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Paul Boersma and Bruce Hayes

Autor de Empirical tests of the Gradual Learning Algorithm

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If you've looked over my reviews you'll know by now that I am suspicious of optimality theory as a general rule, but this is probably the least foolish version. Boersma and Hayes's Gradual Learning Algorithm allows the ranking of constraints according to strictness and probabilistic data, on a continuous ranking scale: continuous (progressive) scale of constraint strictness. Continuous scale becomes more meaningful when differences in distance have observable consequences—when in:
A_________________B_____C
A is more important than B by a greater margin than B is more important than C by. B/H suggest that at “EVAL time”, the position of each constraint is temporarily perturbed by a “selection point”, a random positive or negative value, and then goes back to its “ranking value”. Predictive power, but not as a model for what actually goes on in our heads, thank'ee.
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MeditationesMartini | May 29, 2010 |

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