On the estimation of error-correcting parameters

Pattern Recognition, 2000. Proceedings. 15th International Conference(2000)

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摘要
Error-correcting (EC) techniques allow for coping with divergences in pattern strings with regard to their “standard” form as represented by the language L accepted by a regular or context-free grammar. There are two main types of EC parsers: minimum-distance and stochastic. The latter apply the maximum likelihood rule: classification into the classes of the strings in L that have the greatest probability given the strings representing unknown patterns. Stochastic models are important in pattern recognition if good estimations for their parameters are provided. The problem of parameter estimation has been well studied for stochastic grammars, but this is not the case of EC parameters. This work is aimed at providing solutions to adequately solve it
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关键词
error correction,formal languages,maximum likelihood sequence estimation,parameter estimation,pattern classification,stochastic processes,string matching,EC parsers,context-free grammar,error-correcting parameter estimation,language,maximum likelihood rule,minimum-distance parsers,pattern recognition,pattern string divergences,regular grammar,stochastic models,stochastic parsers,string classes
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