AIFeb 14, 2020

Stress Test Evaluation of Transformer-based Models in Natural Language Understanding Tasks

arXiv:2002.06261v21006 citations
AI Analysis

It addresses the problem of model robustness for NLP researchers and practitioners, though it is incremental as it extends existing stress testing to newer models.

This work evaluated the robustness of Transformer-based models (RoBERTa, XLNet, and BERT) on Natural Language Inference and Question Answering tasks under stress tests, finding they are more robust than recurrent neural network models but still fragile with unexpected behaviors.

There has been significant progress in recent years in the field of Natural Language Processing thanks to the introduction of the Transformer architecture. Current state-of-the-art models, via a large number of parameters and pre-training on massive text corpus, have shown impressive results on several downstream tasks. Many researchers have studied previous (non-Transformer) models to understand their actual behavior under different scenarios, showing that these models are taking advantage of clues or failures of datasets and that slight perturbations on the input data can severely reduce their performance. In contrast, recent models have not been systematically tested with adversarial-examples in order to show their robustness under severe stress conditions. For that reason, this work evaluates three Transformer-based models (RoBERTa, XLNet, and BERT) in Natural Language Inference (NLI) and Question Answering (QA) tasks to know if they are more robust or if they have the same flaws as their predecessors. As a result, our experiments reveal that RoBERTa, XLNet and BERT are more robust than recurrent neural network models to stress tests for both NLI and QA tasks. Nevertheless, they are still very fragile and demonstrate various unexpected behaviors, thus revealing that there is still room for future improvement in this field.

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