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Constraint Handling Rules

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Constraint Handling Rules (CHR)
ParadigmsConstraint logic, declarative
Designed byThom Frühwirth
First appeared1991; 33 years ago (1991)
Influenced by
Prolog

Constraint Handling Rules (CHR) is a declarative, rule-based programming language, introduced in 1991 by Thom Frühwirth at the time with European Computer-Industry Research Centre (ECRC) in Munich, Germany.[1][2] Originally intended for constraint programming, CHR finds applications in grammar induction,[3] type systems,[4] abductive reasoning, multi-agent systems, natural language processing, compilation, scheduling, spatial-temporal reasoning, testing, and verification.

A CHR program, sometimes called a constraint handler, is a set of rules that maintain a constraint store, a multi-set of logical formulas. Execution of rules may add or remove formulas from the store, thus changing the state of the program. The order in which rules "fire" on a given constraint store is non-deterministic,[5] according to its abstract semantics and deterministic (top-down rule application), according to its refined semantics.[6]

Although CHR is Turing complete,[7] it is not commonly used as a programming language in its own right. Rather, it is used to extend a host language with constraints. Prolog is by far the most popular host language and CHR is included in several Prolog implementations, including SICStus and SWI-Prolog, although CHR implementations also exist for Haskell,[8] Java, C,[9] SQL,[10] and JavaScript.[11] In contrast to Prolog, CHR rules are multi-headed and are executed in a committed-choice manner using a forward chaining algorithm.

Language overview

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The concrete syntax of CHR programs depends on the host language, and in fact programs embed statements in the host language that are executed to handle some rules. The host language supplies a data structure for representing terms, including logical variables. Terms represent constraints, which can be thought of as "facts" about the program's problem domain. Traditionally, Prolog is used as the host language, so its data structures and variables are used. The rest of this section uses a neutral, mathematical notation that is common in the CHR literature.

A CHR program, then, consists of rules that manipulate a multi-set of these terms, called the constraint store. Rules come in three types:[5]

  • Simplification rules have the form . When they match the heads and the guards hold, simplification rules may rewrite the heads into the body .
  • Propagation rules have the form . These rules add the constraints in the body to the store, without removing the heads.
  • Simpagation rules combine simplification and propagation. They are written . For a simpagation rule to fire, the constraint store must match all the rules in the head and the guards must hold true. The constraints before the are kept, as a in a propagation rule; the remaining constraints are removed.

Since simpagation rules subsume simplification and propagation, all CHR rules follow the format

where each of is a conjunction of constraints: and contain CHR constraints, while the guards are built-in. Only one of needs to be non-empty.

The host language must also define built-in constraints over terms. The guards in rules are built-in constraints, so they effectively execute host language code. The built-in constraint theory must include at least true (the constraint that always holds), fail (the constraint that never holds, and is used to signal failure) and equality of terms, i.e., unification.[7] When the host language does not support these features, they must be implemented along with CHR.[9]

Execution of a CHR program starts with an initial constraint store. The program then proceeds by matching rules against the store and applying them, until either no more rules match (success) or the fail constraint is derived. In the former case, the constraint store can be read off by a host language program to look for facts of interest. Matching is defined as "one-way unification": it binds variables only on one side of the equation. Pattern matching can be easily implemented when as unification when the host language supports it.[9]

Example program

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The following CHR program, in Prolog syntax, contains four rules that implement a solver for a less-or-equal constraint. The rules are labeled for convenience (labels are optional in CHR).

 % X leq Y means variable X is less-or-equal to variable Y 
 reflexivity  @ X leq X <=> true.
 antisymmetry @ X leq Y, Y leq X <=> X = Y.
 transitivity @ X leq Y, Y leq Z ==> X leq Z.
 idempotence  @ X leq Y \ X leq Y <=> true.

The rules can be read in two ways. In the declarative reading, three of the rules specify the axioms of a partial ordering:

  • Reflexivity: XX
  • Antisymmetry: if XY and YX, then X = Y
  • Transitivity: if XY and YZ, then XZ

All three rules are implicitly universally quantified (upper-cased identifiers are variables in Prolog syntax). The idempotence rule is a tautology from the logical viewpoint, but has a purpose in the second reading of the program.

The second way to read the above is as a computer program for maintaining a constraint store, a collection of facts (constraints) about objects. The constraint store is not part of this program, but must be supplied separately. The rules express the following rules of computation:

  • Reflexivity is a simplification rule: it expresses that, if a fact of the form XX is found in the store, it may be removed.
  • Antisymmetry is also a simplification rule, but with two heads. If two facts of the form XY and YX can be found in the store (with matching X and Y), then they can be replaced with the single fact X = Y. Such an equality constraint is considered built in, and implemented as a unification that is typically handled by the underlying Prolog system.
  • Transitivity is a propagation rule. Unlike simplification, it does not remove anything from the constraint store; instead, when facts of the form XY and YZ (with the same value for Y) are in the store, a third fact XZ may be added.
  • Idempotence, finally, is a simpagation rule, a combined simplification and propagation. When it finds duplicate facts, it removes them from the store. Duplicates may occur because constraint stores are multi-sets of facts.

