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Under the Hood: Using Diagnostic Classifiers to Investigate and Improve how Language Models Track Agreement Information

机译:在引擎盖下:使用诊断分类器来调查和改进语言模型的轨道协议信息

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How do neural language models keep track of number agreement between subject and verb? We show that 'diagnostic classifiers', trained to predict number from the internal states of a language model, provide a detailed understanding of how, when, and where this information is represented. Moreover, they give us insight into when and where number information is corrupted in cases where the language model ends up making agreement errors. To demonstrate the causal role played by the representations we find, we then use agreement information to influence the course of the LSTM during the processing of difficult sentences. Results from such an intervention reveal a large increase in the language model's accuracy. Together, these results show that diagnostic classifiers give us an unrivalled detailed look into the representation of linguistic information in neural models, and demonstrate that this knowledge can be used to improve their performance.
机译:神经语言模型如何跟踪主题和动词之间的数字协议?我们显示“诊断分类器”,训练以预测语言模型的内部状态的数字,详细了解如何,何时和位置。此外,在语言模型结束达成协议错误的情况下,他们向我们讨论编号信息损坏的时间和地点。为了展示我们发现的陈述所扮演的因果作用,我们使用协议信息在处理困难句子期间影响LSTM的过程。这种干预的结果揭示了语言模型的准确性大幅增加。这些结果表明,诊断分类器给我们一个无与伦比的详细研究神经模型中语言信息的表示,并证明了这种知识可用于提高它们的性能。

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