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1 Tree Searching Strategies
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2 The procedure of solving many problems may be represented by trees. Therefore the solving of these problems becomes a tree searching problem.
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3 Satisfiability problem Tree Representation of Eight Assignments. If there are n variables x 1, x 2, …,x n, then there are 2 n possible assignments.
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4 Satisfiability problem An instance: -x 1 …….. …… (1) x 1 …………..(2) x 2 v x 5 …. ….(3) x 3 ……. …….(4) -x 2 ……. …….(5) A Partial Tree to Determine the Satisfiability Problem. We may not need to examine all possible assignments.
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5 Hamiltonian circuit problem E.g. the Hamiltonian circuit problem A Graph Containing a Hamiltonian Circuit
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6 Fig. 6-8 The Tree Representation of Whether There Exists a Hamiltonian Circuit of the Graph in Fig. 6-6
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7 A tree showing the non-existence of any Hamiltonian circuit.
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8 8-Puzzle Problem Initial State: 23 184 765 Goal State: 123 84 765
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9 Tree Representation of the solution of 8-puzzle problem
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10 How to expand the tree ? Breadth-First Search Depth-First Search Hill Climbing Best-First Search Branch-and-Bound Strategy (for optimization problems) A* Algorithm
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11 Breadth-First Search Scheme Step1 Step1: Form a one-element queue consisting of the root node. Step2 Step2: Test to see if the first element in the queue is a goal node. If it is, stop. Otherwise, go to step 3. Step3 Step3: Remove the first element from the queue. Add the first element ’ s descendants, if any, to the end of the queue. Step4 Step4: If the queue is empty, then signal failure. Otherwise, go to Step 2.
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12 23 184 765 23 184 765 123 84 765 283 14 765 23 184 765 123 784 65 123 84 765 1 2 3 4 5 6 7 Goal Node
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13 Depth-First Search Scheme Step1 Step1: Form a one-element stack consisting of the root node. Step2 Step2: Test to see if the top element in the queue is a goal node. If it is, stop. Otherwise, go to step 3. Step3 Step3: Remove the top element from the stack. Add the first element ’ s descendants, if any, to the top of the stack. Step4 Step4: If the stack is empty, then signal failure. Otherwise, go to Step 2.
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14 E.G.: the depth-first search E.g. sum of subset problem Given a set S={7, 5, 1, 2, 10}, answer if S ’ S sum of S ’ = 9. The Sum of Subset Problem Solved by Depth-First Search.
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15 Hill climbing A variant of depth-first search The method selects the locally optimal node to expand. E.g. for the 8-puzzle problem, evaluation function f(n) = w(n), where w(n) is the number of misplaced tiles in node n.
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16 Hill Climbing Search Scheme Step1 Step1: Form a one-element stack consisting of the root node. Step2 Step2: Test to see if the top element in the queue is a goal node. If it is, stop. Otherwise, go to step 3. Step3 Step3: Remove the top element from the stack. Add the first element ’ s descendants, if any, to the top of the stack according to order computed by the evaluation function. Step4 Step4: If the stack is empty, then signal failure. Otherwise, go to Step 2.
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17 An 8-Puzzle Problem Solved by the Hill Climbing Method
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18 Best-first search strategy Combing depth-first search and breadth-first search Selecting the node with the best estimated cost among all nodes. This method has a global view.
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19 Best-First Search Scheme Step1 Step1:Consturct a heap by using the evaluation function. First, form a 1-element heap consisting of the root node. Step2 Step2:Test to see if the root element in the heap is a goal node. If it is, stop; otherwise, go to Step 3. Step3 Step3:Remove the root element from the heap and expand the element. Add the descendants of the element into the heap. Step4 Step4:If the heap is empty, then signal failure. Otherwise, go to Step 2.
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20 An 8-Puzzle Problem Solved by the Best-First Search Scheme Goal Node
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21 Feasible Solution vs. Optimal Solution DFS, BFS, hill climbing and best-first search can not be used to solve optimization problems. They only point out a feasible solution.
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22 The branch-and-bound strategy This strategy can be used to solve optimization problems without an exhaustive search.
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23 Global Maximum and Local Maximum local maximum global maximum
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24 A Multi-Stage Graph Searching Problem.
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25 E.G.:A Multi-Stage Graph Searching Problem
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26 Solved by branch-and-bound
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27 Solved by branch-and-bound
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28 Branch-and-bound strategy 2 mechanisms: A mechanism to generate branches A mechanism to generate a bound so that many braches can be terminated. Although it is usually very efficient, a very large tree may be generated in the worst case. It is efficient in the sense of average case.
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29 Exercise Use BFS, DFS, Hill-Climbing and Best-First Search schemes to solve the following 8-puzzle problem with the evaluation function being the number of misplaced tiles. 23 184 765 Initial State: Goal State: 123 784 65
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