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61
Constructing corpora for the development and evaluation of paraphrase systems
In: Computational linguistics. - Cambridge, Mass. : MIT Press 34 (2008) 4, 597-614
BLLDB
OLC Linguistik
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62
Logarithmic Opinion Pools for Conditional Random Fields
BASE
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63
Scaling conditional random fields using error correcting codes
Abstract: Conditional Random Fields (CRFs) have been applied with considerable success to a number of natural language processing tasks. However, these tasks have mostly involved very small label sets. When deployed on tasks with larger label sets, the requirements for computational resources mean that training becomes intractable. This paper describes a method for training CRFs on such tasks, using error correcting output codes (ECOC). A number of CRFs are independently trained on the separate binary labelling tasks of distinguishing between a subset of the labels and its complement. During decoding, these models are combined to produce a predicted label sequence which is resilient to errors by individual models. Error-correcting CRF training is much less resource intensive and has a much faster training time than a standardly formulated CRF, while decoding performance remains quite comparable. This allows us to scale CRFs to previously impossible tasks, as demonstrated by our experiments with large label sets. ; June 2005
Keyword: error-correcting codes; machine learning; named entity recognition; natural lanuagage processing; noun phrase chunking; part of speech tagging
URL: http://hdl.handle.net/11343/33831
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