Not Logged In

Towards a Theory of Random Walk Planning: Regress Factors, Fair Homogeneous Graphs, and Extensions

Full Text: 2014-AICom-random-walk-theory-preprint.pdf PDF

Random walks are a relatively new component used in several state of the art satisficing planners. Empirical results have been mixed: while the approach clearly outperforms more systematic search methods such as weighted A* on many planning domains, it fails in many others. So far, the explanations for these empirical results have been somewhat ad hoc. This paper proposes a formal framework for comparing the performance of random walk and systematic search methods. Fair homogenous and Infinitely Regressable homogenous graphs are proposed as graph classes that represents characteristics of the state space of prototypical planning domains, and is simple enough to allow a theoretical analysis of the performance of both random walk and systematic search algorithms. This gives well-founded insights into the relative strength and weaknesses of these approaches. The close relation of the models to some well-known planning domains is shown through simplified but semi-realistic planning domains that fulfill the constraints of the models. One main result is that in contrast to systematic search methods, for which the branching factor plays a decisive role, the performance of random walk methods is determined to a large degree by the Regress Factor, the ratio between the probabilities of progressing towards and regressing away from a goal with an action. The performance of random walk and systematic search methods can be compared by considering both branching and regress factors of a state space.

Citation

H. Nakhost, M. Müller. "Towards a Theory of Random Walk Planning: Regress Factors, Fair Homogeneous Graphs, and Extensions". AI Communications, 27(4), pp 329-344, January 2014.

Keywords:  
Category: In Journal
Web Links: IOS Press

BibTeX

@article{Nakhost+Müller:14,
  author = {Hootan Nakhost and Martin Müller},
  title = {Towards a Theory of Random Walk Planning: Regress Factors, Fair
    Homogeneous Graphs, and Extensions},
  Volume = "27",
  Number = "4",
  Pages = {329-344},
  journal = {AI Communications},
  year = 2014,
}

Last Updated: June 30, 2020
Submitted by Sabina P

University of Alberta Logo AICML Logo