posted on 2004-01-01, 00:00authored byRune M. Jensen, Randal E. Bryant, Manuela M. Veloso
In this paper we combine the goal directed search of
A* with the ability of BDDs to traverse an exponential
number of states in polynomial time. We introduce
a new algorithm, SetA*, that generalizes A* to expand
sets of states in each iteration. SetA* has substantial advantages
over BDDA*, the only previous BDD-based
A* implementation we are aware of. Our experimental
evaluation proves SetA* to be a powerful search
paradigm. For some of the studied problems it outperforms
BDDA*, A*, and BDD-based breadth-first search
by several orders of magnitude. We believe exploring
sets of states to be essential when the heuristic function
is weak. For problems with strong heuristics, SetA*
efficiently specializes to single-state search and consequently
challenges single-state heuristic search in general.