Authors
Victorin Martin, Cyril Furtlehner, Yufei Han, Jean-Marc Lasgouttes
Publication date
2014
Conference
Machine Learning and Knowledge Discovery in Databases: European Conference, ECML PKDD 2014, Nancy, France, September 15-19, 2014. Proceedings, Part II 14
Pages
370-385
Publisher
Springer Berlin Heidelberg
Description
We investigate the problem of Gaussian Markov random field selection under a non-analytic constraint: the estimated models must be compatible with a fast inference algorithm, namely the Gaussian belief propagation algorithm. To address this question, we introduce the ⋆-IPS framework, based on iterative proportional scaling, which incrementally selects candidate links in a greedy manner. Besides its intrinsic sparsity-inducing ability, this algorithm is flexible enough to incorporate various spectral constraints, like e.g. walk summability, and topological constraints, like short loops avoidance. Experimental tests on various datasets, including traffic data from San Francisco Bay Area, indicate that this approach can deliver, with reasonable computational cost, a broad range of efficient inference models, which are not accessible through penalization with traditional sparsity-inducing norms.
Total citations
20162017201820192020202121111
Scholar articles
V Martin, C Furtlehner, Y Han, JM Lasgouttes - Machine Learning and Knowledge Discovery in …, 2014
V Martin, C Furtlehner, Y Han, JM Lasgouttes - Machine Learning and Knowledge Discovery in …