Jump to content

Best node search

From Wikipedia, the free encyclopedia

This is an old revision of this page, as edited by Citation bot (talk | contribs) at 18:43, 9 December 2022 (Alter: pages. Formatted dashes. | Use this bot. Report bugs. | Suggested by Abductive | #UCB_webform 3538/3850). The present address (URL) is a permanent link to this revision, which may differ significantly from the current revision.

Best node search (BNS), originally known as fuzzified game tree search, is a minimax search algorithm, developed in 2011. The idea is that the knowledge that one subtree is relatively better than some (or all) other(s) may be propagated sooner than the absolute value of minimax for that subtree. Then a repetitive search narrows until a particular node is shown to be relatively best.

First an initial guess at the minimax value must be made, possibly based on statistical information obtained elsewhere. Then BNS calls search that tells whether the minimax of the subtree is smaller or bigger than the guess. It changes the guessed value until alpha and beta are close enough or only one subtree allows a minimax value greater than the current guess. These results are analogous, respectively, to "prove best" and "disprove rest" heuristic search strategies.

The search result is the node (move) whose subtree contains the minimax value, and a bound on that value, but not the minimax value itself.[1] Experiments with random trees show it to be the most efficient minimax algorithm.[citation needed]

Pseudocode

function nextGuess(α, β, subtreeCount) is
    return α + (β − α) × (subtreeCount − 1) / subtreeCount


function bns(node, α, β) is
    subtreeCount := number of children of node

    do
        test := nextGuess(α, β, subtreeCount)
        betterCount := 0
        for each child of node do
            bestVal := −alphabeta(child, −test, −(test − 1))
            if bestVal ≥ test then
                betterCount := betterCount + 1
                bestNode := child
        (update number of sub-trees that exceeds separation test value)
        (update alpha-beta range)
    while not (β − α < 2 or betterCount = 1)

    return bestNode

The default nextGuess function above may be replaced with one which uses statistical information for improved performance.

Generalization

Tree searching with Murphy Sampling[2] is an extension of Best Node Search to non-deterministic setting.

References

  1. ^ Rutko, Dmitrijs (2011). "Fuzzified Algorithm for Game Tree Search with Statistical and Analytical Evaluation" (PDF). Scientific Papers, University of Latvia. 770: 90–111. Retrieved 5 November 2022.
  2. ^ Kaufmann, Emilie; Koolen, Wouter; Garivier, Aurelien (2018). "Sequential Test for the Lowest Mean: From Thompson to Murphy Sampling". arXiv:1806.00973 [stat.ML].