Durbin watson: Difference between revisions

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===Purpose===
===Purpose===


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===Description===
===Description===


The durbin watson criteria for the columns of x are calculated as the ratio of the sum of the first derivative of a vector to the sum of the vector itself. Low values means correlation in variables, high values indicates randomness. Input x is a column vector or array in which each column represents a vector of interest. Output y is a scalar or vector of Durbin Watson measures.
The Durbin Watson criteria for the columns of <tt>x</tt> are calculated as the ratio of the sum of the first derivative of a vector to the sum of the vector itself. Low values means correlation in variables, high values indicates randomness. Input <tt>x</tt> is a column vector or array in which each column represents a vector of interest. Output <tt>y</tt> is a scalar or vector of Durbin Watson measures.
 
====Inputs====
 
* '''x''': column vector or array where each column represents the vector of interest
 
====Outputs====
 
* '''y''': scalar or vector of Durbin Watson measures


===See Also===
===See Also===


[[coda_dw]]
[[coda_dw]]

Latest revision as of 16:45, 8 October 2008

Purpose

Criterion for measure of continuity.

Synopsis

y = durbin_watson(x)

Description

The Durbin Watson criteria for the columns of x are calculated as the ratio of the sum of the first derivative of a vector to the sum of the vector itself. Low values means correlation in variables, high values indicates randomness. Input x is a column vector or array in which each column represents a vector of interest. Output y is a scalar or vector of Durbin Watson measures.

Inputs

  • x: column vector or array where each column represents the vector of interest

Outputs

  • y: scalar or vector of Durbin Watson measures

See Also

coda_dw