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1 Constraint Programming: An Introduction Adapted by Cristian OLIVA from Peter Stuckey (1998) Ho Chi Minh City
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2 Definitions A constraint C is of the form where m 0 y c 1,c 2,…,c m are primitives constraints. There are two distinct constraints : TRUE and FALSE The empty conjunction of constraints is written as true. The conjunction of two constraints C 1 and C 2 is written
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3 Definitions Given a domain D and a constraint C, we can determine values of variables for which the constraint holds. EXAMPLE 1. X=Y+Z The assignment : Holds the constraint and for that the constraint is TRUE. The assignment : Doesn’t hold the constraint and then the constraint is FALSE.
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4 Definitions A set of pairs for a set V of variables is an asignment of values from the domaine D to variables in V. Let be V={x 1,x 2,…,x n } and V'V, then (V') is : where
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5 Definitions (V') is an instantiation of the variables in V'. An instantiation (V'), where V'V, is a partial solution if it satisfy all primitive constraints that contain the variables of V'. An instantiation (V) is a solution if it satisfy the constraint C with domain D.
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6 Definitions A constraint C is satisfiable if it has at least one solution. Otherwise, it is unsatisfiable. Two constraints C 1 and C 2 are equivalent if they have the same set of solutions.
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7 Definitions The function primitivas takes a constraint. and returns the set of primitive constraints {c 1,c 2,…,c m }
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8 Definitions Given a constraint C and given a domain D, Satisfaction : Does the constraint have a solution? Solution : Give me a solution to the constraint if one exists. Constraint solver is an algorithm that determine the satisfaction of a constraint. However, these algorithms find solutions too.
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9 Domains In general, constraints in Constraint programming mainly operate on domains which are either discrete or continuous. The most known are : Linear arithmetics constraints Booleans constraints Sequence constraints Blocks world constraints Finite constraints domains Others…
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10 Finite Constraint Domains Constraint Satisfaction Problems (CSP). A CSP consist in : A set of variables V={x 1,x 2,…,x n } For each variable x i there is a finite set of possible values D(x i ) (domain) A set of constraints C that restrict possible values that a variable can take. A solution to the CSP is an instantiation (V) that satisfy C.
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11 Constraint Satisfaction Problem ¿How to model an optimisation problem by using CSP ? It can be express as a sequence of CSP. For instance, we can create a variable that represents the objective value. We can add the following constraint: Objective_function<objective_current_value
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Different kinds of constraint satisfaction techniques Some of the constraint satisfaction techniques are: Chronological backtracking: Exponential time complexity. Complete solver. Polynomial time complexity. Incomplete Solver. Local consistency Node consistency Arc Consistency Hyper-arc Consistency Bounds consistency 12
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13 Local Consistency Notion The arity of a primitive constraint is the number of variables it involves. The arity of a CSP is equal to the arity of the highest arity constraint.
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14 Local Consistency Notion An instantiation (V'), where V'V, is consistent if and only if (V') is a partial solution of CSP. A solution to the CSP is a consistent instantiation (V).
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15 Node and Arc consistency Basic Idea: Find a CSP equivalent to the original one with smaller domains. Key: examine 1 prim. constraint c, one at a time. Consistency-Node: (vars(c)={x}) remove the values of the domain of x that no satisfy c Consistency-Arc: (vars(c)={x,y}) remove the values of D(x) for which there is not a value in D(y) that satisfy c and vice-versa.
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16 Node consistent A primitive constraint c es node consistent with domain D if |vars(c)| 1 or if vars(c) = {x} then for each d in D(x) d x is a solution of c. A CSP is node consistent if each primitive constraint is node consistent with D.
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17 Node-consistent Example 1: This CSP is node-consistent? NO!!!
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18 Achieving Node Consistency 18 Node_consistent Node_consistent(c,d) For each prim. Constraint c in C node_consistent_primitive D := node_consistent_primitive(c, D) Return D Node_consistent_primitive Node_consistent_primitive(c, D) If |vars(c)| =1 then Let {x} = vars(c) Return D
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19 Arc Consistency A primitive constraint c is arc consistent with domain D if |vars{c}| ≠2 or Vars(c) = {x,y} and for each d in d(x) there exists e in d(y) such that and similarly for y A CSP is arc consistent if each prim. Constraint in it is arc consistent
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20 Arc-Consistency Example 2: This CSP is arc-consistent? NO!!!
