EMNLP2021
Are Transformers a Modern Version of ELIZA? Observations on French Object Verb Agreement
Bingzhi Li, Guillaume Wisniewski, Benoît Crabbé
被引用 4 次
摘要
Many recent works have demonstrated that unsupervised sentence representations of neural networks encode syntactic information by observing that neural language models are able to predict the agreement between a verb and its subject. We take a critical look at this line of research by showing that it is possible to achieve high accuracy on this agreement task with simple surface heuristics, indicating a possible flaw in our assessment of neural networks' syntactic ability. Our fine-grained analyses of results on the long-range French objectverb agreement show that contrary to LSTMs, Transformers are able to capture a non-trivial amount of grammatical structure.