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Predictive Learning on Hidden Tree-Structured Ising Models

By Konstantinos Nikolakakis and others
We provide high-probability sample complexity guarantees for exact structure recovery and accurate Predictive Learning using noise-corrupted samples from an acyclic (tree-shaped) graphical model. The hidden variables follow a tree-structured Ising model distribution whereas the observable variables are generated by a binary symmetric channel, taking the hidden variables as its input.... Show more
February 12, 2019
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Predictive Learning on Hidden Tree-Structured Ising Models
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