1 / 28

Global Grammar Constraints

Toby Walsh National ICT Australia and University of New South Wales www.cse.unsw.edu.au/~tw Joint work with Claude-Guy Quimper To be presented at CP06. Global Grammar Constraints . Global grammar constraints. Often easy to specify a global constraint ALLDIFFERENT([X1,..Xn]) iff

Download Presentation

Global Grammar Constraints

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Toby Walsh National ICT Australia and University of New South Wales www.cse.unsw.edu.au/~tw Joint work with Claude-Guy Quimper To be presented at CP06 Global Grammar Constraints

  2. Global grammar constraints • Often easy to specify a global constraint • ALLDIFFERENT([X1,..Xn]) iff Xi=/=Xj for i<j • Difficult to build an efficient and effective propagator • Especially if we want global reasoning

  3. Global grammar constraints • Promising direction initiated by Beldiceanu, Carlsson, Pesant and Petit is to specify constraints via automata/grammar • Sequence of variables = string in some formal language • Satisfying assignment = string accepted by the grammar/automata

  4. REGULAR constraint • REGULAR(A,[X1,..Xn]) holds iff • X1 .. Xn is a string accepted by the deterministic finite automaton A • Proposed by Pesant at CP 2004 • GAC algorithm using dynamic programming • However, DP is not needed since simple ternary encoding is just as efficient and effective • Encoding similar to that used by Beldiceanu et al for their automata with counters

  5. REGULAR constraint • Deterministic finite automaton (DFA) • <Q,Sigma,T,q0,F> • Q is finite set of states • Sigma is alphabet (from which strings formed) • T is transition function: Q x Sigma -> Q • q0 is starting state • F subseteq Q are accepting states • DFAs accept precisely regular languages

  6. REGULAR constraint • Many global constraints are instances of REGULAR • AMONG • CONTIGUITY • LEX • PRECEDENCE • STRETCH • .. • Domain consistency can be enforced in O(ndQ) time using dynamic programming

  7. REGULAR constraint • REGULAR constraint can be encoded into ternary constraints • Introduce Qi+1 • state of the DFA after the ith transition • Then post sequence of constraints • C(Xi,Qi,Qi+1) iff DFA goes from state Qi to Qi+1 on symbol Xi

  8. REGULAR constraint • REGULAR constraint can be encoded into ternary constraints • Constraint graph is Berge-acyclic • Constraints only overlap on one variable • Enforcing GAC on ternary constraints achieves GAC on REGULAR in O(ndQ) time

  9. REGULAR constraint • REGULAR constraint can be encoded into ternary constraints • Constraint graph is Berge-acyclic • Constraints only overlap on one variable • Enforcing GAC on ternary constraints achieves GAC on REGULAR in O(ndQ) time • Encoding provides access to states of automata • Can be useful for expressing problems • E.g. minimizing number of times we are in a particular state

  10. REGULAR constraint • STRETCH([X1,..Xn]) holds iff • Any stretch of consecutive values is between shortest(v) and longest(v) length • Any change (v1,v2) is in some permitted set, P • For example, you can only have 3 consecutive night shifts and a night shift must be followed by a day off

  11. REGULAR constraint • STRETCH([X1,..Xn]) holds iff • Any stretch of consecutive values is between shortest(v) and longest(v) length • Any change (v1,v2) is in some permitted set, P • DFA • Qi is <last value, length of current stretch> • Q0= <dummy,0> • T(<a,q>,a)=<a,q+1> if q+1<=longest(a) • T(<a,q>,b)=<b,1> if (a,b) in P and q>=shortest(a) • All states are accepting

  12. NFA constraint • Automaton does not need to be deterministic • Non-deterministic finite automaton (NFA) still only accept regular languages • But may require exponentially fewer states • Important as O(ndQ) running time for propagator • E.g. 0* (1|2)^k 2 (1|2)* 2 (1|2)^k 0* • Where 0=closed, 1=production, 2=maintenance • Can use the same ternary encoding

  13. Soft REGULAR constraint • May wish to be “near” to a regular string • Near could be • Hamming distance • Edit distance • SoftREGULAR(A,[X1,..Xn],N) holds iff • X1..Xn is at distance N from a string accepted by the finite automaton A • Can encode this into a sequence of 5-ary constraints

