Normalizing a histogram
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Hello,
I've plotted a histogram of some data. Here it is http://dl.dropbox.com/u/54057365/All/departure%20time.JPG
How can remove the gaps between the bars? Should I be using a histogram? But how can you normalize the measurements on the y axis in a histogram?
Many thanks
DepartureTimes = load('Departure Times (hr).txt')
h = hist(DepartureTimes,24);
h = h/sum(h);
bar(h, 'DisplayName', 'Depature Times');
legend('show');
xlim([5 25])
1 comentario
Jan
el 11 de Jul. de 2013
[lost image] Here the expected effect appears: The image was deleted from the server, such that the question lost its meaning.
Please, TMW, add the service to host images on the Answers servers soon. Otherwise the quality of this forum as a database of solutions will suffer from the implicit expiration of the linked images.
Respuesta aceptada
Wayne King
el 31 de Mzo. de 2012
Hi John, if you type "help hist", you'll find information about specifying the bar centers. This implicitly controls the width of the bins that the bars cover.
If you want to change the gap between the bars, see "help hist" for information about returning the bar heights instead of plotting them, and "help bar" for information about drawing bars and controlling the space between them.
For example:
X = randn(1e3,1);
N = hist(X,22);
bar(N,1);
As far as whether the histogram is appropriate or how to "normalize" it. Can you be more specific? People generally plot a histogram in two ways:
1.) the raw frequency or count histogram 2.) a probability histogram (as you have almost done), so that they can overlay a PDF for comparison.
Here's an example of that (requires Statistics Toolbox):
Data = randn(1000,1); %just making up some junk data
binWidth = 0.7; %This is the bin width
binCtrs = -3:0.7:3; %Bin centers, depends on your data
n=length(Data);
counts = hist(Data,binCtrs);
prob = counts / (n * binWidth);
H = bar(binCtrs,prob,'hist');
set(H,'facecolor',[0.5 0.5 0.5]);
% get the N(0,1) pdf on a finer grid
hold on;
x = -3:.1:3;
y = normpdf(x,0,1); %requires Statistics toolbox
plot(x,y,'k','linewidth',2);
Más respuestas (4)
Wayne King
el 31 de Mzo. de 2012
yes, you are doing the correct thing. You can use dfittool to fit a Gamma distribution, which you can use estimate the parameters of a chi-square PDF.
dfittool will also overlay the fitted pdf on the data.
The alpha parameter in a gamma is dof/2 and the beta parameter is 2.
You can generate code for your fit from dfittool and export the fit to the workspace.
Wayne King
el 31 de Mzo. de 2012
I'm saying that if you fit a gamma, you get an alpha and a beta parameter. You can use that to see if a chi-square is appropriate (and not a more general gamma) and if so, get the dof parameter.
For example:
R = chi2rnd(5,1e3,1); %chi-square 5 dof
phat = mle(R,'distribution','Gamma');
phat(1) is the alpha parameter, but that is the dof/2 for a chi- square
Therefore
round(2*phat(1))
Gives you an estimate of the dof parameter for a chi-square.
phat(2) should always be close to 2 (if it isn't that is a indication that chi-square is not a good fit)
You can also use fitdist()
pd = fitdist(R,'gamma');
For this example, I get:
gamma distribution
a = 2.50903
b = 1.99592
which indicates a chi-square PDF with 5 dof.
2 comentarios
Wayne King
el 31 de Mzo. de 2012
Do you have some a priori reason that is must be chi-square and not a more general gamma? At first glance, the beta value indicates that a more general gamma is more appropriate here.
Image Analyst
el 31 de Mzo. de 2012
To remove the gaps between the bars, you set the ' BarWidth ' property to 1:
bar(binsNumbers, CountData, 'BarWidth', 1);
By setting the BarWidth to between 0 and 1 you can go from having huge gaps between the bars (very skinny bars) to having full width bars (bars touch each other with no gap at all).
0 comentarios
Harish Chandra
el 4 de Sept. de 2012
I have a question, I know it has been some time since the last post in this thread but I am posting it here since it is relevant... How do you obtained the goodness of fit of gamma distrubution fitted to any data? For example the chi^2 or the R^2 value maybe using chi2gof or something similar?
Thanks for your help. Harish
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