hidden pixel

Correlogram Information

In the analysis of data, a correlogram is an image of correlation statistics. For example, in time series analysis, a correlogram, also known as an autocorrelation plot, is a plot of the sample autocorrelations versus (the time lags).

If cross-correlation is used, the result is called a cross-correlogram. The correlogram is a commonly used tool for checking randomness in a data set. This randomness is ascertained by computing autocorrelations for data values at varying time lags. If random, such autocorrelations should be near zero for any and all time-lag separations. If non-random, then one or more of the autocorrelations will be significantly non-zero.

In addition, correlograms are used in the model identification stage for Box–Jenkins autoregressive moving average time series models. Autocorrelations should be near-zero for randomness; if the analyst does not check for randomness, then the validity of many of the statistical conclusions becomes suspect. The correlogram is an excellent way of checking for such randomness.

Contents

Applications

The correlogram can help provide answers to the following questions:

valid and sufficient?

Importance

Randomness (along with fixed model, fixed variation, and fixed distribution) is one of the four assumptions that typically underlie all measurement processes. The randomness assumption is critically important for the following three reasons:

where s is the standard deviation of the data. Although heavily used, the results from using this formula are of no value unless the randomness assumption holds.

If the data are not random, this model is incorrect and invalid, and the estimates for the parameters (such as the constant) become nonsensical and invalid.

Estimation of autocorrelations

The autocorrelation coefficient at lag h is given by

where ch is the autocovariance function

and c0 is the variance function

The resulting value of rh will range between -1 and +1.

Alternate estimate

Some sources may use the following formula for the autocovariance function:

Although this definition has less bias, the (1/N) formulation has some desirable statistical properties and is the form most commonly used in the statistics literature. See pages 20 and 49-50 in Chatfield for details.

Statistical inference with correlograms

In the same graph one can draw upper and lower bounds for autocorrelation with significance level :

with as the estimated autocorrelation at lag .

If the autocorrelation is higher (lower) than this upper (lower) bound, the null hypothesis that there is no autocorrelation at and beyond a given lag is rejected at a significance level of . This test is an approximate one and assumes that the time-series is Gaussian.

In the above, z1-α/2 is the quantile of the normal distribution; SE is the standard error, which can be computed by Bartlett's formula for MA(l) processes:

for

In the picture above we can reject the null hypothesis that there is no autocorrelation between time-points which are adjacent (lag=1). For the other periods one cannot reject the null hypothesis of no autocorrelation.

Note that there are two distinct formulas for generating the confidence bands:

1. If the correlogram is being used to test for randomness (i.e., there is no time dependence in the data), the following formula is recommended:

where N is the sample size, z is the quantile function of the standard normal distribution and α is the significance level. In this case, the confidence bands have fixed width that depends on the sample size.

2. Correlograms are also used in the model identification stage for fitting ARIMA models. In this case, a moving average model is assumed for the data and the following confidence bands should be generated:

where k is the lag. In this case, the confidence bands increase as the lag increases.

Software

Correlograms are available in most general purpose statistical software programs. In R, the function acf and pacf can be used to produce such a plot.

Related techniques

External links

Further reading

This article incorporates public domain material from websites or documents of the National Institute of Standards and Technology.

Statistics
Descriptive statistics
Continuous data
Location
Dispersion
Shape
Count data
Summary tables
Dependence
Statistical graphics
Data collection
Designing studies
Survey methodology
Controlled experiment
Uncontrolled studies
Statistical inference
Statistical theory
Bayesian inference
Frequentist inference
Specific tests
General estimation
Correlation and regression analysis
Correlation
Regression analysis
Linear regression
Non-standard predictors
Generalized linear model
Partition of variance
Categorical, multivariate, time-series, or survival analysis
Categorical data
Multivariate statistics
Time series analysis
General
Time domain
Frequency domain
Survival analysis
Applications
Biostatistics
Engineering statistics
Social statistics
Spatial statistics

Categories:

 

The above information uses material from Wikipedia and is licensed under the GNU Free Documentation License.
Some facts may not have been fully verified for accuracy. [Disclaimers]
This page was last archived by our server on Sat May 19 10:13:04 2012.
Displaying this page or its contents does not use any Wikimedia Foundation's resources.
The owners of this site proudly support the Wikimedia Foundation.