How to implement histfit in r?

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
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

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

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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