Arc consistency
AC5, AC2001, MAC
AC5
A generic arc-consistency algorithm and its specializationsAIJ 57 (2-3) October 1992
P. Van Hentenryck, Y. Deville, and C.M. Teng
ac5
Ac5 is a “generic” ac algorithm and can be specialised forspecial constraints (i.e. made more efficient when we knowsomething about the constraints)
Ac5 is at the heart of constraint programming
It can be “tweaked” to become ac3, or “tweaked” to become ac4But, it can exploit the semantics of constraints, and there’s the win
ac5
ac5 processes a queue of tuples (i,j,w)• w has been removed from Dj• we now need to reconsider constraint Cij• to determine the unsupported values in Di
A crucial difference between ac3 and ac5• ac3
• revise(i,j) because Dj has lost some values• seek support for each and every value in Di
• ac5• process(i,j,w) because Dj has lost the value w (very specific)• seek support, possibly, for select few (1?) value in Di
Therefore, by having a queue of (i,j,w) we might be able to do things much more efficiently
ac5, the intuition
• take an OOP approach• constraint is a class that can then be specialised• have a method to revise a constraint object• allow specialisation• have basic methods such as
• revise when lwb increases• revise when upb decreases• revise when a value is lost• revise when variable instantiated• revise initially
• methods take as arguments• the variable in the constraint that has changed• possibly, what values have been lost
Example: IntDomainVar x = pb.makeBoundIntVar(“x”,1,10);IntDomainVar y = pb.makeBoundIntVar(“y”,1,10);Constraint c = pb.lt(x,y);
[ac5() : boolean -> let Q := {} <1> in for (i,j) {(i,j) | Cij in C} <2> do let delta := arcCons(i,j) <3> in d[i] := d[i] \ delta <4> Q := enqueue(i,delta,Q) <5> while Q ≠ {} <6> do let (i,j,w) := dequeue(Q) <7> delta := localArcCons(i,j,w) <8> in Q := enqueue(i,delta,Q) <9> d[i] := d[i] \ delta <10> return allDomainsNonEmpty(d)] <11>
ac5, a sketch
ac5 has 2 phasesPhase 1, lines <1> to <5>- revise all the constraints- build up the Q of tuples (i,j,w)
Phase 2, lines <6> to <10>-process the queue - propagate effect of deleted values - exploit knowledge of semantics of constraints - add new deletion tuples to Q
ac5, the algorithm
This is just like revise, but delivers the set s ofunsupported values in d[i] over the constraint Cij
s is the set of disallowed values in d[i]remember check(i,x,j,y) is shorthand for Cij(x,y)
[arcCons(i,j) : set -> let s := {} in for x d[i] do let supported := false in for y d[j] while ¬supported do supported := check(i,x,j,y) if ¬supported then s := s {x} return s]
Can be specialised!
ac5, the algorithm
[localArcCons(i,j,w) : set -> arcCons(i,j)]
Ignores the value w and becomes revise!
We can specialise this method if we know something about the semantics of Cij
We might then do much better that arcCons in termsof complexity
What we have above is the dummy’s version, or when we know nothing about the constraint (and we get AC3!)
Revise the constraint Cij because d[j] lost the value w
[enqueue(i,delta,q) : set -> for (k,i) {(k,i) | Cki in C} do for w delta do q := q {(k,i,w} return q]
ac5, the algorithm
The domain d[i] has lost values deltaAdd to the queue of “things to do” the tuple (k,i,w)- For all w is in delta- For all Cki in C
[ac5() : boolean -> let Q := {} in for (i,j) {(i,j) | Cij in C} phase 1 do let delta := arcCons(i,j) in d[i] := d[i] \ delta Q := enqueue(i,delta,Q) while Q ≠ {} phase 2 do let (i,j,w) := dequeue(Q) delta := localArcCons(i,j,w) in Q := enqueue(i,delta,Q) d[i] := d[i] \ delta return allDomainsNonEmpty(d)]
ac5, the algorithm
ac5 has 2 phases- revise all the constraints and build up the Q using arcCons- process the queue and propagate using localArcCons, exploiting knowledge on deleted values and the semantics of constraints
Complexity of ac5
If arcCons is O(d2) and localArcCons is O(d) then ac5 is O(e.d2)
If arcCons is O(d) and localArcCons is O() then ac5 is O(e.d)
See AIJ 57 (2-3) page 299
Remember - ac3 is O(e.d3) - ac4 is O(e.d2)
Functional constraints
If c is functional
We can specialise arcCons and localArcCons for functional constraints
A constraint C_i,j is functional, with respect to a domain D, if and only if
• for all x in D[i] • there exists at most one value y in D[j] such that• Cij(x,y) holds
and
• for all y in D[j]• there exists at most one value in D[i] such that• Cji(y,x) holds The relation is a bijection
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An example: 3.x = y
If c is functional
Let f(x) = y and f’(y) = x (f’ is the inverse of f)
[arcCons(i,j) : set -> let s := {} f := Cij in for x d[i] do if f(x) d[j] then s := s {x} return s]
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If c is functional
Let inverse(f) deliver the f’, the inverse of function f
[localArcCons(i,j,w) : set -> let f := Cij g := Cji in if g(w) d[i]) then return {g(w)} else return {}]
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In our picture,• assume d[j] looses the value 2 • g(2) = 3• localArcCons(i,j,2) = {3}
Anti-functional constraints
If c is anti-functional
The value w in d[j] conflicts with only one value in d[i]
an example: x + 4 ≠ y
[localArcCons(i,j,w) : set -> let f := Cij g := Cji in if card(d[i]) = 1 & {g(w)} = d[i] then return d[i] else return {}]
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If d[i] has more than one value, no problem!
