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I have an array a(30,2) where the first column is a unique sample number and the second column is a value assigned to the sample. I plot a histogram of the 2nd column:


I have N bins and the y-axis tells me how many samples have a value of x, but no information about which samples are in which bin.

How do I plot, above each bin, a list of samples (the number from the first column of my array a) that fall into each bin?

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3 Answers

First, create a histogram using HISTC as suggested by @Itamar Katz. To make the bins the same as with HIST, you need to properly calculate bin edges. Then you can plot the distribution and add the labels using TEXT and NUM2STR.

%# get the edges, bin centers
nBins = 10;
edges = linspace(min(a(:,2),max(a(:,2),nBins+1); %# edges go from minimum to maximum of distribution
bins = (edges(1:end-1)+edges(2:end))/2;

%# get the counts and the bin-index
[counts,binIdx] = histc(a(:,2),edges);

%# plot the counts and bins (not edges) with `bar`

%# Set the axes limits such that you have enough space for the labels

%# add the labels. Vertically align such that the text goes from the y-coordinate
%# down (as opposed to being centered on the y-coordinate).
for b = 1:nBins
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+1 exactly what I was thinking, I posted another solution based on your answer –  Amro Jan 11 '11 at 23:13
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As was shown by both @Jonas and @Itamar Katz, the idea is to use HISTC to get the bin indices that each sample belongs to, then use BAR to plot the result (note that we use the 'histc' mode of display for the BAR function). My answer below is a variation of @Jonas's post:


%# random data
a = [(1:30)' rand(30,1)];                %'#

%# compute edges (evenly divide range into bins)
nBins = 10;
edges = linspace(min(a(:,2)), max(a(:,2)), nBins+1);

%# compute center of bins (used as x-coord for labels)
bins = ( edges(1:end-1) + edges(2:end) ) / 2;

%# histc
[counts,binIdx] = histc(a(:,2), edges);
counts(end-1) = sum(counts(end-1:end));  %# combine last two bins
counts(end) = [];                        %# 
binIdx(binIdx==nBins+1) = nBins;         %# also fix the last bin index

%# plot histogram
bar(edges(1:end-1), counts, 'histc')
%#bar(bins, counts, 'hist')              %# same thing
ylabel('Count'), xlabel('Bins')

%# format the axis
set(gca, 'FontSize',9, ...
    'XLim',[edges(1) edges(end)], ...    %# set x-limit to edges
    'YLim',[0 2*max(counts)], ...        %# expand ylimit to accommodate labels
    'XTick',edges, ...                   %# set xticks  on the bin edges
    'XTickLabel',num2str(edges','%.2f')) %'# round to 2-digits

%# add the labels, vertically aligned on top of the bars
hTxt = zeros(nBins,1);                   %# store the handles
for b=1:nBins
    hTxt(b) = text(bins(b), counts(b)+0.25, num2str(a(b==binIdx,1)), ...
        'FontWeight','bold', 'FontSize',8, 'EdgeColor','red', ...
        'VerticalAlignment','bottom', 'HorizontalAlignment','center');

%# set the y-limit according to the extent of the text
extnt = cell2mat( get(hTxt,'Extent') );
mx = max( extnt(:,2)+extnt(:,4) );       %# bottom+height
ylim([0 mx]);

alt text

If the ticks on the x-axis become too crowded, you can display them rotated with an angle using XTICKLABEL_ROTATE function (submission on FEX).

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I waited a bit before answering, since I assumed this was right up your alley. And of course you give a nice answer with pretty pictures! One nitpick: lastEdge is actually edges(end); you don't need to extract it from the axes limits. +1 anyway for a prettier solution than mine (I like the rectangles), though I'd place the text at counts+0.5. –  Jonas Jan 12 '11 at 2:16
@Jonas: thanks for spotting the last-bin bug, I fixed it... I guess its worth mentioning that in the last bin HISTC counts only the values that match edges(end) exactly (that's why I combined the last two bins). –  Amro Jan 12 '11 at 15:04
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Use histc, which return an index for each entry, to which bin did it 'fall':

[n, bin] = histc (a(:, 2), bins);

Then the samples above the k'th bin is:

a(bin==k, 1);

Pay attention, you must specify the bins' boundaries yourself (unlike hist which uses the mid-value between boundaries).

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