Timezone: »
With the advent of large-scale models and their success in diverse fields, Knowledge Distillation (KD) techniques are increasingly used to deploy them to edge devices with limited memory and computation constraints. However, most distillation works focus on improving the prediction performance of the student model with little to no work in studying the effect of distillation on key fairness properties, ensuring trustworthy distillation. In this work, we propose a fairness-driven distillation framework, BIRD (BIas-awaRe Distillation), which introduces a FAIRDISTILL operator to collect feedback from the student through a meta-learning-based approach and selectively distill teacher knowledge. We demonstrate that BIRD can be augmented with different KD methods to increase the performance of foundation models and convolutional neural networks. Extensive experiments across three fairness datasets show the efficacy of our framework over existing state-of-the-art KD methods, opening up new directions to develop trustworthy distillation techniques.
Author Information
Abhinav Java (Adobe Systems)
Surgan Jandial (IIT Hyderabad)
Chirag Agarwal (Harvard University)
More from the Same Authors
-
2021 : Towards the Unification and Robustness of Perturbation and Gradient Based Explanations »
· Sushant Agarwal · Shahin Jabbari · Chirag Agarwal · Sohini Upadhyay · Steven Wu · Hima Lakkaraju -
2021 : Towards a Rigorous Theoretical Analysis and Evaluation of GNN Explanations »
· Chirag Agarwal · Marinka Zitnik · Hima Lakkaraju -
2021 : Towards a Unified Framework for Fair and Stable Graph Representation Learning »
Chirag Agarwal · Hima Lakkaraju · Marinka Zitnik -
2023 : Towards Fair Knowledge Distillation using Student Feedback »
Abhinav Java · Surgan Jandial · Chirag Agarwal -
2023 : Counterfactual Explanation Policies in RL »
Shripad Deshmukh · Srivatsan R · Supriti Vijay · Jayakumar Subramanian · Chirag Agarwal -
2023 : Self-supervised Autoencoder for Correlation-Preserving in Tabular GANs »
Siddarth Ramesh · Surgan Jandial · Gauri Gupta · Piyush Gupta · Balaji Krishnamurthy -
2022 Social: Trustworthy Machine Learning Social »
Haohan Wang · Sarah Tan · Chirag Agarwal · Chhavi Yadav · Jaydeep Borkar -
2021 Poster: Towards the Unification and Robustness of Perturbation and Gradient Based Explanations »
Sushant Agarwal · Shahin Jabbari · Chirag Agarwal · Sohini Upadhyay · Steven Wu · Hima Lakkaraju -
2021 Spotlight: Towards the Unification and Robustness of Perturbation and Gradient Based Explanations »
Sushant Agarwal · Shahin Jabbari · Chirag Agarwal · Sohini Upadhyay · Steven Wu · Hima Lakkaraju