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Mark my words! Linguistic style accommodation in social media
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In: http://www.cs.cornell.edu/~cristian/papers/accommodation.pdf (2011)
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Using mostly native data to correct errors in learners’ writing
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In: http://research.microsoft.com/pubs/132140/ESLA_cameraReady_final.pdf (2010)
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Using Mostly Native Data to Correct Errors in Learners’ Writing: a MetaClassifier Approach. Human Language Technologies: The 2010
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In: http://www.aclweb.org/anthology/N/N10/N10-1019.pdf (2010)
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Correcting ESL errors using phrasal smt techniques
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In: http://www.mt-archive.info/Coling-ACL-2006-Brockett.pdf (2006)
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Correcting ESL errors using phrasal smt techniques
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In: http://acl.ldc.upenn.edu/P/P06/P06-1032.pdf (2006)
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Sentencelevel mt evaluation without reference translations: beyond language modeling
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In: http://www.mt-archive.info/EAMT-2005-Gamon.pdf (2005)
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2003) French Amalgam: A machine-learned sentence realization system
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In: http://sites.univ-provence.fr/veronis/Atala/TALN/pdf/smets.pdf (2005)
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Sentence-level MT Evaluation Without Reference Translations: Beyond Language Modeling
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In: http://research.microsoft.com/~anthaue/eamt05_mt_Eval.pdf (2005)
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Sentiment classification on customer feedback data: noisy data, large feature vectors, and the role of linguistic analysis
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In: http://acl.ldc.upenn.edu/coling2004/MAIN/pdf/121-637.pdf (2005)
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Linguistically informed statistical models of constituent structure for ordering in sentence realization
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In: http://www.aclweb.org/anthology-new/C/C04/C04-1097.pdf (2004)
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Linguistically informed statistical models of constituent structure for ordering in sentence realization
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In: http://www.mt-archive.info/Coling-2004-Ringger.pdf (2004)
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Linguistic correlates of style: authorship classification with deep linguistic analysis features
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In: http://research.microsoft.com/nlp/publications/coling2004_authorship.pdf (2004)
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Combining decision trees and transformationbased learning to correct transferred linguistic representations
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In: http://www.mt-archive.info/MTS-2003-Corston.pdf (2003)
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Machinelearned contexts for linguistic operations in German sentence realization
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In: http://research.microsoft.com/pubs/68881/acl02_mlcontext.pdf (2002)
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Proceedings of the 40th Annual Meeting of the Association for Computational Linguistics (ACL), Philadelphia, July 2002, pp. 25-32. Machine-learned contexts for linguistic operations
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In: http://acl.ldc.upenn.edu/P/P02/P02-1004.pdf (2002)
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Intra-sentence punctuation insertion in natural language generation
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In: ftp://ftp.research.microsoft.com/pub/tr/tr-2002-58.pdf (2002)
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Using Machine Learning for System-Internal Evaluation of Transferred Linguistic Representations
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In: http://research.microsoft.com/nlp/publications/lfeval.pdf (2001)
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Abstract:
We present an automated, system-internal evaluation technique for linguistic representations in a large-scale, multilingual MT system. We use machine-learned classifiers to recognize the differences between linguistic representations generated from transfer in an MT context from representations that are produced by "native " analysis of the target language. In the MT scenario, convergence of the two is the desired result. Holding the feature set and the learning algorithm constant, the accuracy of the classifiers provides a measure of the overall difference between the two sets of linguistic representations: classifiers with higher accuracy correspond to more pronounced differences between representations. More importantly, the classifiers yield the basis for error-analysis by providing a ranking of the importance of linguistic features. The more salient a linguistic criterion is in discriminating transferred representations from "native " representations, the more work will be needed in order to get closer to the goal of producing native-like MT. We present results from using this approach on the Microsoft MT system and discuss its advantages and possible extensions.
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URL: http://research.microsoft.com/nlp/publications/lfeval.pdf http://citeseerx.ist.psu.edu/viewdoc/summary?doi=10.1.1.137.3027
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Using Machine Learning for System-Internal Evaluation of Transferred Linguistic Representations
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In: http://www.mt-archive.info/MTS-2001-Gamon.pdf (2001)
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Using Machine Learning for System-Internal Evaluation of Transferred Linguistic Representations
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In: http://www.eamt.org/events/summitVIII/papers/gamon.pdf (2001)
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Practical Experience with Grammar Sharing in Multilingual NLP
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In: http://acl.ldc.upenn.edu/W/W97/W97-0908.pdf (1997)
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