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Emergent Linguistic Structures in Neural Networks are Fragile

2022-10-31 15:43:57
Emanuele La Malfa, Matthew Wicker, Marta Kiatkowska

Abstract

Large language models (LLMs) have been reported to have strong performance on natural language processing tasks. However, performance metrics such as accuracy do not measure the quality of the model in terms of its ability to robustly represent complex linguistic structure. Further, the sheer size of LLMs makes it difficult to analyse them using standard robustness evaluation methods. In this work, we propose a framework to evaluate the robustness of linguistic representations using probing tasks. We argue that a robust linguistic model is one that is able to robustly and efficiently represent complex syntactic structure underlying the data distribution and propose appropriate robustness measures. We leverage recent advances in extracting emergent linguistic constructs from LLMs and apply syntax-preserving perturbations to test the stability of these constructs in order to better understand the representations learned by LLMs. Empirically, we study the performance of four LLMs across six different corpora on the proposed robustness measures. We provide evidence that context-free representation (e.g., GloVE) are in some cases competitive with context-dependent representations from modern LLMs (e.g., BERT), yet equally brittle to syntax-preserving manipulations. Emergent syntactic representations in neural networks are brittle, thus our work poses the attention on the risk of comparing such structures to those that are object of a long lasting debate in linguistics.

Abstract (translated)

URL

https://arxiv.org/abs/2210.17406

PDF

https://arxiv.org/pdf/2210.17406.pdf


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