On the Consistency of Graph-based Bayesian Learning and the Scalability of Sampling Algorithms

October 20, 2017 ยท Declared Dead ยท ๐Ÿ› Journal of machine learning research

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Authors Nicolas Garcia Trillos, Zachary Kaplan, Thabo Samakhoana, Daniel Sanz-Alonso arXiv ID 1710.07702 Category stat.ML: Machine Learning (Stat) Cross-listed cs.LG, math.PR, stat.CO Citations 23 Venue Journal of machine learning research Last Checked 4 months ago
Abstract
A popular approach to semi-supervised learning proceeds by endowing the input data with a graph structure in order to extract geometric information and incorporate it into a Bayesian framework. We introduce new theory that gives appropriate scalings of graph parameters that provably lead to a well-defined limiting posterior as the size of the unlabeled data set grows. Furthermore, we show that these consistency results have profound algorithmic implications. When consistency holds, carefully designed graph-based Markov chain Monte Carlo algorithms are proved to have a uniform spectral gap, independent of the number of unlabeled inputs. Several numerical experiments corroborate both the statistical consistency and the algorithmic scalability established by the theory.
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