A stochastic memoizer for sequence data
We propose an unbounded-depth, hierarchical, Bayesian nonparametric model for discrete sequence data. This model can be estimated from a single training sequence, yet shares statistical strength between subsequent symbol predictive distributions in such a way that predictive performance generalizes...
Main Authors: | Wood, F, Archambeav, C, Gasthaus, J, James, L, Teh, Y |
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Format: | Journal article |
Language: | English |
Published: |
2009
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