Using the web to overcome data sparseness

EMNLP(2002)

引用 144|浏览384
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摘要
This paper shows that the web can be employed to obtain frequencies for bigrams that are unseen in a given corpus. We describe a method for retrieving counts for adjective-noun, noun-noun, and verb-object bigrams from the web by querying a search engine. We evaluate this method by demonstrating that web frequencies and correlate with frequencies obtained from a carefully edited, balanced corpus. We also perform a task-based evaluation, showing that web frequencies can reliably predict human plausibility judgments.
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关键词
human plausibility judgment,data sparseness,verb-object bigrams,task-based evaluation,search engine,retrieving count,balanced corpus,web frequency,noun
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