Rates of Convergence for the Move-to-Root Markov Chain for Binary Search Trees

Citation
P. Dobrow, Robert et Fill, James Allen, Rates of Convergence for the Move-to-Root Markov Chain for Binary Search Trees, Annals of applied probability , 5(1), 1995, pp. 20-36
ISSN journal
10505164
Volume
5
Issue
1
Year of publication
1995
Pages
20 - 36
Database
ACNP
SICI code
Abstract
The move-to-root heuristic is a self-organizing rule that attempts to keep a binary search tree in near-optimal form. It is a tree analogue of the move-to-front scheme (also known as the weighted random-to-top card shuffle or Tsetlin library) for self-organizing lists. We study convergence of the move-to-root Markov chain to its stationary distribution and show that move-to-root converges two to four times faster than move-to-front for many examples. We also discuss asymptotics for expected search cost. For equal weights, cn/lnn steps are necessary and sufficient to drive the maximum relative error to 0.