Given the query

A leq B, B leq C, C leq A

the following transformations may occur:

Current constraints Rule applicable to constraints Conclusion from rule application
A leq B, B leq C, C leq A transitivity A leq C
A leq B, B leq C, C leq A, A leq C antisymmetry A = C
A leq B, B leq A, A = C antisymmetry A = B
A = B, A = C none

The transitivity rule adds A leq C. Then, by applying the antisymmetry rule, A leq C and C leq A are removed and replaced by A = C. Now the antisymmetry rule becomes applicable on the first two constraints of the original query. Now all CHR constraints are eliminated, so no further rules can be applied, and the answer A = B, A = C is returned: CHR has correctly inferred that all three variables must refer to the same object.

Execution of CHR programs

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To decide which rule should "fire" on a given constraint store, a CHR implementation must use some pattern matching algorithm. Candidate algorithms include RETE and TREAT,[12] but most implementation use a lazy algorithm called LEAPS.[13]

The original specification of CHR's semantics was entirely non-deterministic, but the so-called "refined operation semantics" of Duck et al. removed much of the non-determinism so that application writers can rely on the order of execution for performance and correctness of their programs.[5][14]

Most applications of CHRs require that the rewriting process be confluent; otherwise the results of searching for a satisfying assignment will be nondeterministic and unpredictable. Establishing confluence is usually done by way of the following three properties:[2]

  • A CHR program is locally confluent if all its critical pairs are joinable.
  • A CHR program is called terminating if there are no infinite computations.
  • A terminating CHR program is confluent if all its critical pairs are joinable.

See also

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References

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  1. ^ Thom Frühwirth. Introducing Simplification Rules. Internal Report ECRC-LP-63, ECRC Munich, Germany, October 1991, Presented at the Workshop Logisches Programmieren, Goosen/Berlin, Germany, October 1991 and the Workshop on Rewriting and Constraints, Dagstuhl, Germany, October 1991.
  2. ^ a b Thom Frühwirth. Theory and Practice of Constraint Handling Rules. Special Issue on Constraint Logic Programming (P. Stuckey and K. Marriott, Eds.), Journal of Logic Programming, Vol 37(1-3), October 1998. doi:10.1016/S0743-1066(98)10005-5
  3. ^ Dahl, Veronica, and J. Emilio Miralles. "Womb grammars: Constraint solving for grammar induction." Proceedings of the 9th Workshop on Constraint Handling Rules. vol. Technical report CW. Vol. 624. 2012.
  4. ^ Alves, Sandra, and Mário Florido. "Type inference using constraint handling rules." Electronic Notes in Theoretical Computer Science 64 (2002): 56-72.
  5. ^ a b c Sneyers, Jon; Van Weert, Peter; Schrijvers, Tom; De Koninck, Leslie (2009). "As time goes by: Constraint Handling Rules – A Survey of CHR Research between 1998 and 2007" (PDF). Theory and Practice of Logic Programming. 10: 1. arXiv:0906.4474. doi:10.1017/S1471068409990123. S2CID 11044594.
  6. ^ Frühwirth, Thom (2009). Constraint handling rules. Cambridge University Press. ISBN 978-0521877763.
  7. ^ a b Sneyers, Jon; Schrijvers, Tom; Demoen, Bart (2009). "The computational power and complexity of constraint handling rules" (PDF). ACM Transactions on Programming Languages and Systems. 31 (2): 1–42. doi:10.1145/1462166.1462169. S2CID 2691882.
  8. ^ "CHR: Constraint Handling Rules library". GitHub. 5 September 2021.
  9. ^ a b c Peter Van Weert; Pieter Wuille; Tom Schrijvers; Bart Demoen. "CHR for imperative host languages". Constraint Handling Rules: Current Research Topics. Springer.
  10. ^ "CHR2 to SQL converter". GitHub. 15 March 2021.
  11. ^ CHR.js - A CHR Transpiler for JavaScript
  12. ^ Miranker, Daniel P. (July 13–17, 1987). "TREAT: A Better Match Algorithm for AI Production Systems" (PDF). AAAI'87: Proceedings of the sixth National conference on Artificial intelligence. Seattle, Washington: Association for the Advancement of Artificial Intelligence, AAAI. pp. 42–47. ISBN 978-0-262-51055-4.
  13. ^ Leslie De Koninck (2008). Execution Control for Constraint Handling Rules (PDF) (Ph.D. thesis). Katholieke Universiteit Leuven. pp. 12–14.
  14. ^ Duck, Gregory J.; Stuckey, Peter J.; García de la Banda, María; Holzbaur, Christian (2004). "The Refined Operational Semantics of Constraint Handling Rules" (PDF). Logic Programming. Lecture Notes in Computer Science. Vol. 3132. pp. 90–104. doi:10.1007/978-3-540-27775-0_7. ISBN 978-3-540-22671-0. Archived from the original (PDF) on 2011-03-04. Retrieved 2014-12-23.

Further reading

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  • Christiansen, Henning. "CHR grammars." Theory and Practice of Logic Programming 5.4-5 (2005): 467-501.
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