computer science cpsc 322 lecture 13 arc consistency (4.5, 4.6 ) slide 1
TRANSCRIPT
Computer Science CPSC 322
Lecture 13
Arc Consistency
(4.5, 4.6 )
Slide 1
Announcements• Assignment 2 out later today – Due Friday Feb. 13
• Can already start doing the first 2 questions after today’s class
• Remember that I have posted in Connect:
• Learning goals for the whole course
• Short questions on material for the whole course.Both midterm and final will have questions very similar, or even
verbatim, from this set ( about 40-60% of overall mark)
You can answer these questions by studying the slides and texbook
– Cover questions as we proceed through the material, come to see us if you have doubts on how to answer
– BUT DO STUDY THE REVELANT MATERIAL FIRST!
Do not wait until just before the midterm to review the questions, if you start now it will be much easier to cover all the relevant ones before the exam
2
Lecture Overview
• Recap of Lecture 12• Arc Consistency for CSP• Domain Splitting
3
Search-Based Approach• Constraint Satisfaction (Problems):
• State: assignments of values to a subset of the variables• Successor function: assign values to a “free” variable• Goal test: all variables assigned a value and all constraints satisfied?• Solution: possible world that satisfies the constraints• Heuristic function: none (all solutions at the same distance from start)
• Planning : • State• Successor function• Goal test• Solution• Heuristic function
• Inference• State• Successor function• Goal test• Solution• Heuristic function
V1 = v1
V2 = v1
V1 = v1
V2 = v2
V1 = v1
V2 = vk
V1 = v1
V2 = v1
V3 = v2
V1 = v1
V2 = v1
V3 = v1
{}
V1 = v1 V1 = vk
4
• Explore search space via DFS but evaluate each constraint as soon as all its variables are bound.
• Any partial assignment that doesn’t satisfy the constraint can be pruned.
Backtracking algorithms
Check unary constraints on V1
If not satisfied = PRUNE
Check constraints on V1
and V2 If not satisfied = PRUNEV1 = v1
V2 = v1
V1 = v1
V2 = v2
V1 = v1
V2 = vk
V1 = v1
V2 = v1
V3 = v2
V1 = v1
V2 = v1
V3 = v1
{}
V1 = v1 V1 = vk
5
• Backtracking relies on one or more heuristics to select which variables to consider next.- E.g, variable involved in the largest number of constraints:
“If you are going to fail on this branch, fail early!”
• But we will look at an alternative approach that can do much better
• Arc Consistency: • Key idea: prune the domains as much as possible before
searching for a solution.
Selecting variables in a smart way
6
Constraint NetworksDef. A constraint network is defined by a graph, with
- one node for every variable (drawn as circle)
- one node for every constraint (drawn as rectangle)- undirected edges running between variable nodes and constraint nodes
whenever a given variable is involved in a given constraint.
{2,3} {3}A B
A< B
A>C
{1,2}
C
7
- Three variables: A, B, C- Two constraints: A<B,
A>C
Arc Consistency
Definition:An arc <x, r(x,y)> is arc consistent if for each value x in dom(X) there is some value y in dom(Y) such that r(x,y) is satisfied.A network is arc consistent if all its arcs are arc consistent.
{1,2,3} {2,3}A B
A< B
Not arc consistent: No value in domain of B that satisfies A<B if A=3
Arc consistent: Both B=2 and B=3 have ok values for A (e.g. A=1)
8
Arc Consistency
Definition (arc consistency)An arc is arc consistent if for each value in
there is some value in such that is satisfied.),(, YXrX x Xdom
y )(Ydom ),( yxr
A. Both arcs are consistentB. Left consistent, right inconsistentC. Left inconsistent, right consistentD. Both arcs are inconsistent
Left = <X, (X < Y/2)> Right = <Y, (X < Y/2)>
2, 5 3, 6, 12
X Y
X< Y/2
9
Arc Consistency
Definition:An arc <x, r(x,y)> is arc consistent if for each value x in dom(X) there is some value y in dom(Y) such that r(x,y) is satisfied.A network is arc consistent if all its arcs are arc consistent.
