Classification of Errors in Text

نویسندگان

  • Jan Busta
  • Dana Hlavácková-Schindler
  • Milos Jakubícek
  • Karel Pala
چکیده

This paper presents two classifications of errors in Czech texts. As a basic resource we use the corpus (Chyby – Errors) which has been continuously developed from 1999–2000 ([1]). The corpus text contains various kinds of errors such as spelling, typographical, grammatical, semantic, lexical, and stylistic ones. They have been corrected manually and annotated according to the classification of errors (annotation scheme) developed for this purpose. For the annotation we implemented a tool named WinCorr. We mention the first annotation scheme and discuss the second one which has been designed recently to obtain more adequate description of the errors occurring in texts. We also discuss the principles on which both classifications are based.

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تاریخ انتشار 2009