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Pintupi, Language of Australia

Words 2σ pá na 3σ tjú taya 4σ má la wa na 5σ pú li ŋ ka latju 6σ tjá mu lim pa tju ŋ ku 7σ tí li ri ŋ u lam patju 8σ kú ra nju lu lim pa tju ra 9σ yú ma ri ŋ ka ma ra tju raka . Gloss ‘earth’ ‘many ‘through’ ‘we (sat) on a hill’ ‘our relation’

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Pintupi, Language of Australia

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  1. Words 2σ pána 3σ tjútaya 4σ málawana 5σ púliŋkalatju 6σ tjámulimpatjuŋku 7σ tíliriŋulampatju 8σ kúranjululimpatjura 9σ yúmariŋkamaratjuraka Gloss ‘earth’ ‘many ‘through’ ‘we (sat) on a hill’ ‘our relation’ ‘the fire for our benefit flared up ‘the first one (who is) our relation’ ‘because of mother-in-law’ Pintupi, Language of Australia

  2. RCD Inconsistency and Ranking

  3. What we know about Inconsistency • A set of ERCs A is inconsistent, unsatisfiable by any ranking, • If and only if it contains a subset X such that f X L+

  4. What we know about Inconsistency A set of ERCs A is inconsistent, unsatisfiable by any ranking, if and only if it contains a subset X such that f X L+ ● E.g. X = (e, W, L), (e, L, W) f X = (e, L, L)

  5. What we know about Inconsistency A set of ERCs A is inconsistent, unsatisfiable by any ranking, if and only if it contains a subset X such that f X L+ E.g. X = (e, W, L), (e, L, W) f X = (e, L, L) ●C2 cannot both dominate and be dominated by C3.

  6. Perils of Nonexistence • Q: given a set A of ERCs, is it consistent? • If not, then you don’t have a grammar.

  7. Perils of Nonexistence • Q: given a set of ERCs, is it consistent? • If not, then you don’t have a grammar. • Your constraints may be wrong

  8. Perils of Nonexistence • Q: given a set of ERCs, is it consistent? • If not, then you don’t have a grammar. • Your constraints may be wrong • You may be missing a constraint

  9. Perils of Nonexistence • Q: given a set of ERCs, is it consistent? • If not, then you don’t have a grammar. • Your constraints may be wrong • You may be missing a constraint • Your structures may be wrong

  10. Perils of Nonexistence • Q: given a set of ERCs, is it consistent? • If not, then you don’t have a grammar. • Your constraints may be wrong • You may be missing a constraint • Your structures may be wrong • Your underlying forms may be wrong

  11. Perils of Nonexistence • Q: given a set of ERCs, is it consistent? • If not, then you don’t have a grammar. • Your constraints may be wrong • You may be missing a constraint • Your structures may be wrong • Your underlying forms may be wrong • Your whole theory may be wrong

  12. Finding Inconsistency • Inconsistency might be well hidden. • X may be a proper subset of A, whose elements are scattered far and wide amid any listing you have of A. • The Knuckledragger Algorithm. • List all the subsets of A • Fuse each one • Stop if one fuses to L+. A is inconsistent. • If you make it all the way through, A is consistent.

  13. 2n grows fast • The number of subset of A is 2n, for |A|=n, • In the example we ended on last time, we ultimately had 17 ERCs in the basic set • 217 = 131, 072 • Even with the 6 ERCs we reduced it to, we have • 26 = 64 & we only need check 63 !

  14. A Better Way • Ask this Q instead: • in A , which ERCs cannot possibly belong to such X? • If we can answer this easily, we get the following: • Inconsistency Detection (ID) Algorithm.(sketch) 1. Remove from A all ERCs not possibly members of an inconsistent subset. Call the result A'. 2. If there are no removable ERCs, A is inconsistent ! 3. If there are some, then reapply the algorithm to A'. 4. If A is eventually evacuated, by reapplication, it’s consistent.

