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Heuristic Search

Heuristic Search. Generate and Test Hill Climbing Simple Hill Climbing Steepest Ascend Hill Climbing Simulated Annealing Best First Search A* IDA* Beam Search AO*. Hill Climbing. Problems: local maxima problem plateau problem Ridge. goal. Ridge. plateau. goal.

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Heuristic Search

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  1. Heuristic Search • Generate and Test • Hill Climbing • Simple Hill Climbing • Steepest Ascend Hill Climbing • Simulated Annealing • Best First Search • A* • IDA* • Beam Search • AO*

  2. Hill Climbing • Problems: • local maxima problem • plateau problem • Ridge goal Ridge plateau goal

  3. Simulated Annealing • T = initial temperature • x = initial guess • v = Energy(x) • Repeat while T > final temperature • Repeat n times • X’ Move(x) • V’ = Energy(x’) • If v’ < v then accept new x [ x  x’ ] • Else accept new x with probability exp(-(v’ – v)/T) • T = 0.95T /* for example */ • At high temperature, most moves accepted • At low temperature, only moves that improve energy are accepted

  4. Best first Search BestFirstSearch(state space =<S,P,I,G,W>,f) Open  {<f(I),I>} Closed  whileOpen   do <wx,x>  ExtractMin(Open) ifGoal(x, ) then return x Insert(x,Closed) for y  Child(x ,)do if yClosed then Insert(<f(y),y>,Open) returnfail Open is implemented as a priority queue

  5. Best First Search • Example: The Eight-puzzle • The task is to transform the initial puzzle • into the goal state • by shifting numbers up, down, left or right.

  6. Best-First (Heuristic) Search 4 5 3 5 3 3 4 3 4 to the goal 3 to further unnecessary expansions

  7. Best First Search - A* <S,P,I,G,W> - state space h*(x) - a minimum path weight from x to the goal state h(x) - heuristic estimate of h*(x) g*(x) - a minimum path weight from I to x g(x) - estimate of g*(x) (i.e. minimal weight found as far f*(x) = g*(x) + h*(x) f(x) = g(x) + h(x)

  8. Search strategies - A* A*Search(state space =<S,P,I,G,W>,h) Open  {<h(I),0,I>} Closed  whileOpen   do <fx,gx,x>  ExtractMin(Open) [minimum for fx] ifGoal(x, ) then return x Insert(<fx,gx,x>,Closed) for y  Child(x ,)do gy = gx + W(x,y) fy = gy + h(y) if there is no <f,g,y>Closedwith ffythen Insert(< fy,gy,y>,Open) [replace existing <f,g,y>, if present] returnfail

  9. Search strategies - A*

  10. Best-First Search (A*) 0+4 1+5 1+3 1+5 2+3 2+3 2+4 3+3 3+4 3+2 3+4 goal ! 5+0 4+1 5+2

  11. Admissible search Definition An algorithm is admissible if it is guaranteed to return an optimal solution (with minimal possible path weight from the start state to a goal state) whenever a solution exists.

  12. Admissibility • What must be true about h for A* to find optimal path? 2 73 X Y h=100 h=1 1 1 h=0 h=0

  13. Admissibility • What must be true about h for A* to find optimal path? • A* finds optimal path if h is admissible; h is admissible when it never overestimates. 2 73 X Y h=100 h=1 1 1 h=0 h=0

  14. Admissibility • What must be true about h for A* to find optimal path? • A* finds optimal path if h is admissible; h is admissible when it never overestimates. • In this example, h is not admissible. 2 73 X Y h=100 h=1 1 1 h=0 h=0 g(X)+h(X) = 102 g(Y)+h(Y) = 74 Optimal path is not found!

  15. Admissibility of a Heuristic Function Definition A heuristic function h is said to be admissible if 0  h(n)  h*(n) for all nS.

