Skip to content

ppletscher/lpqp

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

2 Commits
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

LPQP FOR MAP INFERENCE
----------------------

This is the code implementing the LPQP algorithms introduced in:

Patrick Pletscher & Sharon Wulff
LPQP for MAP: Putting LP Solvers to Better Use
ICML, 2012.

The code was slightly modified after ICML and hence the results might differ a
bit. We re-tested the grid experiments with this version of the code, and
the results pretty much match the ones in the ICML paper. We did not
re-run the protein & DTF experiments, but would expect roughly the same
results as in the published paper.

The tree-based LPQP weighting is implemented in LPQPSDD, the uniform weighting
in LPQPNPBP.


COMPILATION & INSTALL
---------------------

The software was successfully compiled and tested on Ubuntu 12.04, CentOS 6
and Mac OS X 10.8.

Compilation requires cmake, please make sure you have cmake installed on your
system.

1. create a directory build/
2. run ./fetch_external.sh
3. cd to build
4. run cmake
5. run make install
6. run make test to check whether everything runs as expected

the library and the matlab wrappers are now installed into bin/

To use the wrapper in your own scripts, add the directory containing the
mex_lpqp.mex* to the path within Matlab (using addpath).

Remark: Make sure that the compiler optimizations are turned on (-O3),
otherwise the code is *very* slow (probably has to do with the extensive use
of Eigen).


CITATION
--------

If you find the software useful, then please cite the following publication
in your own work:

@inproceedings{Pletscher2012,
  author    = {Pletscher, Patrick and Wulff, Sharon},
  title     = {LPQP for MAP: Putting LP Solvers to Better Use},
  booktitle = {ICML},
  year      = {2012},
}


COPYRIGHT
---------

The LPQP, dual decomposition and tree inference code is written & copyrighted
by Patrick Pletscher and Sharon Wulff.

The TRWS code is written by Vladimir Kolmogorov, and is here just
re-distributed to easily compare to the results obtained using it. See its
folder for the license.

About

Combined LP and QP relaxation for MAP inference

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published