2,5, 3,5,12
X Y
X< Y/2
Not arc consistent: No value in domain of X that satisfies X< Y/2 if
Arc consistent: Both X=2 and X=5 have ok values for Y (e.g. Y= )
10
Arc Consistency Algorithm
How can we enforce Arc Consistency?
• If an arc <X, r(X,Y)> is not arc consistent- Delete all values x in dom(X) for which there is no corresponding value
in dom(Y)- This deletion makes the arc <X, r(X,Y)> arc consistent.- This removal can never rule out any models/solutions
WHY?
11
2,3,4 1,2,3X Y
X< Y
Download this example (SimpleCSP) from Schedule page Save to a local file and the open file in
Lecture Overview
• Recap of Lecture 12• Arc Consistency for CSP• Domain Splitting
12
Arc Consistency Algorithm
How can we enforce Arc Consistency?
• If an arc <X, r(X,Y)> is not arc consistent- Delete all values x in dom(X) for which there is no corresponding value
in dom(Y)- This deletion makes the arc <X, r(X,Y)> arc consistent.- This removal can never rule out any models/solutions
Algorithm: general idea
• Go through all the arcs in the network• Make each arc consistent by pruning the appropriate domain,
when needed• Reconsider arcs that could be turned back to being inconsistent
by this pruning• Eventually reach a ‘fixed point’: all arcs consistent 13
Arc Consistency
{2,3} {3}A
B
A< B
Not arc consistent: No value in domain of B that satisfies A<B if A=3
A>C
{1,2}
C
Arc consistent: For each value in dom(C), there is one in dom(A) that satisfies A>C (namely A=3)
Try to build this simple network in AISpace
14
Arc Consistency
{2,3} {3}A
B
A< B
Not arc consistent: No value in domain of B that satisfies A<B if A=3
A>C
{1,2}
C
Arc consistent: For each value in dom(C), there is one in dom(A) that satisfies A>C (namely A=3)
{2,3} {3}
A B
A< B
A>C
{1,2}
C
After pruning A= 3: Not arc consistent anymore: For C=2, there is no value in dom(A) that satisfies A>C: prune!
15
• When we reduce the domain of a variable X to make an arc X,c arc consistent, which arcs do we need to reconsider?
Which arcs need to be reconsidered?
every arc Z,c' where c’ c involves Z and X:
Z1 c1
Z2 c2
Z3 c3
Yc
THESE
X
Ac4 16
• When we reduce the domain of a variable X to make an arc X,c arc consistent, which arcs do we need to reconsider?
Which arcs need to be reconsidered?
every arc Z,c' where c’ c involves Z and X:
Z1 c1
Z2 c2
Z3 c3
Yc
THESE
X
Ac4
Pruning elements of Dom(x) may remove values that made one or more of Z,c' consistent
17
• When we reduce the domain of a variable X to make an arc X,c arc consistent, which arcs do we need to reconsider?
You do not need to reconsider other arcs- If arc Y,c was arc consistent before, it will still be arc consistent “Consistent before” means each element yi in Y must have an element xi in X that
satisfies the constraint. Those xi would not be pruned from Dom(X), so arc Y,c stays consistent
- If an arc X,ci was arc consistent before, it will still be arc consistent
The domains of Zi have not been touched
- Nothing changes for arcs of constraints not involving X
Which arcs need to be reconsidered?
Z1 c1
Z2 c2
Z3 c3
Yc
THESE
X
Ac4
18
• Consider the arcs in turn, making each arc consistent• Reconsider arcs that could be made inconsistent again by
this pruning
• DO trace on ‘simple problem 1’ and on ‘scheduling problem 1’, trying to predict
- which arcs are not consistent and - which arcs need to be reconsidered after each removal
in
Which arcs need to be reconsidered?
