Inclusive yet Selective: Supervised Distributional Hypernymy Detection.
International Conference on Computational Linguistics(2014)
摘要
We test the Distributional Inclusion Hypothesis, which states that hypernyms tend to occur in a superset of contexts in which their hyponyms are found. We find that this hypothesis only holds when it is applied to relevant dimensions. We propose a robust supervised approach that achieves accuracies of .84 and .85 on two existing datasets and that can be interpreted as selecting the dimensions that are relevant for distributional inclusion.
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关键词
supervised distributional hypernymy detection,selective
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