Search Results for author: Nima Fathi

Found 3 papers, 2 papers with code

DeCoDEx: Confounder Detector Guidance for Improved Diffusion-based Counterfactual Explanations

1 code implementation15 May 2024 Nima Fathi, Amar Kumar, Brennan Nichyporuk, Mohammad Havaei, Tal Arbel

Deep learning classifiers are prone to latching onto dominant confounders present in a dataset rather than on the causal markers associated with the target class, leading to poor generalization and biased predictions.

counterfactual Image Generation

Debiasing Counterfactuals In the Presence of Spurious Correlations

no code implementations21 Aug 2023 Amar Kumar, Nima Fathi, Raghav Mehta, Brennan Nichyporuk, Jean-Pierre R. Falet, Sotirios Tsaftaris, Tal Arbel

Deep learning models can perform well in complex medical imaging classification tasks, even when basing their conclusions on spurious correlations (i. e. confounders), should they be prevalent in the training dataset, rather than on the causal image markers of interest.

counterfactual Image Generation

SwinCheX: Multi-label classification on chest X-ray images with transformers

1 code implementation9 Jun 2022 Sina Taslimi, Soroush Taslimi, Nima Fathi, Mohammadreza Salehi, Mohammad Hossein Rohban

Our model has been tested with several number of MLP layers for the head setting, each achieves a competitive AUC score on all classes.

Benchmarking Multi-Label Classification

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