Spurious Feature
Spurious features are attributes in data that correlate with target labels but lack a causal relationship, leading to unreliable and unfair machine learning models. Current research focuses on mitigating the impact of these features, employing techniques like contrastive learning, feature re-weighting, and attention mechanisms within various model architectures, including deep neural networks and large language models. Successfully addressing spurious features is crucial for improving the robustness, fairness, and generalizability of machine learning models across diverse applications, particularly in sensitive domains like facial recognition and medical diagnosis.
Papers
June 8, 2023
May 30, 2023
May 20, 2023
April 8, 2023
March 9, 2023
February 18, 2023
January 30, 2023
December 9, 2022
December 5, 2022
October 25, 2022
September 30, 2022
April 6, 2022
April 5, 2022
March 3, 2022
March 2, 2022
December 2, 2021