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Generalizing Tree Probability Estimation via Bayesian Networks

About

Probability estimation is one of the fundamental tasks in statistics and machine learning. However, standard methods for probability estimation on discrete objects do not handle object structure in a satisfactory manner. In this paper, we derive a general Bayesian network formulation for probability estimation on leaf-labeled trees that enables flexible approximations which can generalize beyond observations. We show that efficient algorithms for learning Bayesian networks can be easily extended to probability estimation on this challenging structured space. Experiments on both synthetic and real data show that our methods greatly outperform the current practice of using the empirical distribution, as well as a previous effort for probability estimation on trees.

Cheng Zhang, Frederick A. Matsen IV• 2018

Related benchmarks

TaskDatasetResultRank
Phylogenetic tree topology density estimationDS1
KL Divergence0.013
4
Phylogenetic tree topology density estimationDS3
KL Divergence0.0882
4
Phylogenetic tree topology density estimationDS4
KL Divergence0.0637
4
Phylogenetic tree topology density estimationDS2
KL Divergence0.0128
4
Phylogenetic tree topology density estimationDS5
KL Divergence0.8218
4
Phylogenetic tree topology density estimationDS6
KL Divergence0.2786
4
Phylogenetic tree topology density estimationDS7
KL Divergence0.0399
4
Phylogenetic tree topology density estimationDS8
KL Divergence0.1236
4
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