There is growing evidence that the classical notion of adversarial robustness originally introduced for images has been adopted as a de facto standard by a large part of the NLP research community. We show that this notion is problematic in the context of NLP as it considers a narrow spectrum of linguistic phenomena. In this paper, we argue for semantic robustness, which is better aligned with the human concept of linguistic fidelity. We characterize semantic robustness in terms of biases that it is expected to induce in a model. We study semantic robustness of a range of vanilla and robustly trained architectures using a template-based generative test bed. We complement the analysis with empirical evidence that, despite being harder to im...
A number of issues arise when trying to scale-up natural language understanding (NLU) tools designed...
Natural Language Inference is a challenging task that has received substantial attention, and state-...
Natural Language Inference is a challenging task that has received substantial attention, and state-...
There is growing evidence that the classical notion of adversarial robustness originally introduced ...
Recent natural language processing (NLP) techniques have accomplished high performance on benchmark ...
Semantic parsing maps natural language (NL) utterances into logical forms (LFs), which underpins man...
Research in model robustness has a long history. Improving model robustness generally refers to the ...
Robustness has been traditionally stressed as a general desirable property of any computational mode...
The monumental achievements of deep learning (DL) systems seem to guarantee the absolute superiority...
As NLP models achieved state-of-the-art performances over benchmarks and gained wide applications, i...
Semantic parsing is a technique aimed at constructing a structured representation of the meaning of ...
With the fast-growing popularity of current large pre-trained language models (LLMs), it is necessar...
State-of-the-art deep NLP models have achieved impressive improvements on many tasks. However, they ...
We propose a system that bridges the gap between the two major approaches toward natural language pr...
With the recent success of deep learning methods, neural-based models have achieved superior perform...
A number of issues arise when trying to scale-up natural language understanding (NLU) tools designed...
Natural Language Inference is a challenging task that has received substantial attention, and state-...
Natural Language Inference is a challenging task that has received substantial attention, and state-...
There is growing evidence that the classical notion of adversarial robustness originally introduced ...
Recent natural language processing (NLP) techniques have accomplished high performance on benchmark ...
Semantic parsing maps natural language (NL) utterances into logical forms (LFs), which underpins man...
Research in model robustness has a long history. Improving model robustness generally refers to the ...
Robustness has been traditionally stressed as a general desirable property of any computational mode...
The monumental achievements of deep learning (DL) systems seem to guarantee the absolute superiority...
As NLP models achieved state-of-the-art performances over benchmarks and gained wide applications, i...
Semantic parsing is a technique aimed at constructing a structured representation of the meaning of ...
With the fast-growing popularity of current large pre-trained language models (LLMs), it is necessar...
State-of-the-art deep NLP models have achieved impressive improvements on many tasks. However, they ...
We propose a system that bridges the gap between the two major approaches toward natural language pr...
With the recent success of deep learning methods, neural-based models have achieved superior perform...
A number of issues arise when trying to scale-up natural language understanding (NLU) tools designed...
Natural Language Inference is a challenging task that has received substantial attention, and state-...
Natural Language Inference is a challenging task that has received substantial attention, and state-...