  16. Proof of Optimality of A* Start • Let G be an optimal goal state with path cost f* • G2 be a sub optimal goal state with path cost g(G2) > f* • Suppose n is a leaf node on the optimal path to G n G G2 • Because h is admissible, f*  f(n) • Because n has not been chosen for expansion, f(n)  f(G2) • Therefore f*  f(G2) • Because G2 is a goal state, h(G2) = 0, and thus f(G2) = g(G2) • Therefore f*  g(G2) which contradicts our assumption

  17. Extreme Cases • If we set h=0, then A* is Breadth First search; h=0 is admissible heuristic (when all costs are non-negative). • If g=0 for all nodes, A* is similar to Steepest Ascend Hill Climbing • If both g and h =0, it can be as dfs or bfs depending on the structure of Open

  18. How to chose a heuristic? • Original problem PRelaxed problem P' • A set of constraints removing one or more constraints • P is complex P' becomes simpler • Use cost of a best solution path from n in P' as h(n) for P • Admissibility: • h* h • cost of best solution in P >= cost of best solution in P' Solution space of P Solution space of P'

  19. How to chose a heuristic - 8-puzzle • Example: 8-puzzle • Constraints: to move from cell A to cell B • cond1: there is a tile on A • cond2: cell B is empty • cond3: A and B are adjacent (horizontally or vertically) • Removing cond2: • h2 (sum of Manhattan distances of all misplaced tiles) • Removing cond2 and cond3: • h1 (# of misplaced tiles) • Here h2  h1

  20. How to chose a heuristic - 8-puzzle h1(start) = 7 h2(start) = 18

  21. Performance comparison Data are averaged over 100 instances of 8-puzzle, for varous solution lengths. Note: there are still better heuristics for the 8-puzzle.

  22. Comparing heuristic functions • Bad estimates of the remaining distance can cause extra work! • Given two algorithms A1 and A2 with admissible heuristics h1and h2< h*(n), • if h1(n) < h2(n) for all non-goal nodes n, then A1 expands at least as many nodes as A2 • h2 is said to be more informed than h1 or, A2dominates A1

  23. Relaxing optimality requirements A* algorithm Theorem If h is admissible, then A* algorithm is  -admissible, i.e. it finds a path with a cost at most (1+ )C*. Note hF does not need to be admissible

  24. Relaxing optimality requirements Weighted evaluation function fw(n) = (1–w)g(n) + w h(n) w = 0 - Breadth First w = 1/2 - A* w = 1 - Best First

  25. IDA*: Iterative deepening A* • To reduce the memory requirements at the expense of some additional computation time, combine uninformed iterative deepening search with A* • Use an f-cost limit instead of a depth limit

  26. Iterative Deepening A* • In the first iteration, we determine a “f-cost limit”f’(n0) = g’(n0) + h’(n0) = h’(n0), where n0 is the start node. • We expand nodes using the depth-first algorithm and backtrack whenever f’(n) for an expanded node n exceeds the cut-off value. • If this search does not succeed, determine the lowest f’-value among the nodes that were visited but not expanded. • Use this f’-value as the new limit value and do another depth-first search. • Repeat this procedure until a goal node is found.

  27. IDA* Algorithm - Top level function IDA*(problem) returns solution root :=Make-Node(Initial-State[problem]) f-limit:= f-Cost(root) loop do solution, f-limit := DFS-Contour(root, f-limit) if solution is not null,then return solution if f-limit = infinity, then return failure end

  28. IDA* contour expansion function DFS-Countour(node,f-limit) returns solution sequence and new f-limit if f-Cost[node] > f-limit then return (null, f-Cost[node] ) if Goal-Test[problem](State[node]) then return (node,f-limit) for each node sin Successor(node) do solution, new-f := DFS-Contour(s, f-limit) if solution is not null,then return (solution, f-limit) next-f := Min(next-f, new-f); end return (null, next-f)

  29. 11.9 S 12.4 A 13.4 D IDA* on a graph example 16.9 13.7 19.4 12.9 B D A E 14.0 19.9 16.9 19.7 17.7 13.0 C E E B B F 14.0 20.0 21.7 17.0 21.0 24.9 25.4 19.0 13.0 D F B F C E A C G 0.0 3.0 4.0 0.0 G C G F 0.0 G

  30. IDA* trace 11.9 IDA(S, 11.9) Level 0: 13.4 IDA(A, 11.9) IDA(S, 11.9) Level 1: IDA(D, 11.9) 12.4 13.4 IDA(A, 12.4) IDA(S, 12.4) Level 2: IDA(D, 12.9) IDA(A, 12.9) 19.4 IDA(E, 12.9) 12.9 IDA(S, 12.9) Level 3: IDA(F, 12.9) 13.0

  31. IDA*: Iteration 1, Limit = 4 0+4 1+5 1+3 2+3 2+3 2+4

  32. IDA*: Iteration 2, Limit = 5 0+4 1+5 1+3 2+3 2+3 3+3 3+4 3+2 goal ! 5+0 4+1

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