Natural language understanding (NLU) models often rely on dataset biases rather than intended task-relevant features to achieve high performance on specific datasets. As a result, these models perform poorly on datasets outside the training distribution. Some recent studies address this issue by reducing the weights of biased samples during the training process. However, these methods still encode biased latent features in representations and neglect the dynamic nature of bias, which hinders model prediction. We propose an NLU debiasing method, named debiasing contrastive learning (DCT), to simultaneously alleviate the above problems based on contrastive learning. We devise a debiasing, positive sampling strategy to mitigate biased latent f...
Neural networks often learn to make predictions that overly rely on spurious correlation existing in...
Natural Language Inference (NLI) is a growingly essential task in natural language understanding, wh...
Recent discoveries have revealed that deep neural networks might behave in a biased manner in many r...
Recent studies have shown that strong Natural Language Understanding (NLU) models are prone to relyi...
NLU models often exploit biases to achieve high dataset-specific performance without properly learni...
As the representation capability of Pre-trained Language Models (PLMs) improve, there is growing con...
Deep neural networks (DNNs), despite their impressive ability to generalize over-capacity networks, ...
Natural language understanding (NLU) models tend to rely on spurious correlations (i.e., dataset bia...
Natural Language Inference (NLI) datasets contain annotation artefacts resulting in spurious correla...
Improperly constructed datasets can result in inaccurate inferences. For instance, models trained on...
When trained on large, unfiltered crawls from the Internet, language models pick up and reproduce al...
In image classification, debiasing aims to train a classifier to be less susceptible to dataset bias...
Natural Language Inference (NLI) models are known to learn from biases and artefacts within their tr...
Datasets with significant proportions of bias present threats for training a trustworthy model on NL...
Bias in classifiers is a severe issue of modern deep learning methods, especially for their applicat...
Neural networks often learn to make predictions that overly rely on spurious correlation existing in...
Natural Language Inference (NLI) is a growingly essential task in natural language understanding, wh...
Recent discoveries have revealed that deep neural networks might behave in a biased manner in many r...
Recent studies have shown that strong Natural Language Understanding (NLU) models are prone to relyi...
NLU models often exploit biases to achieve high dataset-specific performance without properly learni...
As the representation capability of Pre-trained Language Models (PLMs) improve, there is growing con...
Deep neural networks (DNNs), despite their impressive ability to generalize over-capacity networks, ...
Natural language understanding (NLU) models tend to rely on spurious correlations (i.e., dataset bia...
Natural Language Inference (NLI) datasets contain annotation artefacts resulting in spurious correla...
Improperly constructed datasets can result in inaccurate inferences. For instance, models trained on...
When trained on large, unfiltered crawls from the Internet, language models pick up and reproduce al...
In image classification, debiasing aims to train a classifier to be less susceptible to dataset bias...
Natural Language Inference (NLI) models are known to learn from biases and artefacts within their tr...
Datasets with significant proportions of bias present threats for training a trustworthy model on NL...
Bias in classifiers is a severe issue of modern deep learning methods, especially for their applicat...
Neural networks often learn to make predictions that overly rely on spurious correlation existing in...
Natural Language Inference (NLI) is a growingly essential task in natural language understanding, wh...
Recent discoveries have revealed that deep neural networks might behave in a biased manner in many r...