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Cheap and Fast — But is it Good? Evaluating Non-Expert Annotations for Natural Language Tasks

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by Rion Snow , Daniel Jurafsky , Andrew Y. Ng
Citations:90 - 3 self
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BibTeX

@MISC{Snow_cheapand,
    author = {Rion Snow and Daniel Jurafsky and Andrew Y. Ng},
    title = {Cheap and Fast — But is it Good? Evaluating Non-Expert Annotations for Natural Language Tasks},
    year = {}
}

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Abstract

Human linguistic annotation is crucial for many natural language processing tasks but can be expensive and time-consuming. We explore the use of Amazon’s Mechanical Turk system, a significantly cheaper and faster method for collecting annotations from a broad base of paid non-expert contributors over the Web. We investigate five tasks: affect recognition, word similarity, recognizing textual entailment, event temporal ordering, and word sense disambiguation. For all five, we show high agreement between Mechanical Turk non-expert annotations and existing gold standard labels provided by expert labelers. For the task of affect recognition, we also

Citations

82 Scaling to very very large corpora for natural language disambiguation - Banko, Brill - 2001
40 Building a sense tagged corpus with Open Mind Word Expert - Chklovski, Mihalcea - 2002
1 Wee Sun Lee and Yee Whye Teh. 2007. Improving Word Sense Disambiguation Using Topic Features - Cai
The National Science Foundation
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