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21 Achieving Arc Consistency Arc_consistent Arc_consistent(c,d) Repeat W := d For each prim. Constraint c in C arc_consistent_primitive D := arc_consistent_primitive(c,d) Until W = D Return D
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22 Achieving Arc Consistency Arc_consistent_primitive Arc_consistent_primitive(c, D) If |vars(c)| = 2 then Return D Removes values which are not arc consistent with c
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23 Using node and arc consistency. We can build constraint solvers using the consistency methods Two important kinds of domain False domain: some variable has empty domain Valuation domain: each variable has a singleton domain
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24 Node and Arc Cons. Solver Arc_solve(C,D) node_consistent D := node_consistent(C,D) arc_consistent D := arc_consistent(C,D) if D is a false domain return false if D is a valuation domain return satisfiable(C,D) return unknown
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25 Example : Graph colouring A B C D E F G
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26 Node and Arc Solver Example Colouring graph: with constraints A B C D E F G Node consistent
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27 A B C D E F G Arc consistent Node and Arc Solver Example Colouring graph: with constraints
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A B C D E F G Arc- consistent Node and Arc Solver Example Colouring graph: with constraints
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A B C D E F G Arc- consistent Reponse: Unknown Node and Arc Solver Example Colouring graph: with constraints
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30 Backtracking Constraint Solver We can combine consistency with the backtracking solver. Apply node and arc consistency before starting the backtracking solver and after each variable is given a value.
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31 A B C D E F G Backtracking Choice a variable whose domain has a cardinality >1, G Add constraint G=redApply consistency Reponse: satisfiable (TRUE) Backtracking Constraint Solver Colouring graph: with constraints
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32 Hyper-arc consistency What happens when we have primitive constraints that contains more than two variables? hyper-arc consistency: extending the arc consistency to a arbitrary number of variables. Unfortunately determine the hyper-arc consistency is NP-hard. What is the solution?
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33 Hyper-arc consistency A primitive constraint c is hyper-arc consistent with domain D if for each variable x in c and domain assignment tD(X), there is an assignment t 1,…,t k to the remaining variables in c such that t j D(X j ) for 1j k and ((t 1,X 1 ),…(t k,X k )) is a solution of c. A CSP is hyper-arc consistent if each primitive constraint c i is hyper-arc consistent.
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34 Bounds Consistency arithmetic CSP: constraints are integer range: [l..u] represents the set of integers {l, l+1,..., u} idea use real number consistency and only examine the endpoints (upper and lower bounds) of the domain of each variable Define min(D,x) as minimum element in domain of x, similarly for max(D,x)
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35 Bounds consistency A prim. constraint c is bounds consistent with domain D if for each var x in vars(c) exist real numbers d 1,..., d k for remaining vars x1,..., xk such that : is a solution of c And similarly for An arithmetic CSP is bounds consistent if all its primitive constraints are.
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36 Examples What domain is bounds consistent? Compare with the hyper-arc consistent domain
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37 Achieving Bounds Consistency Given a current domain D we wish to modify the endpoints of domains so the result is bounds consistent propagation rules do this
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38 Achieving Bounds Consistency Consider the primitive constraint X = Y + Z which is equivalent to the three forms Reasoning about minimum and maximum values: : Propagation rules for the constraint X = Y + Z
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39 Propagation rules for X=Y+Z Bounds_consistency(D) Return D
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40 Propagation rules for Disequations give weak propagation rules, only when one side takes a fixed value that equals the minimum or maximum of the other is there propagation.
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41 Alldifferent alldifferent({V 1,...,V n }) holds when each variable V 1,..,V n takes a different value alldifferent({X, Y, Z}) is equivalent to Arc consistent with domain BUT there is no solution! specialized consistency for alldifferent can find it
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42 Other Complex Constraints schedule n tasks with start times Si and durations Di needing resources Ri where L resources are available at each moment array access if I = i, then X = V i and if X ≠ V i then I ≠ i
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43 Optimization for CSP Because domains are finite can use a solver to build a straightforward optimizer retry_int_opt retry_int_opt(C, D, f, best) int_solv D2 := int_solv(C,D) if D2 is a false domain then return best let sol be the solution corresponding to D2 retry_int_opt return retry_int_opt(C /\ f < sol(f), D, f, sol)
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44 Optimization Backtracking Since the solver may use backtrack search anyway combine it with the optimization At each step in backtracking search, if best is the best solution so far add the constraint f < best(f)
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45 Branch and Bound Opt. The previous methods,unlike simplex don't use the objective function to direct search branch and bound optimization for (C,f) use simplex to find a real optimal, if solution is integer stop otherwise choose a var x with non-integer opt value d and examine the problems use the current best solution to constrain prob.
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