Causality-Driven Neural Network Repair: Challenges and Opportunities
By: Fatemeh Vares, Brittany Johnson
Potential Business Impact:
Fixes AI mistakes by understanding why they happen.
Deep Neural Networks (DNNs) often rely on statistical correlations rather than causal reasoning, limiting their robustness and interpretability. While testing methods can identify failures, effective debugging and repair remain challenging. This paper explores causal inference as an approach primarily for DNN repair, leveraging causal debugging, counterfactual analysis, and structural causal models (SCMs) to identify and correct failures. We discuss in what ways these techniques support fairness, adversarial robustness, and backdoor mitigation by providing targeted interventions. Finally, we discuss key challenges, including scalability, generalization, and computational efficiency, and outline future directions for integrating causality-driven interventions to enhance DNN reliability.
Similar Papers
Causal Graph Neural Networks for Healthcare
Machine Learning (CS)
Makes AI doctors work fairly everywhere.
FairFLRep: Fairness aware fault localization and repair of Deep Neural Networks
Machine Learning (CS)
Fixes computer brains to make fair decisions.
On Measuring Intrinsic Causal Attributions in Deep Neural Networks
Machine Learning (Stat)
Shows how computer brains make decisions.