


STD calculates the standard deviation.
[y,v] = std(x [, opt[, DIM [, W]]])
opt option
0: normalizes with N-1 [default]
provides the square root of best unbiased estimator of the variance
1: normalizes with N,
this provides the square root of the second moment around the mean
otherwise:
best unbiased estimator of the standard deviation (see [1])
DIM dimension
N STD of N-th dimension
default or []: first DIMENSION, with more than 1 element
W weights to compute weighted s.d. (default: [])
if W=[], all weights are 1.
number of elements in W must match size(x,DIM)
y estimated standard deviation
features:
- provides an unbiased estimation of the S.D.
- can deal with NaN's (missing values)
- weighting of data
- dimension argument also in Octave
- compatible to Matlab and Octave
see also: RMS, SUMSKIPNAN, MEAN, VAR, MEANSQ,
References(s):
[1] http://mathworld.wolfram.com/StandardDeviationDistribution.html