# Tag Info

14

First make sure your slow R version is correct. Debugging R code might be easier than debugging C code. Done that? Great. You now have correct code you can compare against. Next, find out what is taking the time. Use Rprof to run your code and see what is taking the time. I did this for some code I inherited once, and discovered it was spending 90% of the ...

13

I work with a team of professional research geophysicists though I'm more of a numerical software engineer myself. I think that if your work is numerical mathematics then Matlab is very suitable, especially so since you are already skilled in its use. You might write faster programs if you picked up C or Fortran, though perhaps not as much faster as you ...

6

As suspected by OP and @SchaunW, the problem lies in the C code. "A bit" of digging revealed a quite subtle problem (see the source code, not the newest version though): All the sampling in ideal.c appears in the part of commence iterations, i.e. where functions updatex, updatey and others are used. However, the problem is with one of the arguments of these ...

4

The problem is that your function, \$y = x^2\$, is not one-to-one. Specifically, because you lose all information about the sign of X when you square it, there is no way to tell from your Y values whether you originally used 2 or -2 to generate the data. If you create a histogram of your trace for X after just the first iteration, you will see this: This ...

3

Is there a particular reason you would like to use AdaptiveMetropolis? I imagine that vanilla MCMC wasn't working, and you got something like this: Yea, that's no good. There are a few comments I can make. Below I used vanilla MCMC. Your means prior variance, 0.001, is too big. This corresponds to a std deviation of about 31 ( = 1/sqrt(0.001) ), which ...

3

The functionality purposed by @user1572508 is now part of PyMC under the name stochastic_from_data() or Histogram(). The solution to this thread then becomes: from pymc import * import matplotlib.pyplot as plt xtrue = 2 # unknown in the real application prior = rnormal(0,1,10000) # initial guess is inaccurate for i in range(5): x = ...

3

Don't do it yourself. Install SciPy and use its optimization routines. scipy.optimize.minimize looks like a good fit.

3

I have a blog post which discusses exactly this topic which I suggest you take a look at: http://darrenjw.wordpress.com/2011/07/31/faster-gibbs-sampling-mcmc-from-within-r/ (this post is more relevant than the post of mine that Dirk refers to).

3

A complete example using R, C++ and Rcpp is provided by this blog post which was inspired by a this post on Darren Wilkinson's blog (and he has more follow-ups). The example is also included with recent releases of Rcpp in a directory RcppGibbs and should get you going.

3

EDIT I have not been able to reproduce the results I originally posted. When I got those results the first time, I closed out R, restarted it, and ran the whole thing again just to make sure, and I got the same results again. What appears below is copied exactly from my R console. However, I just tried the code a third (and fourth and fifth) time and it is ...

3

Either the "zeroes trick" or the "ones trick" will do the job for you; see the WinBUGS documentation online for how to set these up. (WinBUGS is, as you almost certainly know, almost identical to JAGS syntatically, with a few exceptions noted in the JAGS documentation and irrelevant to the two tricks above.)

3

Speaking as someone who moves between academia and industry in an engineering field, the only reason I don't use Matlab more is because of the cost. If you and all the people you want to give code to have Matlab licenses then there's no reason to switch. If you find that parts of your code need to be optimised, you can rewrite just those bits in a ...

3

I think your problem is the model formula, since logistic regression models have no error term. Thus you model CASE ~ 1 should be replaced by something like CASE ~ x (the predictor variable x is mandatory). Here is your example, modified: CASE <- rbinom(100,1,0.5) x <- 1:100 posterior_m0 <- MCMClogit (CASE ~ x, b0 = 0, B0 = 1) classic_m0 <- glm ...

2

Well I'm more a C++/Java programmer than a Matlab one, although I have used Matlab, but I think that for mathematical research, Matlab is rather well suited. Research is something that involves a lot of experimentation, and C++ is a dire language in which to do experimentation. Matlab makes it very easy to test things quickly, find out which ones work and ...

