Weighted DAG Automata for Semantic Graphs

CL 2018 David ChiangFrank DrewesDaniel GildeaAdam LopezGiorgio Satta

Graphs have a variety of uses in natural language processing, particularly as representations of linguistic meaning. A deficit in this area of research is a formal framework for creating, combining, and using models involving graphs that parallels the frameworks of finite automata for strings and finite tree automata for trees... (read more)

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