NAG Library Function Document
nag_tsa_multi_part_lag_corr (g13dnc)
1 Purpose
nag_tsa_multi_part_lag_corr (g13dnc) calculates the sample partial lag correlation matrices of a multivariate time series. A set of
-statistics and their significance levels are also returned. A call to
nag_tsa_multi_cross_corr (g13dmc) is usually made prior to calling this function in order to calculate the sample cross-correlation matrices.
2 Specification
#include <nag.h> |
#include <nagg13.h> |
void |
nag_tsa_multi_part_lag_corr (Integer k,
Integer n,
Integer m,
const double r0[],
const double r[],
Integer *maxlag,
double parlag[],
double x[],
double pvalue[],
NagError *fail) |
|
3 Description
Let
, for
, denote
observations of a vector of
time series. The partial lag correlation matrix at lag
,
, is defined to be the correlation matrix between
and
, after removing the linear dependence on each of the intervening vectors
. It is the correlation matrix between the residual vectors resulting from the regression of
on the carriers
and the regression of
on the same set of carriers; see
Heyse and Wei (1985).
has the following properties.
(i) |
If follows a vector autoregressive model of order , then for ; |
(ii) |
When , reduces to the univariate partial autocorrelation at lag ; |
(iii) |
Each element of is a properly normalized correlation coefficient; |
(iv) |
When , is equal to the cross-correlation matrix at lag (a natural property which also holds for the univariate partial autocorrelation function). |
Sample estimates of the partial lag correlation matrices may be obtained using the recursive algorithm described in
Wei (1990). They are calculated up to lag
, which is usually taken to be at most
. Only the sample cross-correlation matrices (
, for
) and the standard deviations of the series are required as input to nag_tsa_multi_part_lag_corr (g13dnc). These may be computed by
nag_tsa_multi_cross_corr (g13dmc). Under the hypothesis that
follows an autoregressive model of order
, the elements of the sample partial lag matrix
, denoted by
, are asymptotically Normally distributed with mean zero and variance
. In addition the statistic
has an asymptotic
-distribution with
degrees of freedom. These quantities,
, are useful as a diagnostic aid for determining whether the series follows an autoregressive model and, if so, of what order.
4 References
Heyse J F and Wei W W S (1985) The partial lag autocorrelation function Technical Report No. 32 Department of Statistics, Temple University, Philadelphia
Wei W W S (1990) Time Series Analysis: Univariate and Multivariate Methods Addison–Wesley
5 Arguments
- 1:
k – IntegerInput
On entry: , the dimension of the multivariate time series.
Constraint:
.
- 2:
n – IntegerInput
On entry: , the number of observations in each series.
Constraint:
.
- 3:
m – IntegerInput
On entry:
, the number of partial lag correlation matrices to be computed. Note this also specifies the number of sample cross-correlation matrices that must be contained in the array
r.
Constraint:
.
- 4:
r0[] – const doubleInput
On entry: the sample cross-correlations at lag zero/standard deviations as provided by
nag_tsa_multi_cross_corr (g13dmc), that is,
must contain the
th element of the sample cross-correlation matrix at lag zero if
and the standard deviation of
, for
and
.
- 5:
r[] – const doubleInput
On entry: the sample cross-correlations as provided by
nag_tsa_multi_cross_corr (g13dmc), that is,
must contain the
th element of the sample cross-correlation at lag
, for
,
and
, where series
leads series
.
- 6:
maxlag – Integer *Output
On exit: the maximum lag up to which partial lag correlation matrices (along with
-statistics and their significance levels) have been successfully computed. On a successful exit
maxlag will equal
m. If
MATRIX_ILL_CONDITIONED on exit, then
maxlag will be less than
m.
- 7:
parlag[] – doubleInput/Output
On exit: contains the th element of the sample partial lag correlation matrix at lag , for , and .
- 8:
x[m] – doubleOutput
On exit: contains the -statistic at lag , for .
- 9:
pvalue[m] – doubleOutput
On exit:
contains the significance level of the corresponding
-statistic in
x, for
.
- 10:
fail – NagError *Input/Output
-
The NAG error argument (see
Section 3.6 in the Essential Introduction).
6 Error Indicators and Warnings
- MATRIX_ILL_CONDITIONED
-
The recursive equations used to compute the partial lag correlation matrices are ill-conditioned (they have been computed up to lag ).
- NE_ALLOC_FAIL
-
Dynamic memory allocation failed.
- NE_BAD_PARAM
-
On entry, argument had an illegal value.
- NE_INT
-
On entry, .
Constraint: .
On entry, .
Constraint: .
On entry, .
Constraint: .
- NE_INT_2
-
On entry, and .
Constraint: .
- NE_INTERNAL_ERROR
-
An internal error has occurred in this function. Check the function call and any array sizes. If the call is correct then please contact
NAG for assistance.
7 Accuracy
The accuracy will depend upon the accuracy of the sample cross-correlations.
8 Parallelism and Performance
nag_tsa_multi_part_lag_corr (g13dnc) is threaded by NAG for parallel execution in multithreaded implementations of the NAG Library.
nag_tsa_multi_part_lag_corr (g13dnc) makes calls to BLAS and/or LAPACK routines, which may be threaded within the vendor library used by this implementation. Consult the documentation for the vendor library for further information.
Please consult the
Users' Note for your implementation for any additional implementation-specific information.
The time taken is roughly proportional to .
If you have calculated the sample cross-correlation matrices in the arrays
r0 and
r, without calling
nag_tsa_multi_cross_corr (g13dmc), then care must be taken to ensure they are supplied as described in
Section 5. In particular, for
,
must contain the sample cross-correlation coefficient between
and
.
The function
nag_tsa_multi_auto_corr_part (g13dbc) computes squared partial autocorrelations for a specified number of lags. It may also be used to estimate a sequence of partial autoregression matrices at lags
by making repeated calls to the function with the argument
nk set to
. The
th element of the sample partial autoregression matrix at lag
is given by
when
nk is set equal to
on entry to
nag_tsa_multi_auto_corr_part (g13dbc). Note that this is the ‘Yule–Walker’ estimate. Unlike the partial lag correlation matrices computed by nag_tsa_multi_part_lag_corr (g13dnc), when
follows an autoregressive model of order
, the elements of the sample partial autoregressive matrix at lag
do not have variance
, making it very difficult to spot a possible cut-off point. The differences between these matrices are discussed further by
Wei (1990).
Note that
nag_tsa_multi_auto_corr_part (g13dbc) takes the sample cross-covariance matrices as input whereas this function requires the sample cross-correlation matrices to be input.
10 Example
This example computes the sample partial lag correlation matrices of two time series of length , up to lag . The matrices, their -statistics and significance levels and a plot of symbols indicating which elements of the sample partial lag correlation matrices are significant are printed. Three * represent significance at the % level, two * represent significance at the 1% level and a single * represents significance at the 5% level. The * are plotted above or below the central line depending on whether the elements are significant in a positive or negative direction.
10.1 Program Text
Program Text (g13dnce.c)
10.2 Program Data
Program Data (g13dnce.d)
10.3 Program Results
Program Results (g13dnce.r)