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Precise Task Formalization Matters in Winograd Schema Evaluations

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arxiv 2010.04043 v1 pith:ELTXXFTL submitted 2020-10-08 cs.CL

Precise Task Formalization Matters in Winograd Schema Evaluations

classification cs.CL
keywords pretrainedreasoningschemataskwinogradabilityadditionalbenchmark
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Performance on the Winograd Schema Challenge (WSC), a respected English commonsense reasoning benchmark, recently rocketed from chance accuracy to 89% on the SuperGLUE leaderboard, with relatively little corroborating evidence of a correspondingly large improvement in reasoning ability. We hypothesize that much of this improvement comes from recent changes in task formalization---the combination of input specification, loss function, and reuse of pretrained parameters---by users of the dataset, rather than improvements in the pretrained model's reasoning ability. We perform an ablation on two Winograd Schema datasets that interpolates between the formalizations used before and after this surge, and find (i) framing the task as multiple choice improves performance by 2-6 points and (ii) several additional techniques, including the reuse of a pretrained language modeling head, can mitigate the model's extreme sensitivity to hyperparameters. We urge future benchmark creators to impose additional structure to minimize the impact of formalization decisions on reported results.

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