Invited talk: Efficient HPSG Realization for Precision Machine Translation
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Publication date
2007-10
Authors
Oepen, Stephan
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Part of book or chapter of book
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Abstract
I will review recent advances in grammar-based sentence realization from logical-form
meaning representations. The LOGON MT prototype aims at the fully-automated, highquality
translation of Norwegian instructional texts (on backcountry activities) into English.
The LOGON generator operates off underspecified meaning representations derived from
‘deep’ grammatical analysis (in the LFG framework) and subsequent semantic transfer. The
generator builds on the LinGO English Resource Grammar (in the HPSG framework) and
combines a highly optimized chart-based algorithm with a rich, probabilistic model to rank
alternate realizations. Integration of the stochastic model into the enumeration of outputs
from the packed chart allows the generator to selectively unpack n-best lists of realizations
with minimal search. Besides empirical results for the realization task when evaluated in
isolation, I will present a summary of quantitative measures on the current development
status (and promise) of the LOGON MT pipeline as a whole.