On entry: , the number of observations in the sample.
Constraint:
.
-
2:
– Real (Kind=nag_wp) array
Input
-
On entry: the sample observations, .
-
3:
– real (Kind=nag_wp) Function, supplied by the user.
External Procedure
-
cdf must return the value of the theoretical (null) cumulative distribution function for a given value of its argument.
The specification of
cdf is:
Fortran Interface
Real (Kind=nag_wp) |
:: |
cdf |
Real (Kind=nag_wp), Intent (In) |
:: |
x |
|
C Header Interface
double |
cdf_ (const double *x) |
|
C++ Header Interface
#include <nag.h> extern "C" {
double |
cdf_ (const double &x) |
}
|
-
1:
– Real (Kind=nag_wp)
Input
-
On entry: the argument for which
cdf must be evaluated.
cdf must either be a module subprogram USEd by, or declared as EXTERNAL in, the (sub)program from which
g08ccf is called. Arguments denoted as
Input must
not be changed by this procedure.
Note: cdf should not return floating-point NaN (Not a Number) or infinity values, since these are not handled by
g08ccf. If your code inadvertently
does return any NaNs or infinities,
g08ccf is likely to produce unexpected results.
Constraint:
must always return a value in the range
and
cdf must always satify the condition that
for any
.
-
4:
– Integer
Input
-
On entry: the statistic to be calculated, i.e., the choice of alternative hypothesis.
- Computes , to test against .
- Computes , to test against .
- Computes , to test against .
Constraint:
, or .
-
5:
– Real (Kind=nag_wp)
Output
-
On exit: the Kolmogorov–Smirnov test statistic (
,
or
according to the value of
ntype).
-
6:
– Real (Kind=nag_wp)
Output
-
On exit: a standardized value, , of the test statistic, , without the continuity correction applied.
-
7:
– Real (Kind=nag_wp)
Output
-
On exit: the probability,
, associated with the observed value of
, where
may
,
or
depending on the value of
ntype (see
Section 3).
-
8:
– Real (Kind=nag_wp) array
Output
-
On exit: the sample observations, , sorted in ascending order.
-
9:
– Integer
Input/Output
-
On entry:
ifail must be set to
,
. If you are unfamiliar with this argument you should refer to
Section 4 in the Introduction to the NAG Library FL Interface for details.
For environments where it might be inappropriate to halt program execution when an error is detected, the value
is recommended. If the output of error messages is undesirable, then the value
is recommended. Otherwise, if you are not familiar with this argument, the recommended value is
.
When the value is used it is essential to test the value of ifail on exit.
On exit:
unless the routine detects an error or a warning has been flagged (see
Section 6).
6
Error Indicators and Warnings
If on entry
or
, explanatory error messages are output on the current error message unit (as defined by
x04aaf).
Errors or warnings detected by the routine:
-
On entry, .
Constraint: .
-
On entry, .
Constraint: , or .
-
On entry, at
,
.
Constraint:
, where
is supplied in
cdf.
-
On entry, at
,
and at
,
Constraint: when
,
, where
is supplied in
cdf.
An unexpected error has been triggered by this routine. Please
contact
NAG.
See
Section 7 in the Introduction to the NAG Library FL Interface for further information.
Your licence key may have expired or may not have been installed correctly.
See
Section 8 in the Introduction to the NAG Library FL Interface for further information.
Dynamic memory allocation failed.
See
Section 9 in the Introduction to the NAG Library FL Interface for further information.
7
Accuracy
For most cases the approximation for given when has a relative error of less than . The two-sided probability is approximated by doubling the one-sided probability. This is only good for small , that is , but very poor for large . The error is always on the conservative side.
8
Parallelism and Performance
g08ccf is threaded by NAG for parallel execution in multithreaded implementations of the NAG Library.
Please consult the
X06 Chapter Introduction for information on how to control and interrogate the OpenMP environment used within this routine. Please also consult the
Users' Note for your implementation for any additional implementation-specific information.
The time taken by g08ccf increases with until at which point it drops and then increases slowly.
For a discrete theoretical cumulative distribution function
,
. Thus if you wish to provide a discrete distribution function the following adjustment needs to be made,
- for , return as as usual;
- for , return at where is the discrete jump in the distribution. For example for the Poisson or binomial distributions.
10
Example
The following example performs the one sample Kolmogorov–Smirnov test to test whether a sample of observations arise firstly from a uniform distribution or secondly from a Normal distribution with mean and standard deviation . The two-sided test statistic, , the standardized test statistic, , and the upper tail probability, , are computed and then printed for each test.
10.1
Program Text
10.2
Program Data
10.3
Program Results