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refactor variational module, add histogram approximation #1904
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Histogram is needed to put trace into theano graph for general purposes |
What's Histogram? Is there a reference? |
Not yet |
@twiecki, do you mean a paper on arxiv under reference? |
@ferrine Anything that makes me understand what this is useful for. |
@twiecki I'll use posterior widely for minimizing Bayesian Risk.
So the objective is Here I do not need to know anything about |
OK, what's an example application? Also, do you assume theta is already estimated? |
Ye posterior is already estimated. You will be able to use any PyMC3 posterior for cost-benefit optimization. At my work I do exactly what I described. I want to minimize costs of inputs with archiving my target and be confident I can do it. I can't give more details because of NDA:(
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@twiecki I want to merge Histogram tomorrow when I'm sure tests pass as I have ~95% coverage. I also think that |
I've forgot Docs for the class:( I'll add them in a separate PR |
Can we get a working example of this, either as a notebook if you have time to do a fully-documented case study, or a model in the |
* Added live_traceplot function * Cosmetic change * Changed the API to pm.sample(..., live_plot=True) * Don't include `-np.inf` in calculating average ELBO (#1880) * Adds an infmean for advi reporting * fixing typo * Add tutorial to detect sampling problems (#1866) * Expand sampler-stats.ipynb example include model diagnose from case study example in Stan http://mc-stan.org/documentation/case-studies/divergences_and_bias.html * Sampler Diagnose for NUTS * descriptive annotation and axis labels * Fix typos * PEP8 styling * minor updates 1, add example to examples.rst 2, original content in Markdown code block * Make install scripts idempotent (#1879) * DOC Change heading names. * Add examples of censored data models (#1870) * Raise TypeError on non-data values of observed (#1872) * Raise TypeError on non-data values of observed * Added check for observed TypeError * Make exponential mode have the correct shape * Fix support of LKJCorr * Added tutorial notebook on updating priors * Fixed y-axis bug in forestplot; added transform argument to summary * Style cleanup * Made small changes and executed the notebook * Added probit and invprobit functions * Added carriage return to end of file * Fixed indentation * Changed probit test to use assert_allclose * Fix tests for LKJCorr * Added warning for ignoring init arguments in sample * Kill stray tab * Improve performance of transformations * DOC Add new features * Bump version. * Added docs and scripts to MANIFEST * WIP: Implement opvi (#1694) * migrate useful functions from previous PR (cherry picked from commit 9f61ab4) * opvi draft (cherry picked from commit d0997ff) * made some test work (cherry picked from commit b1a87d5) * refactored approximation to support aevb (without test) * refactor opvi delete unnecessary methods from operator, change method order * change log_q_local computation * add full rank approximation * add more_params argument to ObjectiveFunction.updates (aevb case) * refactor density computation in full rank approximation * typo: cast dict values to list * typo: cast dict values to list * typo: undefined T in dist_math * refactor gradient scaling as suggested in approximateinference.org/accepted/RoederEtAl2016.pdf * implement Langevin-Stein (LS) operator * fix docstring * add blank line in docs * refactor ObjectiveFunction * add not working LS Op test * experiments with not working LS Op * change activations * refactor networks * add step_function * remove Langevin Stein, done refactoring * remove Langevin Stein, done refactoring * change optimizers * refactor init params * implement tests * implement Inference * code style * test fix * add minibatch test (fails now) * add more tests for minibatch training * add logdet to FullRank approximation * add conversion of arrays to floatX * tiny changes * change number of iterations * fix test and pylint check * memoize functions in Objective function * Optimize code a lot * a bit more efficient pickling * add docs * Add MeanField -> FullRank parameter transfer * refactor MeanField and FullRank a bit * fix FullRank bug with shapes in random * refactor Model.flatten (CC @taku-y) * add `approximate` to inference * rename approximate->fit * change abbreviations * Fix bug with scaling input variable in aevb * fix theano bottleneck in graph * more efficient scaling for local vars * fix typo in local Q * add aevb test * refactor memoize to work with my objects * add tests for numpy view usage * pickle-hash fix * pickle-hash fix again * add node sampling + make up some code * add notebook with example * sample_proba explained * Revert "small fix for multivariate mixture models" * Added message about init only working with auto-assigned step methods * doc(DiagInferDiv): formatting fix in blog post quote. Closes #1895. (#1909) * delete unnecessary text and add some benchmarks (#1901) * Add LKJCholeskyCov * Added newline to MANIFEST * Replaced package list with find_packages in setup.py; removed examples/data/__init__.py * Fix log jacobian in LKJCholeskyCov * Updated version to rc2 * Fixed stray version string * Fix indexing traces with steps greater one * refactor variational module, add histogram approximation (#1904) * refactor module, add histogram * add more tests * refactor some code concerning AEVB histogram * fix test for histogram * use mean as deterministic point in Histogram * remove unused import * change names of shortcuts * add names to shared params * add new line at the end of `approximations.py` * Add documentation for LKJCholeskyCov * SVGD problems (#1916) * fix some svgd problems * switch -> ifelse * except in record * Histogram docs (#1914) * add docs * delete redundant code * add usage example * remove unused import * Add expand_packed_triangular * improve aesthetics * Bump theano to 0.9.0rc4 (#1921) * Add tests for LKJCholeskyCov * Histogram: use only free RVs from trace (#1926) * use only free RVs from trace * use memoize in Histogram.histogram_logp * Change tests for histogram * Bump theano to be at least 0.9.0 * small fix to prevent a TypeError with the ufunc true_divide * Fix tests for py2 * Add floatX wrappers in test_advi * Changed the API to pm.sample(..., live_plot=True) * Better formatting
Here I implement Histogram Approx with the same interface as other approximations