High Quality Counterfactuals
High-quality counterfactual generation aims to create plausible and minimally-altered hypothetical scenarios that change a model's prediction, providing valuable insights into model behavior and decision-making processes. Current research focuses on improving the quality of generated counterfactuals across various data types (text, time-series, images) using diverse methods including causal models, diffusion models, genetic algorithms, and large language models, often incorporating constraints like sparsity and plausibility. This work is significant for enhancing explainability in AI, improving model fairness and robustness, and facilitating more informed decision-making in high-stakes applications such as healthcare and finance.
Papers
February 1, 2024
January 25, 2024
December 21, 2023
December 11, 2023
November 28, 2023
November 20, 2023
November 16, 2023
November 7, 2023
October 29, 2023
October 11, 2023
October 2, 2023
September 28, 2023
September 27, 2023
September 14, 2023
September 8, 2023
August 16, 2023
August 14, 2023
August 3, 2023
July 31, 2023