Context models on sequences of covers
Machine Learning
2011-05-31 v2 Machine Learning
Abstract
We present a class of models that, via a simple construction, enables exact, incremental, non-parametric, polynomial-time, Bayesian inference of conditional measures. The approach relies upon creating a sequence of covers on the conditioning variable and maintaining a different model for each set within a cover. Inference remains tractable by specifying the probabilistic model in terms of a random walk within the sequence of covers. We demonstrate the approach on problems of conditional density estimation, which, to our knowledge is the first closed-form, non-parametric Bayesian approach to this problem.
Cite
@article{arxiv.1005.2263,
title = {Context models on sequences of covers},
author = {Christos Dimitrakakis},
journal= {arXiv preprint arXiv:1005.2263},
year = {2011}
}
Comments
14 pages, 2 figures