Source: David Lee Matuszek

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Presentation transcript:

Source: David Lee Matuszek Tree Searches Source: David Lee Matuszek

Tree searches A tree search starts at the root and explores nodes from there, looking for a goal node (a node that satisfies certain conditions, depending on the problem) L M N O P G Q H J I K F E D B C A For some problems, any goal node is acceptable (N or J); for other problems, you want a minimum-depth goal node, that is, a goal node nearest the root (only J) Goal nodes

Depth-first searching A depth-first search (DFS) explores a path all the way to a leaf before backtracking and exploring another path For example, after searching A, then B, then D, the search backtracks and tries another path from B Node are explored in the order A B D E H L M N I O P C F G J K Q N will be found before J L M N O P G Q H J I K F E D B C A

How to do depth-first searching Put the root node on a stack; while (stack is not empty) { remove a node from the stack; if (node is a goal node) return success; put all children of node onto the stack; } return failure; At each step, the stack contains some nodes from each of a number of levels The size of stack that is required depends on the branching factor b While searching level n, the stack contains approximately (b-1)*n nodes When this method succeeds, it doesn’t give the path

Recursive depth-first search search(node): if node is a goal, return success; for each child c of node { if search(c) is successful, return success; } return failure; The (implicit) stack contains only the nodes on a path from the root to a goal The stack only needs to be large enough to hold the deepest search path When a solution is found, the path is on the (implicit) stack, and can be extracted as the recursion “unwinds” print node and print c and

Breadth-first searching A breadth-first search (BFS) explores nodes nearest the root before exploring nodes further away For example, after searching A, then B, then C, the search proceeds with D, E, F, G Node are explored in the order A B C D E F G H I J K L M N O P Q J will be found before N L M N O P G Q H J I K F E D B C A

How to do breadth-first searching Put the root node on a queue; while (queue is not empty) { remove a node from the queue; if (node is a goal node) return success; put all children of node onto the queue; } return failure; Just before starting to explore level n, the queue holds all the nodes at level n In a typical tree, the number of nodes at each level increases exponentially with the depth Memory requirements may be infeasible When this method succeeds, it doesn’t give the path There is no “recursive” breadth-first search equivalent to recursive depth-first search

Comparison of algorithms Depth-first searching: Put the root node on a stack; while (stack is not empty) { remove a node from the stack; if (node is a goal node) return success; put all children of node onto the stack; } return failure; Breadth-first searching: Put the root node on a queue; while (queue is not empty) { remove a node from the queue; if (node is a goal node) return success; put all children of node onto the queue; } return failure;

Depth- vs. breadth-first searching When a breadth-first search succeeds, it finds a minimum-depth (nearest the root) goal node When a depth-first search succeeds, the found goal node is not necessarily minimum depth For the recursive solution we have a path too the node. For a large tree, breadth-first search memory requirements may be excessive For a large tree, a depth-first search may take an excessively long time to find even a very nearby goal node How can we combine the advantages (and avoid the disadvantages) of these two search techniques?

Depth-limited searching Depth-first searches may be performed with a depth limit: boolean limitedDFS(Node node, int limit, int depth) { if (depth > limit) return failure; if (node is a goal node) return success; for each child of node { if (limitedDFS(child, limit, depth + 1)) return success; } return failure; } Since this method is basically DFS, if it succeeds then the path to a goal node is in the stack

Depth-first iterative deepening limit = 0; found = false; while (not found) { found = limitedDFS(root, limit, 0); limit = limit + 1; } This searches to depth 0 (root only), then if that fails it searches to depth 1, then depth 2, etc. If a goal node is found, it is a nearest node and the path to it is on the stack Required stack size is limit of search depth (plus 1)

Time requirements for depth-first iterative deepening on binary tree Nodes at each level 1 2 4 8 16 32 64 128 Nodes searched by DFS 1 +2 = 3 +4 = 7 +8 = 15 +16 = 31 +32 = 63 +64 = 127 +128 = 255 Nodes searched by iterative DFS 1 +3 = 4 +7 = 11 +15 = 26 +31 = 57 +63 = 120 +127 = 247 +255 = 502

Time requirements on tree with branching factor 4 Nodes at each level 1 4 16 64 256 1024 4096 16384 Nodes searched by DFS 1 +4 = 5 +16 = 21 +64 = 85 +256 = 341 +1024 = 1365 +4096 = 5461 +16384 = 21845 Nodes searched by iterative DFS 1 +5 = 6 +21 = 27 +85 = 112 +341 = 453 +1365 = 1818 +5461 = 7279 +21845 = 29124

Iterative deepening: summary When searching a binary tree to depth 7: DFS requires searching 255 nodes Iterative deepening requires searching 502 nodes Iterative deepening takes only about twice as long When searching a tree with branching factor of 4 (each node may have four children): DFS requires searching 21845 nodes Iterative deepening requires searching 29124 nodes Iterative deepening takes about 4/3 = 1.33 times as long The higher the branching factor, the lower the relative cost of iterative deepening depth first search

Other search techniques Breadth-first search (BFS) and depth-first search (DFS) are the foundation for all other search techniques We might have a weighted tree, in which the edges connecting a node to its children have differing “weights” We might therefore look for a “least cost” goal The searches we have been doing are blind searches, in which we have no prior information to help guide the search If we have some measure of “how close” we are to a goal node, we can employ much more sophisticated search techniques We will not cover these more sophisticated techniques

The End