From language towards formal spatial calculi
We consider mapping unrestricted natural language to formal spatial representations.We describe ongoing work on a two-level machine learning approach. The first level is linguistic, and deals with the extraction of spatial information from natural language sentences, and is called spatial role label...
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Format: | Tagungsbericht |
Sprache: | eng |
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Zusammenfassung: | We consider mapping unrestricted natural language to formal
spatial representations.We describe ongoing work on a two-level machine
learning approach. The first level is linguistic, and deals with the
extraction of spatial information from natural language sentences, and is
called spatial role labeling. The second level is ontological in nature, and
deals with mapping this linguistic, spatial information to formal spatial
calculi. Our main obstacles are the lack of available annotated data for
training machine learning algorithms for these tasks, and the difficulty of
selecting an appropriate abstraction level for the spatial information. For
the linguistic part, we approach the problem in a gradual way. We make
use of existing resources such as The Preposition Project (TPP) and
the validation data of General Upper Model (GUM) ontology, and we
show some computational results. For the ontological part, we describe
machine learning challenges and discuss our proposed approach. |
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ISSN: | 1613-0073 1613-0073 |