GKR: Bridging the Gap between Symbolic/structural and Distributional Meaning Representations

WS 2019 Aikaterini-Lida KalouliRichard CrouchValeria de Paiva

Three broad approaches have been attempted to combine distributional and structural/symbolic aspects to construct meaning representations: a) injecting linguistic features into distributional representations, b) injecting distributional features into symbolic representations or c) combining structural and distributional features in the final representation. This work focuses on an example of the third and less studied approach: it extends the Graphical Knowledge Representation (GKR) to include distributional features and proposes a division of semantic labour between the distributional and structural/symbolic features... (read more)

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