Algorithms for learning parsimonious context trees

Volume: 108, Issue: 6, Pages: 879 - 911
Published: Nov 12, 2018
Abstract
Parsimonious context trees, PCTs, provide a sparse parameterization of conditional probability distributions. They are particularly powerful for modeling context-specific independencies in sequential discrete data. Learning PCTs from data is computationally hard due to the combinatorial explosion of the space of model structures as the number of predictor variables grows. Under the score-and-search paradigm, the fastest algorithm for finding an...
Paper Details
Title
Algorithms for learning parsimonious context trees
Published Date
Nov 12, 2018
Volume
108
Issue
6
Pages
879 - 911
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