Normdf: Difference between revisions

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This distribution is used for many data types including physical attributes and sums of quantities. It is a symmetric distribution and the variance can be smaller, equal, or larger than the mean.
This distribution is used for many data types including physical attributes and sums of quantities. It is a symmetric distribution and the variance can be smaller, equal, or larger than the mean.
   
   
INPUTS:
====INPUTS====
* function =  [ {'cumulative'} | 'density' | 'quantile' | 'random' ], defines the functionality to be used. Note that the function recognizes the first letter of each string so that the string could be: [ 'c' | 'd' | 'q' | 'r' ].
* '''function''' =  [ {'cumulative'} | 'density' | 'quantile' | 'random' ], defines the functionality to be used. Note that the function recognizes the first letter of each string so that the string could be: [ 'c' | 'd' | 'q' | 'r' ].
* x = matrix in which the sample data is stored, in the interval (-inf,inf).  
* '''x''' = matrix in which the sample data is stored, in the interval (-inf,inf).  
*  for function=quantile - matrix with values in the interval (0,1).
'''for''' function=quantile - matrix with values in the interval (0,1).
*  for function=random - vector indicating the size of the random matrix to create.
'''for''' function=random - vector indicating the size of the random matrix to create.
* a = mode/location parameter (real).
* '''a''' = mode/location parameter (real).
*  b = scale parameter (real and positive).
'''b''' = scale parameter (real and positive).
'''Note''': If inputs (x, a, and b) are not equal in size, the function will attempt to resize all inputs to the largest input using the RESIZE function.  
'''Note''': If inputs (x, a, and b) are not equal in size, the function will attempt to resize all inputs to the largest input using the RESIZE function.  
'''Note''': Functions will typically allow input values outside of the acceptable range to be passed but such values will return NaN in the results.  
'''Note''': Functions will typically allow input values outside of the acceptable range to be passed but such values will return NaN in the results.  

Revision as of 20:57, 2 September 2008

Purpose

Normal / Gaussian distribution.

Synopsis

prob = normdf(function,x,a,b)

Description

Estimates cumulative distribution function (cumulative, cdf), probability density function (density, pdf), quantile (inverse of cdf), or random numbers for a Normal distribution. This distribution is used for many data types including physical attributes and sums of quantities. It is a symmetric distribution and the variance can be smaller, equal, or larger than the mean.

INPUTS

  • function = [ {'cumulative'} | 'density' | 'quantile' | 'random' ], defines the functionality to be used. Note that the function recognizes the first letter of each string so that the string could be: [ 'c' | 'd' | 'q' | 'r' ].
  • x = matrix in which the sample data is stored, in the interval (-inf,inf).
  • for function=quantile - matrix with values in the interval (0,1).
  • for function=random - vector indicating the size of the random matrix to create.
  • a = mode/location parameter (real).
  • b = scale parameter (real and positive).

Note: If inputs (x, a, and b) are not equal in size, the function will attempt to resize all inputs to the largest input using the RESIZE function. Note: Functions will typically allow input values outside of the acceptable range to be passed but such values will return NaN in the results.

Examples

Cumulative:

>> prob = normdf('c',[1.9600 2.5758]) ans =

   0.9750    0.9950

>> x = -5:.1:5; >> plot(x,normdf('c',x,0,1)), vline([ 0 ; normdf('q',[0.975; 0.995],0,1)])

Density:

>> prob = normdf('d',[1.9600 2.5758],0,1) ans =

   0.0584    0.0145

>> x = -5:.1:5; >> plot(x,normdf('d',x,0,1)), vline([0; normdf('q',[0.975; 0.995],0,1)])

Quantile:

>> ans =

   1.9600    2.5758

Random:

>> prob = normdf('r',[4 1],0,1) ans =

  -0.4326
  -1.6656
   0.1253
   0.2877

See Also

betadr, cauchydf, chidf, expdf, gammadf, gumbeldf, laplacedf, logisdf, lognormdf, paretodf, raydf, triangledf, unifdf, weibulldf