Hidden tree Markov models allow learning distributions for tree structured data while being interpretable as nondeterministic automata. We provide a concise summary of the main approaches in literature, focusing in particular on the causality assumptions introduced by the choice of a specific tree visit direction. We will then sketch a novel non-parametric generalization of the bottom-up hidden tree Markov model with its interpretation as a nondeterministic tree automaton with infinite states.
Learning Tree Distributions by Hidden Markov Models / Davide Bacciu; CASTELLANA, DANIELE. - ELETTRONICO. - (2018), pp. 0-0. (Intervento presentato al convegno Workshop on Learning and Automata (LearnAut'18) tenutosi a Oxford, UK).
Learning Tree Distributions by Hidden Markov Models
CASTELLANA, DANIELE
2018
Abstract
Hidden tree Markov models allow learning distributions for tree structured data while being interpretable as nondeterministic automata. We provide a concise summary of the main approaches in literature, focusing in particular on the causality assumptions introduced by the choice of a specific tree visit direction. We will then sketch a novel non-parametric generalization of the bottom-up hidden tree Markov model with its interpretation as a nondeterministic tree automaton with infinite states.I documenti in FLORE sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.



