Histogram gives different BinCounts while appending BinEdges
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Dear all,
I try to shrink the BinEdges in the histogram plot while keeping the remaining BinEdges the same as before. But histogram gives different BinCounts. This should not happen.
I upload my example. Please take a look. Any comments are highly appreciated. Thanks!
Best,
Binglun
1 comentario
Huina Mao
el 29 de Abr. de 2018
If you use the old function ‘hist’, the same results come. The new function histogram might have some uncertainty. Need MathWorks double check.
Respuestas (2)
Star Strider
el 29 de Abr. de 2018
You have different numbers of bins in each subplot. In subplot(3,1,1), you define 61 bins, in subplot(3,1,2), 41, and in subplot(3,1,3), 31. Different numbers of bins are going to produce different bin counts.
You can determine this easily enough by calculating them and then looking at the lengths of each vector:
E1 = (13.83: 0.0005 :13.86);
E2 = (13.83: 0.0005 :13.85);
E3 = (13.83: 0.0005 :13.845);
3 comentarios
Star Strider
el 30 de Abr. de 2018
Because of the way the colon (link) operator/function calculates the intervals, the values are not exactly the same:
E1 = (13.83: 0.0005 :13.86);
E1a = (13.83: 0.0005 :13.86);
E2 = (13.83: 0.0005 :13.85);
E3 = (13.83: 0.0005 :13.845);
L1 = ismember(E1,E1a);
M1 = nnz(L1);
L2 = ismember(E1,E2);
M2 = nnz(L2);
L3 = ismember(E1,E3);
M3 = nnz(L3);
L4 = ismember(E2,E3);
M4 = nnz(L4);
For example, ‘E3’ has a length of 31 elements, although only 24 of them are the same as those in ‘E2’.
Philip Borghesani
el 2 de Mayo de 2018
The differences in histograms are due to slightly different algorithms used in the two functions. Hist uses the input points as centers for the bins and histogram uses them as edges. This is documented in each functions documentation.
Your code is forcing the histogram routine to compare floating point values at logical equality this will eventually burn you in every situation.
A much better way to produce a histogram for your data is to offset the input bins by 1/2 your minimum quantization value.
h3=histogram( x, (13.83: 0.0005 :13.845) +0.00005);
In addition your instrument appears to have some bias toward certain input values examine:
h3=histogram( x, (13.835: 0.0001 :13.845) +0.00005);
This is magnifying the effect of the comparison errors in the output histograms.
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