2

I think the best method currently to integrate C or C++ is the Rcpp package of Dirk Eddelbuettel. You can find a lot of information at his website. There is also a talk at Google that is available through youtube that might be interesting.

2

Looking at the source, it seems not. There is an unconditional call to browseURL() there. Maybe by making a dummy version of that function which does nothing in your global namespace, it's effect can be avoided. browseURL <- identity This may break other browser activity as well, so after the mcmcplot calls, you may want to rm(browseURL) ...

2

That function writes everything to a file and also opens it in a browser. If you dont want to open the browser I would recommend editing the function to pass whether or not you want to open in a browser as an argument. You can retreive the function by just typing its name without any parenthesis. mcmcplot then copy that output to a editor and at the ...

2

Note that Common Lisp has a THE special operator. It allows you to declare types for expression results. This for example allows you to narrow down types if possible. For example what is the result of (SQRT somefloat) ? It can be a float, but it could be a complex number if somefloat is negative. If you know that somefloat is always positive (and only ...

2

2

If your loop contains only one block with an ordered construct, then the execution will be serial, and you will not obtain any speedup from parallel execution. In the example below there is one block that can be executed in parallel and one that will be serialized: void example(int b, int e, float* data) { #pragma omp for schedule(static) ordered ...

2

We do precisely this in the mcmc package on CRAN, http://cran.us.r-project.org/web/packages/mcmc/index.html . That link includes way to download the source code. This package implements the Metropolis-Hastings algorithm. Specifically, C code handles running the MH loop, but calls a user supplied R function to evaluate the log unnormalized target density ...

2

Are you talking about the batchsd function? That is what is used to calculate the MC error in PyMC 2. Its located in the pymc.database.base module, and can be used on any array, really. The pymc.diagnostics module contains all the convergence diagnostics functions, and should work on numpy arrays.

2

The function that you specified above would be incorporated into a PyMC model as a Deterministic node, where it is calculated based on some (presumably) stochastic parent nodes (your parameters). This node would then be connected downstream to a likelihood (observed stochastic node) that provides the information for fitting the parameters. For example, you ...

2

The NUTS sampler does not work with discrete variables (though folks are working on generalizing it to do so). What you'd want to do is assign different step methods to different types of variables. For example: step1 = pm.NUTS(vars=[p, q]) step2 = pm.Metropolis(vars=[A]) trace = pm.sample(3000, [step1, step2], start)

2

In PyMC 2, if you are interested in the trace of a deterministic, you should wrap the deterministic in a Lambda object (or decorate a function with @deterministic). In your case, this would be: y_est = Lambda('y_est', lambda a=alpha, b=beta: a + b * x) You should then be able to call the summary method or plot the node, just like a Stochastic. BTW, you ...

1

I can't (using the example code from MCMCglmm) construct an example where as.data.frame(model\$Sol) gives me a dataframe of dataframes. So although there's probably a simple answer I can't check it very easily. That said, here's an example that might help. Note that if your child dataframes don't have the same colnames then this won't work. # create a ...

1

If you are mainly involved in prototyping algorithms that involve simple data structures, matlab is a great choice. The workflow of many academics working in computational fields is: develop a new algorithm, check that it works in matlab, then you write your paper, and you're done. If this is all you wish to do, stick with what you know (matlab). If ...

1

Have you taken a look to pymc? As it says in its description: "pymc is a python package that implements the Metropolis-Hastings algorithm as a python class, and is extremely flexible and applicable to a large suite of problems" So you can use Metropolis-Hastings for obtaining a sequence of random samples.

1

It's an MCMC model so it necessarily uses random number generation. To get repeatable results, you need to start your analysis by setting a 'seed' for the random number generator. This way each time you build the model, it uses the same "random" numbers (as long as you reset the seed each time you build the model. use the set.seed() function and just feed it ...

1

The curand documentation includes a section on device API examples. The second example there uses MTGP to generate random numbers in device code, and then in the same kernel a basic computation is done on the random numbers generated (count the number which have lowest bit set.) This seems to be what you're asking for (how to generate random numbers on the ...

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