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Application of a Hierarchical Approach for Determining an Individual Study Trajectory

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Trees in SQL. Some answers to some common questions about SQL trees and hierarchies
  • J Celko
J. Celko, "Trees in SQL. Some answers to some common questions about SQL trees and hierarchies", Available: http://www.ibase.ru/files/articles/programming/dbmstrees/sqltrees.html.