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ALTA Shared Task papers 123
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Australasian Language Technology As
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ALTA 2012 Workshop Committees Works
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ALTA 2012 Programme The proceedings
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Contents Invited talks 1 Using a la
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Invited talks 1
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Diverse Words, Shared Meanings: Sta
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A Citation Centric Annotation Schem
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The structure of this paper is as f
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understanding of sentences surround
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henceforth referred to as Annotator
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References Angrosh, M A, Cranefield
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Semantic Judgement of Medical Conce
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2012). The TE model provides a form
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Correlation coefficient with human
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Pair # Concept 1 Doc. Freq. Concept
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Active Learning and the Irish Treeb
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2.2 Sources of annotator disagreeme
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complement (csubj) 2 . See Figure 4
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top Y trees from this ordered set a
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References Ron Artstein and Massimo
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Unsupervised Estimation of Word Usa
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not lend itself to determining unsu
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T 0: think, want, thing, look, tell
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correlation is much stronger than t
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References Eneko Agirre and Philip
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eaders with sentences with a negati
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Question Which word is closest in m
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Acceptability and negativity: conce
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MORE NEGATIVE / LESS NEGATIVE MR Δ
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Julie Elizabeth Weeds. 2003. Measur
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cation produced by a supervised mac
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understood to carry a lower weight
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Figure 1: Average classification ac
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0.8 0.75 0.7 AuthorA4 AuthorB4 Auth
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Segmentation and Translation of Jap
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tomatosōsu “tomato sauce”, rev
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“markup” and “Mach”, so the
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MWE Segmentation Possible Translati
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English Term Pairs from Search Engi
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