Do LSTMs know about Principle C?

Jeff Mitchell, N. Kazanina, Conor J. Houghton, J. Bowers
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引用次数: 3

Abstract

We investigate whether a recurrent network trained on raw text can learn an important syntactic constraint on coreference. A Long Short-Term Memory (LSTM) network that is sensitive to some other syntactic constraints was tested on psycholinguistic materials from two published experiments on coreference. Whereas the participants were sensitive to the Principle C constraint on coreference the LSTM network was not. Our results suggest that, whether as cognitive models of linguistic processes or as engineering solutions in practical applications, recurrent networks may need to be augmented with additional inductive biases to be able to learn models and representations that fully capture the structures of language underlying comprehension.
lstm知道原理C吗?
我们研究了在原始文本上训练的循环网络是否能够学习到一个重要的句法约束。本文利用已发表的两篇关于共同参照的心理语言学实验,对一个对句法约束敏感的长短期记忆(LSTM)网络进行了测试。被试对C原则约束敏感,而LSTM网络则不敏感。我们的研究结果表明,无论是作为语言过程的认知模型,还是作为实际应用中的工程解决方案,循环网络都可能需要增加额外的归纳偏差,以便能够学习模型和表征,充分捕捉理解基础的语言结构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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