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Inherent Biases in Reference-based Evaluation for Grammatical Error Correction and Text Simplification

机译:基于参考的语法纠错和文本简化的基于参考评估的固有偏差

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The prevalent use of too few references for evaluating text-to-text generation is known to bias estimates of their quality (henceforth, low coverage bias or LCB). This paper shows that overcoming LCB in Grammatical Error Correction (GEC) evaluation cannot be attained by re-scaling or by increasing the number of references in any feasible range, contrary to previous suggestions. This is due to the long-tailed distribution of valid corrections for a sentence. Concretely, we show that LCB in-centivizes GEC systems to avoid correcting even when they can generate a valid correction. Consequently, existing systems obtain comparable or superior performance compared to humans, by making few but targeted changes to the input. Similar effects on Text Simplification further support our claims.
机译:普遍使用太少的参考评估文本文本生成的参考是对其质量的估计(Hustentforth,低覆盖偏见或LCB)的估计。本文不能通过重新缩放或通过增加任何可行范围内的参考数,与之前的建议相反,克服语法纠错(GEC)评估中的LCB克服LCB。这是由于句子的有效校正的长尾分布。具体而言,我们表明LCB in-cenivize GEC系统即使在可以生成有效的校正时也避免纠正。因此,通过少量但有针对性的改变,现有系统与人类相比获得了可比或优越的性能。类似的对文本简化的影响进一步支持我们的索赔。

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