Rounding-Based Moves for Semi-Metric Labeling
Abstract
Semi-metric labeling is a special case of energy minimization for pairwise Markov random fields. The energy function consists of arbitrary unary potentials, and pairwise potentials that are proportional to a given semi-metric distance function over the label set. Popular methods for solving semi-metric labeling include (i) move-making algorithms, which iteratively solve a minimum $st$-cut problem; and (ii) the linear programming ( LP) relaxation based approach. In order to convert the fractional solution of the LP relaxation to an integer solution, several randomized rounding procedures have been developed in the literature. We consider a large class of parallel rounding procedures, and design move-making algorithms that closely mimic them. We prove that the multiplicative bound of a move-making algorithm exactly matches the approximation factor of the corresponding rounding procedure for any arbitrary distance function. Our analysis includes all known results for move- making algorithms as special cases.
Cite
Text
Kumar and Dokania. "Rounding-Based Moves for Semi-Metric Labeling." Journal of Machine Learning Research, 2016.Markdown
[Kumar and Dokania. "Rounding-Based Moves for Semi-Metric Labeling." Journal of Machine Learning Research, 2016.](https://mlanthology.org/jmlr/2016/kumar2016jmlr-roundingbased/)BibTeX
@article{kumar2016jmlr-roundingbased,
title = {{Rounding-Based Moves for Semi-Metric Labeling}},
author = {Kumar, M. Pawan and Dokania, Puneet K.},
journal = {Journal of Machine Learning Research},
year = {2016},
pages = {1-42},
volume = {17},
url = {https://mlanthology.org/jmlr/2016/kumar2016jmlr-roundingbased/}
}