CLAICRHCLGJan 3, 2022

Robust Natural Language Processing: Recent Advances, Challenges, and Future Directions

arXiv:2201.00768v183 citations
AI Analysis

This is an incremental survey paper addressing robustness issues in NLP systems for researchers and practitioners.

The paper provides a structured overview of natural language processing (NLP) robustness research, highlighting that current NLP systems often fail under adversarial attacks despite high benchmark performance, and it identifies gaps in the literature to suggest future directions.

Recent natural language processing (NLP) techniques have accomplished high performance on benchmark datasets, primarily due to the significant improvement in the performance of deep learning. The advances in the research community have led to great enhancements in state-of-the-art production systems for NLP tasks, such as virtual assistants, speech recognition, and sentiment analysis. However, such NLP systems still often fail when tested with adversarial attacks. The initial lack of robustness exposed troubling gaps in current models' language understanding capabilities, creating problems when NLP systems are deployed in real life. In this paper, we present a structured overview of NLP robustness research by summarizing the literature in a systemic way across various dimensions. We then take a deep-dive into the various dimensions of robustness, across techniques, metrics, embeddings, and benchmarks. Finally, we argue that robustness should be multi-dimensional, provide insights into current research, identify gaps in the literature to suggest directions worth pursuing to address these gaps.

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