Sequence-to-sequence (seq2seq) models have been successful across many NLP tasks, including ones that require predicting linguistic structure. However, recent work on compositional generalization has shown that seq2seq models achieve very low accuracy in generalizing to linguistic structures that were not seen in training. We present new evidence that this is a general limitation of seq2seq models that is present not just in semantic parsing, but also in syntactic parsing and in text-to-text tasks, and that this limitation can often be overcome by neurosymbolic models that have linguistic knowledge built in. We further report on some experiments that give initial answers on the reasons for these limitations.
翻译:在国家语言规划的许多任务中,包括需要预测语言结构的任务中,序列到序列(seq2seq)模型都取得了成功。然而,最近关于组成概括的工作表明,后继2seq模型在概括培训中未见的语言结构方面准确性非常低。我们提出了新的证据,表明后继2seq模型的普遍局限性不仅存在于语义区分中,而且也存在于同义和文本到文字的任务中,而且这种局限性往往可以通过具有语言知识的神经同步模型来克服。我们进一步报告了一些实验,这些实验对这些局限性的原因提供了初步答案。