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A Simple and Robust Approach to Detecting Subject-Verb Agreement Errors

机译:检测主语动词协议错误的简单又坚固的方法

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摘要

While rule-based detection of subject-verb agreement (SVA) errors is sensitive to syntactic parsing errors and irregularities and exceptions to the main rules, neural sequential la-belers have a tendency to overfit their training data. We observe that rule-based error generation is less sensitive to syntactic parsing errors and irregularities than error detection and explore a simple, yet efficient approach to getting the best of both worlds: We train neural sequential labelers on the combination of large volumes of silver standard data, obtained through rule-based error generation, and gold standard data. We show that our simple protocol leads to more robust detection of SVA errors on both in-domain and out-of-domain data, as well as in the context of other errors and long-distance dependencies; and across four standard benchmarks, the induced model on average achieves a new state of the art.
机译:虽然基于规则的受试者动词协议(SVA)错误的检测对主要规则的句法解析错误和违规行为和异常敏感,但神经顺序LA-BERERS具有过度使用其培训数据的趋势。我们观察到,基于规则的错误生成对句法解析错误和不规则性的敏感性而非错误检测,探索获得两个世界上最好的方法:我们在大量银标准的组合中训练神经顺序贴标者通过基于规则的错误生成和金标准数据获得的数据。我们表明我们的简单协议导致域内和域外数据的SVA错误的更强大地检测,以及其他错误和远程依赖项的上下文;在四个标准基准中,平均诱导的模型实现了新的最新技术。

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