  15. An Analogy • How do we find the evil gang in the big crowd?

  16. Yo soy un hombre sincero • How do we find the evil gang in the big crowd? • First, remove all the obvious good guys (or neutrals) who certainly can’t be gang members. • If you can’t remove anybody, the whole crowd is the gang. • If you did remove some, then re-examine the remaining smaller crowd for good guys whose presence was previously hidden. Remove them. • Continue in this fashion, until either the whole crowd is gone (consistency) or you’ve reached an irreducible collection, a badly interacting gang which collectively threatens the moral health of the polity.

  17. By Their Fusions Shall You Know Them • Recursive Inconsistency Detection (RID) Algorithm. • Fuse all of A to form the derived ERC fA. • Consider any constraint Ck that has W in fA. Consider any ERCs αj that have W in Ck. These are entirely safe. ■ They give only W to the fusion of any subset of A. ● Remove them & start again. 3. If recursive removal removes all of A, it’s consistent. . If not, then not.

  18. For Example

  19. For Example

  20. For Example ERC α is good to go.

  21. Starting Over

  22. Starting Over

  23. Starting Over ERCs β,γ are good to go.

  24. Yet Again

  25. Yet Again ERC δ is good to go.

  26. The Empty Nest ● All ERCs accounted for. ■ A is consistent. It is free of inconsistent subsets. .

  27. A Similar Looking Case

  28. Step 1 ERC α is good to go

  29. Step 2 But ERCs β,γ,δ fuse to L+

  30. Step 2 Game Over! B is inconsistent. ■ And we’ve easily found an inconsistent subset of B.

  31. RCD: Ranking from RID • We can easily determine that A is consistent, when it is. • But we’d like to know more, on the constraint side. • Consistent ERC set = There is a ranking that works • Q: Can you show me one (at least one)?

  32. Memories • RID generates the necessary information to find a ranking. • We need merely remember it. • One formulation: keep the fusions.

  33. A’s fusional history under RID

  34. A’s fusions - Stratified

  35. A’sfusions - Stratified Any linear ordering that respects the strata will work!

  36. Recursive Constraint Demotion • We can achieve the same effect directly by taking the additional, ranking step while processing the ERC set. • This gives us Tesar’s Recursive Constraint Demotion

  37. RCD RCD • Fuse all of A, yielding fA. • Form a new Stratum of constraints from allconstraints yielding W or e in fA. Place it just below the lowest Stratum we have. • Remove all ERCs supplying W to the constraints in that stratum (just as in RID) to yield A'. • Ending condition. If all ERCs are gone, place any remaining constraints a new, bottom stratum. • Proceed recursively with A'.

  38. For Example

  39. RCD – First Round Fuse all.

  40. RCD – First Round Identify the lucky constraints.

  41. RCD – First Round Strafify.

  42. RCD – First Round Remove all ERCs satisfied by the new Stratum.

  43. RCD – Second Round Fuse all.

  44. RCD – Second Round Identify the lucky constraints. Stratify.

  45. RCD – Second Round Remove the newly solved ERCs.

  46. RCD – Third Round Fuse all. Identify. Stratify.

  47. RCD – Third Round Remove solved ERC

  48. RCD – Fourth Round Stratify ERCless constraint as bottom.

  49. What RCD Gives • Sufficiency. From the stratified hierarchy so produced, one may generate a ranking that works, if one exists. • Not necessity. Stratification loses information. You know that at least ONE of the constraints is a stratum must dominate the constraints in a lower strata, • But you don’t which, or whether several will do equally well. • RCD is a greedy algorithm, in that it stratifies constraints as soon as possible, putting them in the highest stratal position they can occupy.

  50. What RCD gives • Efficiency. At the cost of losing some info about necessary rankings, RCD proceeds with tremendous efficiency. No more rounds than there are constraints, and each round a small number of simple steps. • RCD asks: what can I rank?, not: what must I rank? • Inconsistency detection. As with RID, it will be the case that RCD fails to evacuate an inconsistent ERC. • Historically, RID is a stripped down version of RCD (Tesar 1995, Tesar & Smolensky 2000).

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