There exist features that are related to the label in the same way across different settings for that task; these are semantic features or semantics. Features with varying relationships to the label are nuisances. For example, in detecting cows from natural images, the shape of the head is a semantic and because images of cows often have grass backgrounds but only in certain settings, the background is a nuisance. Relationships between a nuisance and the label are unstable across settings and, consequently, models that exploit nuisance-label relationships face performance degradation when these relationships change. Direct knowledge of a nuisance helps build models that are robust to such changes, but knowledge of a nuisance requires extra ...
Modern pretrained language models are critical components of NLP pipelines. Yet, they suffer from sp...
Datasets with significant proportions of bias present threats for training a trustworthy model on NL...
A central question in natural language understanding (NLU) research is whether high performance demo...
In many prediction problems, spurious correlations are induced by a changing relationship between th...
Spurious correlations allow flexible models to predict well during training but poorly on related te...
Methods which utilize the outputs or feature representations of predictive models have emerged as pr...
Natural language understanding (NLU) models tend to rely on spurious correlations (i.e., dataset bia...
Natural Language Inference (NLI) models are known to learn from biases and artefacts within their tr...
Spurious correlations are a threat to the trustworthiness of natural language processing systems, mo...
The reliance of text classifiers on spurious correlations can lead to poor generalization at deploym...
Neural image classifiers can often learn to make predictions by overly relying on non-predictive fea...
Natural Language Inference (NLI) models are known to learn from biases and artefacts within their tr...
Many recent works indicate that the deep neural networks tend to take dataset biases as shortcuts to...
While unbiased machine learning models are essential for many applications, bias is a human-defined ...
In real-world classification problems, nuisance variables can cause wild variability in the data. Nu...
Modern pretrained language models are critical components of NLP pipelines. Yet, they suffer from sp...
Datasets with significant proportions of bias present threats for training a trustworthy model on NL...
A central question in natural language understanding (NLU) research is whether high performance demo...
In many prediction problems, spurious correlations are induced by a changing relationship between th...
Spurious correlations allow flexible models to predict well during training but poorly on related te...
Methods which utilize the outputs or feature representations of predictive models have emerged as pr...
Natural language understanding (NLU) models tend to rely on spurious correlations (i.e., dataset bia...
Natural Language Inference (NLI) models are known to learn from biases and artefacts within their tr...
Spurious correlations are a threat to the trustworthiness of natural language processing systems, mo...
The reliance of text classifiers on spurious correlations can lead to poor generalization at deploym...
Neural image classifiers can often learn to make predictions by overly relying on non-predictive fea...
Natural Language Inference (NLI) models are known to learn from biases and artefacts within their tr...
Many recent works indicate that the deep neural networks tend to take dataset biases as shortcuts to...
While unbiased machine learning models are essential for many applications, bias is a human-defined ...
In real-world classification problems, nuisance variables can cause wild variability in the data. Nu...
Modern pretrained language models are critical components of NLP pipelines. Yet, they suffer from sp...
Datasets with significant proportions of bias present threats for training a trustworthy model on NL...
A central question in natural language understanding (NLU) research is whether high performance demo...