State space search

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State space search is a process used in the field of artificial intelligence (AI) in which successive configurations or states of an instance are considered, with the goal of finding a goal state with a desired property.

In AI, problems are often modelled as a state space, a set of states that a problem can be in. The set of states form a graph where two states are connected if there is an operation that can be performed to transforms the first state into the second.

State space search as used in AI differs from traditional computer science search methods because the state space is implicit: the typical state space graph is much too large to generate and store in memory. Instead, nodes are generated as they are explored, and typically discarded thereafter. A solution to a combinatorial search instance may consist of the goal state itself, or of a path from some initial state to the goal state.

[edit] References

  • Stuart J. Russell and Peter Norvig (2003). Artificial Intelligence: A Modern Approach. Prentice Hall.

[edit] See also