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There is histfit function in Matlab would plot histogram and fit the distribution by bin values. The distribution's parameters have to be estimated. How to implement histfit in r? I searched for a long time, but it has no lucky.

This post have mentioned this before, but there is no preferable solution. The sn package seems support several distribution, not so much.

I explore the data with hist function, the histogram shows gamma distribution in gerneral. But if I add up bins and show it again, the graph will show more details, and gamma distribution fails. fitdistr would fail to find parameters also. so I want to fit the data just using the coarse data from histogram. This is the question, thank you for your help.

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What exactly have you tried? Did you even bother to search here? Try this one: stackoverflow.com/questions/1497539 –  Dirk Eddelbuettel Sep 18 '12 at 14:24
    
What I wanted is almost as @fmark described in post. But sn package is only suite for some distributions that is not on my list. –  Readon Shaw Sep 18 '12 at 14:46
    
@DirkEddelbuettel I need gamma distribution to be supported. –  Readon Shaw Sep 18 '12 at 15:07
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Please learn how to search. The very first hit of the query [r] how to fit gamma distribution returns this: stackoverflow.com/questions/11689595 More generally, the MASS package has a function fitdistr –  Dirk Eddelbuettel Sep 18 '12 at 15:26
    
@DirkEddelbuettel, I have read that. fitdistr fit all samples by mle method, but I want to fit by bin values hist returns. –  Readon Shaw Sep 18 '12 at 16:09

2 Answers 2

The fitdistr function in the MASS package can be used to find parameters for a given distribution (including gamma). The function density and the logspline package (and others) can be used to estimate the density function of the data without assuming a specific distribution.

The lines and curve functions can be used to add an estimated density curve to a plotted histogram (use prob=TRUE when creating the histogram).

If you want to compare your data to a specific distribution then tools like qqplots (qqplot function or others) or visual tests (vis.test in the TeachingDemos package) will probably be better than a histogram and density plot.

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I have modified the description above, please check about that. –  Readon Shaw Sep 18 '12 at 16:21
    
The oldlogspline function in the logspline package can fit an estimated density based on interval censored data (histogram bin counts), this will not be a gamma, but an estimated density. If you want the gamma density then you can still use fitdistr either with just the raw data, or create a liklihood for the gamma and interval censored data (or optim instead of fitdistr). It is not clear exactly what you want and what data you have. –  Greg Snow Sep 18 '12 at 16:25
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I have to answer it myself, package 'bda' could fit the binned data in several distributions, however it could only binning data by rounding.

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