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fanienel
Level I

Weighted Standard Deviation

Hi 

How does JMP calculate a weighted standard deviation (when a variable is  selected in the weighting tab in the Distribution Platform?

Thank you

Fanie 

1 ACCEPTED SOLUTION

Accepted Solutions

Re: Weighted Standard Deviation

It is not a matter of ignorance. There are at least four definitions of the weight standard deviation or variance. The definitions differ only in the denominator that is used. That is to say that the weighted mean and weight sum of squares are the same in all the definitions. JMP only implements one of the four definitions. Other software might implement this definition or one of the others.

View solution in original post

5 REPLIES 5

Re: Weighted Standard Deviation

The calculation is described here: weighted arithmetic mean. Use these formulas to understand the quantities in the results.

 

weighted s.gif

 

Use the script to illustrated the calculation steps. Open the Log before running the scripts.

 

Names Default to Here( 1 );

// open examle
dt = Open( "$SAMPLE_DATA/Big Class.jmp" );

dt << New Column( "Row Weight", Numeric, Continuous,
	Values(
		[0.466037725564092, 3.88878780649975, 2.4091640743427, 2.11785415420309,
		4.79403748759069, 2.30050488375127, 1.58066931064241, 3.18035316769965,
		1.57862229505554, 0.304837201256305, 3.91091752331704, 2.63118736562319,
		3.27893625595607, 3.02616479573771, 1.75871466752142, 1.95901472005062,
		1.4666282152757, 2.11275573237799, 2.02008433057927, 4.89492299617268,
		0.493469994980842, 4.89886545110494, 2.22502982476726, 4.72375275800005,
		0.830245516262948, 1.67820788919926, 3.44848407898098, 4.0259948768653,
		3.2834971731063, 4.52901363372803, 3.88477634754963, 4.72076337435283,
		4.64333190233447, 3.1073961337097, 0.579181439243257, 2.74820194579661,
		0.191317443968728, 2.94498334173113, 2.51307534286752, 1.23225981369615]
	)
);

// launch distribution analysis
biv = dt << Distribution(
	Weight( :row weight ),
	Continuous Distribution(
		Column( :height ),
		Customize Summary Statistics(
			Sum Wgt( 1 ),
			Variance( 1 ),
			Corrected SS( 1 ),
			Set Alpha Level( 0.05 )
		)
	),
	SendToReport(
		Dispatch( {}, "height", OutlineBox, {Set Title( "weighted height" )} )
	)
);

// compute weight standard deviation and show intermediate results
y = :height << Get As Matrix;		// data
w = :row weight << Get As Matrix;	// weights
n = Sum( w );						// sum of weights

wYBar = (w`*y / n)[1];				// weighted average

ss = (w`*(y-wYBar)^2)[1];			// corrected weighted sum of squares
var = ss / (N Row( y )-1);			// weighted variance, unbiased

s = Sqrt( var );					// weighted standard deviation

Show(  wYbar, s, ss, var );			// view all results in Log

 

fanienel
Level I

Re: Weighted Standard Deviation

HI Mark,

Thank you,  I do appreciate your  input.

So, I assume then the  standard deviation printed in the distribution platform  when a weight column  property  has  been set should not be used?

 

Re: Weighted Standard Deviation

Why do you assume that you should not use it?

fanienel
Level I

Re: Weighted Standard Deviation

Hi Mark,

I am drowning in my own ignorance...

I  calculated  the weighted mean of a dataset in Excel and compared it to JMP. The results did not match.

The formula I used in is:

fanienel_0-1618336423371.png

This agrees with the code except:

var = ss / (N Row( y )-1);			// weighted variance, unbiased  

should be:

var = ss / ((N Row( y )-1/N Row(y))*n;			// weighted variance, unbiased

Clearly I do not understand  this.

Thank you

Fanie

Re: Weighted Standard Deviation

It is not a matter of ignorance. There are at least four definitions of the weight standard deviation or variance. The definitions differ only in the denominator that is used. That is to say that the weighted mean and weight sum of squares are the same in all the definitions. JMP only implements one of the four definitions. Other software might implement this definition or one of the others.