Other kinds of constraints that can be specialised
• monotonic• • localArcCons tops and tails domains
• but domains must be ordered• piecewise functional• piecewise anti-functional• piecewise monotonic
See: AIJ 57 & AR33 section 7
The AIJ57 paper by van Hentenryck, Deville, and Teng is a remarkable paper
• they tell us how to build a constraint programming language• they tell us all the data structures we need
• for representing variables, their domains, etc• they introduce efficient algorithms for arc-consistency• they show us how to recognise special constraints and how we should process them• they show us how to incorporate ac5 into the search process• they explain all of this in easy to understand, well written English
It is a classic paper, in my book!
AIJ57
A choco example
NOTE: old version of choco
x[0] = max(x[1],x[2],…,x[n-1])
x[0] = max(x[1],x[2],…,x[n-1])
The lower bound of vars[idx] has increasedvars[0] cannot take a value less than thatTherefore vars[0].setInf(vars[idx].getInf())
x[0] = max(x[1],x[2],…,x[n-1])
The upper bound of vars[idx] has decreased
x[0] = max(x[1],x[2],…,x[n-1])
idx > 0Find the largest upper bound of variables vars[1] to vars[n-1]
x[0] = max(x[1],x[2],…,x[n-1])
idx > 0Find the largest upper bound of variables vars[1] to vars[n-1]Reduce the upper bound of vars[idx] to be the largest upper bound
x[0] = max(x[1],x[2],…,x[n-1])
idx = 0 and upper bound of vars[idx] has decreased
x[0] = max(x[1],x[2],…,x[n-1])
No variable vars[1] to vars[n-1] can take a value greater than upper bound of vars[0]
x[0] = max(x[1],x[2],…,x[n-1])
On first posting the constraint, at top of search
x[0] = max(x[1],x[2],…,x[n-1])
Variable vars[idx] is instantiated
Challenge/Homework
Using only toolkit constraints such as leq, geq, …model x = max(y,z)
where x, y, and z are constrained integer variables
AC2001
Taken from IJCAI01
“Making AC-3 an Optimal Algorithm” by
Y Zhang and R. Yap
and
“Refining the basic constraint propagation algorithm”by
Christian Bessiere & Jean-Charles Regin
The complexity of ac3 A beautiful proof
• A constraint Cij is revised iff it enters the Q• Cij enters Q iff some value in d[j] is deleted• Cij can enter Q at most d times (the size of domain d[j])• A constraint can be revised at most d times• There are e constraints in C (the set of constraints)• revise is executed at most e.d times• the complexity of revise is O(d2)• the complexity of ac3 is then O(e.d3)
[revise(d:array<set>,c:tuple,i:integer,j:integer) : boolean ->let revised := false in (for x in copy(d[i]) (let supported := false in (for y in d[j] // this is naive (if check(c,x,y) (supported := true, return())), if not(supported) (delete(d[i],x), revised := true))), CONSISTENT := d[i] != {}, revised)]
When searching for a support for x in d[j] we always start from scratchThis is naïve.
• Assume domains are totally ordered• Let resumePoint[i,j,x] = y
• where y is the first value in d[j] that supports x in d[i]• i.e. C_i,j is satisfied by the pair (x,y)
• Assume succ(y,d) delivers the successor of y in domain d • (and nil if no successor exists)
When we revise constraint C_i,j, we look for support for x in d[j]• get the resumePoint for x in domain d[j] over the constraint• call this value y• if y is in d[j] then x is supported! Do nothing!• If y is not in d[j] then
• we search through the remainder of d[j] looking for support• we use a successor function to get next y in d[j]• if we find a y that satisfies the constraint set resumePoint[i,j,x] = y
[succ(x:integer,l:list) : integer -> if (l = nil) -1 else if (l[1] > x) l[1] else succ(x,cdr(l))]//// find the successor of x in ordered list l// NOTE: in the ac2001 algorithms we assume // we can do this in O(1)//
[existsY(d:array<set>,c:tuple,i:integer,j:integer,x:integer) : boolean -> let y := RP[i][j][x] in (if (y % d[j]) true else let supported := false in (y := succ(y,list!(d[j])), while (y > 0 & not(supported)) (if check(c,x,y) (RP[i][j][x] := y, supported := true) else y := succ(y,list!(d[j]))), supported))]//// find the first value y in d[j] that supports x in d[i]// if found return true otherwise false//
[revise(d:array<set>,c:tuple,i:integer,j:integer) : boolean -> let revised := false in (for x in copy(d[i]) (if not(existsY(d,c,i,j,x)) (delete(d[i],x), revised := true)), revised)]
In the two papers, the algorithm is shown to be optimal,for arbitrary binary csp’s
).( 2deO
• arc-consistency is at the heart of constraint programming• it is the inferencing step used inside search• it has to be efficient• data structures and algorithms are crucial to success
• ac is established possibly millions of times when solving• it has to be efficient
• we have had an optimal algorithm many times• ac4, ac6, ac7, ac2001
• ease of implementation is an issue• we like simple things
• but we might still resort to empirical study!
MAC
What’s that then
Maintain arc-consistency
• Instantiate a variable v[i] := x• impose unary constraint d[i] = {x}• make future problem ac• if domain wipe out
• backtrack and impose constraint d[i] x• make future ac
• and so on
pb.solve(false)
Maintain arc-consistency
• why use instantiation?• Domain splitting?• resolve disjunctions first
• for example (V1 < V2 OR V2 < V1)
You now know enough to go out andbuild a reasonably efficient and useful CP toolkit
Now its time to start using a CP toolkit
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