Generating English plural determiners from semantic representations: a neural network learning approach

نویسنده

  • Gabriele Scheler
چکیده

In this paper, we present a model of grammatical category formation, applied to English plural determiners. We have identiied a set of semantic features for the description of relevant meanings of plural deeniteness. A small training set (30 sentences) was created by linguistic criteria, and a functional mapping from the semantic feature representation to the overt category of indeenite/deenite article was learned. The learned function was applied to all relevant plural noun occurrences in a 10000 word corpus. The results show a high degree of correctness (97%) in category assignment. We can conclude that the identiied semantic dimensions are relevant and suucient for the category of deeniteness. We also have the signiicant result that actually occurring uses of plural determiners can be accounted for by a small set of semantic features. In a second experiment, we generated plural determiners from textually derived semantic representations, where the target category was removed from the input. Because texts are semantically underdetermined, these representations have some degree of noise. In generation we can still assign the correct category in many cases (83%). These results can be improved in various ways. It is nally discussed, how these results can be applied to practical NLP tasks such as grammar checking.

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تاریخ انتشار 1995