• Original research article
  • March 1, 2017
  • Open access

THE NOTION OF DISCREPANCIES KNOT LENGTH IN MANUSCRIPTS CLASSIFICATION

Abstract

The article formulates the principles of discrepancies knots formation in preparing material for the classification of manuscripts. The author summarizes the rules of singling out discrepancies knots previously proposed by textual critics and applies them to the text of the Church Slavonic translation of the Gospel of Matthew of the XI-XVI centuries. The applicability of the rules is substantiated by the method of Alekseev cluster analysis. This study allows formulating a definition of discrepancies knot length as a minimum element of the text, the change of which is not followed by the change in other elements.

References

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Author information

Dina Markovna Mironova

Saint Petersburg University

About this article

Publication history

  • Published: March 1, 2017.

Keywords

  • длина узла разночтений
  • классификация рукописей
  • кластеризация
  • коэффициент близости
  • матрица процентов сходства
  • метод кластерного анализа Алексеева
  • узел разночтений
  • discrepancies knot length
  • classification of manuscripts
  • clustering
  • closeness value
  • percent similarity matrix
  • cluster analysis method by Alekseev
  • discrepancies knot

Copyright

© 2017 The Author(s)
© 2017 Gramota Publishing, LLC

User license

Creative Commons Attribution 4.0 International (CC BY 4.0)