erf
Returns the error function of x.
Syntax
erf(x)
Inputs
- x
- Any scalar or real matrix.
Outputs
- R
Example
Simple erf example:
erf([0.3, -0.01, 1.1;-0.3, 1, 2])
R = [ 0.328627 -0.0112834 0.880205 ; -0.328627 0.842701 0.995322 ]
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The Reference Guide contains documentation for all functions supported in the OpenMatrix language.
Returns the error function of x.
Returns the error function of x.
erf(x)
Simple erf example:
erf([0.3, -0.01, 1.1;-0.3, 1, 2])
R = [ 0.328627 -0.0112834 0.880205 ; -0.328627 0.842701 0.995322 ]
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