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|Abstract=We propose CMSMs, a novel type of generic compositional models for syntactic and semantic aspects of natural language, based on matrix multiplication. We argue for the structural and cognitive plausibility of this model and show that it is able to cover and combine various common compositional NLP approaches ranging from statistical word space models to symbolic grammar formalisms. | |Abstract=We propose CMSMs, a novel type of generic compositional models for syntactic and semantic aspects of natural language, based on matrix multiplication. We argue for the structural and cognitive plausibility of this model and show that it is able to cover and combine various common compositional NLP approaches ranging from statistical word space models to symbolic grammar formalisms. | ||
+ | |Download=RuGi-ACL2010.pdf, | ||
|Projekt=Multipla | |Projekt=Multipla | ||
|Forschungsgruppe=Wissensmanagement | |Forschungsgruppe=Wissensmanagement |
Version vom 13. Mai 2010, 23:07 Uhr
Compositional Matrix-Space Models of Language
Compositional Matrix-Space Models of Language
Published: 2010
Juli
Buchtitel: Proceedings of ACL 2010
Verlag: ACL
Referierte Veröffentlichung
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BibTeX
Kurzfassung
We propose CMSMs, a novel type of generic compositional models for syntactic and semantic aspects of natural language, based on matrix multiplication. We argue for the structural and cognitive plausibility of this model and show that it is able to cover and combine various common compositional NLP approaches ranging from statistical word space models to symbolic grammar formalisms.
Download: Media:RuGi-ACL2010.pdf
Projekt
Forschungsgruppe
Forschungsgebiet
Information Retrieval, Natürliche Sprachverarbeitung