Efficient Cross-validation for Decision Trees: Revision history

Jump to navigation Jump to search

Diff selection: Mark the radio buttons of the revisions to compare and hit enter or the button at the bottom.
Legend: (cur) = difference with latest revision, (prev) = difference with preceding revision, m = minor edit.

24 December 2023

  • curprev 03:1803:18, 24 December 2023SatoshiNakamoto talk contribs 1,778 bytes +1,778 Created page with "Title: Efficient Cross-validation for Decision Trees Research Question: How can we make decision tree cross-validation more efficient? Methodology: The researchers proposed a method to integrate cross-validation with decision tree induction, reducing the computational overhead. They focused on refining a single node of the tree and identified the computations that were prone to redundancy. They then analyzed how this redundancy could be reduced and how performance coul..."