19
Arc consistency algorithm (for binary constraints)
Procedure GAC(V,dom,C) Inputs V: a set of variables dom: a function such that dom(X) is the domain of variable X C: set of constraints to be satisfied Output arc-consistent domains for each variable Local DX is a set of values for each variable X TDA is a set of arcs
1: for each variable X do2: DX ←dom(X) 3: TDA ←{ X,c | X ∈ V, c ∈ C and X ∈ scope(c)} ⟨ ⟩ 4: while (TDA {}) 5: select X,c ∈TDA⟨ ⟩6: TDA ←TDA \ { X,c }⟨ ⟩7: NDX ←{x| x ∈ DX and y ∈ DY s.t. (x, y) satisfies c}8: if (NDX DX) then 9: TDA ←TDA ∪ { Z,c' | X ∈ scope(c'), c' ⟨ ⟩ c, Z ∈ scope(c') \ {X} } 10: DX ←NDX 11: return {DX| X is a variable}
Scope of constraint c is the set of variables involved in that constraint
NDX: values x for X for which there is a value for y supporting x
X’s domain changed: arcs (Z,c’) for variables Z sharing a constraint c’ with X could become inconsistent, thus are added to TDA
TDA: ToDoArcs,blue arcsin AIspace
If arc was inconsistent
Domain is reduced20
A. O(n*d)
B. O(dn)
C. O(nd)
D. O(n * d2)
Arc Consistency Algorithm: Complexity• Let’s determine Worst-case complexity of this procedure
(compare with DFS)• let the max size of a variable domain be d• let the number of variables be n• Worst-case time complexity of Backtracking (DFS with
pruning?)
Check unary constraints on V1
If not satisfied = PRUNE
Check constraints on V1
and V2 If not satisfied = PRUNE
V1 = v1
V2 = v1
V1 = v1
V2 = v2
V1 = v1
V2 = vk
V1 = v1
V2 = v1
V3 = v2
V1 = v1
V2 = v1
V3 = v1
{}
V1 = v1 V1 = vk
21
Arc Consistency Algorithm: Complexity• Let’s determine Worst-case complexity of this procedure
(compare with DFS……O(dn)……..)• let the max size of a variable domain be d• let the number of variables be n• The max number of binary constraints is ?
A. n * d
B. d * d
C. (n * (n-1)) / 2
D. (n * d) / 222
B. O(d)
C. O(n*d)A. O(n)
Arc Consistency Algorithm: Complexity• Let’s determine Worst-case complexity of this procedure
(compare with DFS O(dn) )• let the max size of a variable domain be d• let the number of variables be n• The max number of binary constraints is ? (n * (n-1)) / 2
• How many times, at worst, the same arc can be inserted in the ToDoArc list?
D. O(d2)
23
Arc Consistency Algorithm: Complexity• Let’s determine Worst-case complexity of this
procedure (compare with DFS O(dn) )• let the max size of a variable domain be d• let the number of variables be n• The max number of binary constraints is ?
(n * (n-1)) / 2• How many times, at worst, the same arc
can be inserted in the ToDoArc list? O(d)
• How many steps are involved in checking the consistency of an arc?
A. O(n2) B. O(d) C. O(n * d) D. O(d2)
24
Arc Consistency Algorithm: Complexity• Let’s determine Worst-case complexity of this
procedure (compare with DFS O(dn) )• let the max size of a variable domain be d• let the number of variables be n• The max number of binary constraints is ?
(n * (n-1)) / 2• How many times, at worst, the same arc
can be inserted in the ToDoArc list? O(d)• How many steps are involved in checking
the consistency of an arc? O(d2)
• Overall complexity: O(n2d3) • Compare to O(dN) of DFS!! Arc consistency is MUCH faster
25
Can we have an arc consistent network with non-empty domains
that has no solution?
YES
• Example: vars A, B, C with domain {1, 2} and constraints A ≠ B, B ≠ C, A ≠ C
• Or see AIspace CSP applet Simple Problem 2
26
Learning Goals for CSP• Define/read/write/trace/debug the arc consistency algorithm. Compute its
complexity and assess its possible outcomes
------------------------------------
To Do
Start Assignment 2
Do Practice Exercises 4a and 4b
Read Stocastic Local Search (4.8.1)
27