  14. Soft REGULAR constraint • SoftREGULAR(A,[X1,..Xn],N) • Consider Hamming distance (edit distance similar though a little more complex) • Qi+1 is state of automaton after the ith transition • Di+1 is Hamming distance up to the ith variable • Post sequence of constraints • C(Xi,Qi,Qi+1,Di,Di+1) where • Di+1=Di if T(Xi,Qi)=Qi+1 else Di+1=1+Di

  15. Soft REGULAR constraint • SoftREGULAR(A,[X1,..Xn],N) • To propagate • Dynamic programming • Pass support along sequence • Just post the 5-ary constraints • Accept less than GAC • Tuple up the variables

  16. Cyclic forms of REGULAR • REGULAR+(A,[X1,..,Xn]) • X1 .. XnX1 is accepted by A • Can convert into REGULAR by increasing states by factor of d where d is number of initial symbols • qi => (qi,initial value) • T(qi,a)=qj => T((qi,b),a)=(qj,b) • Thereby pass along value taken by X1 so it can be checked on last transition

  17. Cyclic forms of REGULAR • REGULARo(A,[X1,..,Xn]) • Xi .. X1+(i+n-1)mod n is accepted by A for each 1<=i<=n • Can decompose into n instances of the REGULAR constraint • However, this hinders propagation • Suppose A accepts just alternating sequences of 0 and 1 • Xi in {0,1} and REGULARo(A,[X1,X2.X3]) • Unfortunately enforcing GAC on REGULARo is NP-hard

  18. Cyclic forms of REGULAR • REGULARo(A,[X1,..,Xn]) • Reduction from Hamiltonian cycle • Consider polynomial sized automaton A1 that accepts any sequence in which the 1st character is never repeated • Consider polynomial sized automaton A2 that accepts any walk in a graph • T(a,b)=b iff (a,b) in edges of graph • Consider polynomial sized automaton A1 intersect A2 • This accepts only those strings corresponding to Hamiltonian cycles

  19. Other generalizations of REGULAR • REGULAR FIX(A,[X1,..Xn],[B1,..Bm]) iff • REGULAR(A,[X1,..Xn]) and Bi=1 iff exists j. Xj=I • Certain values must occur within the sequence • For example, there must be a maintenance shift • Unfortunately NP-hard to enforce GAC on this

  20. Other generalizations of REGULAR • REGULAR FIX(A,[X1,..Xn],[B1,..Bm]) • Simple reduction from Hamiltonian path • Automaton A accepts any walk on a graph • n=m and Bi=1 for all i

  21. Chomsky hierarchy • Regular languages • Context-free languages • Context-sensitive languages • ..

  22. Chomsky hierarchy • Regular languages • GAC propagator in O(ndQ) time • Conext-free languages • GAC propagator in O(n^3) time and O(n^2) space • Asymptotically optimal as same as parsing! • Conext-sensitive languages • Checking if a string is in the language PSPACE-complete • Undecidable to know if empty string in grammar and thus to detect domain wipeout and enforce GAC!

  23. Context-free grammars • Possible applications • Hierarchy configuration • Bioinformatics • Natual language parsing • … • CFG(G,[X1,…Xn]) holds iff • X1 .. Xn is a string accepted by the context free grammar G

  24. Context-free grammars • CFG(G,[X1,…Xn]) • Consider a block stacking example • S -> NP | P | PN | NPN • N -> n | nN • P -> aa | bb | aPa | bPb • These rules give n* w rev(w) n* where w is (a|b)* • Not expressible using a regular language • Chomsky normal form • Non-terminal -> Terminal • Non-terminal -> Non-terminal Non-terminal

  25. CFG propagator • Adapt CYK parser • Works on Chomsky normal form • Non-terminal -> Terminal • Non-terminal -> Non-terminal Non-terminal • Using dynamic programming to compute supports • Bottom up • Enforces GAC in Theta(n^3) time Simultaneously and independently proposed by Sellmannn [CP06]

  26. CFG propagator • Adapt Earley chart parser • Carry support information • Works on grammar in any form • More top down • Better on tightly restricted grammars • Enforces GAC in O(n^3) time • Best case is better as not Theta(n^3)

  27. Conclusions • Global grammar constraints • Specify wide range of global constraints • Provide efficient and effective propagators automatically • Nice marriage of formal language theory and constraint programming!

  28. Questions?

More Related