Markus Schedl


2023

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Modular and On-demand Bias Mitigation with Attribute-Removal Subnetworks
Lukas Hauzenberger | Shahed Masoudian | Deepak Kumar | Markus Schedl | Navid Rekabsaz
Findings of the Association for Computational Linguistics: ACL 2023

Societal biases are reflected in large pre-trained language models and their fine-tuned versions on downstream tasks. Common in-processing bias mitigation approaches, such as adversarial training and mutual information removal, introduce additional optimization criteria, and update the model to reach a new debiased state. However, in practice, end-users and practitioners might prefer to switch back to the original model, or apply debiasing only on a specific subset of protected attributes. To enable this, we propose a novel modular bias mitigation approach, consisting of stand-alone highly sparse debiasing subnetworks, where each debiasing module can be integrated into the core model on-demand at inference time. Our approach draws from the concept of diff pruning, and proposes a novel training regime adaptable to various representation disentanglement optimizations. We conduct experiments on three classification tasks with gender, race, and age as protected attributes. The results show that our modular approach, while maintaining task performance, improves (or at least remains on-par with) the effectiveness of bias mitigation in comparison with baseline finetuning. Particularly on a two-attribute dataset, our approach with separately learned debiasing subnetworks shows effective utilization of either or both the subnetworks for selective bias mitigation.

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Exploring Intensities of Hate Speech on Social Media: A Case Study on Explaining Multilingual Models with XAI
Raisa Romanov Geleta | Klaus Eckelt | Emilia Parada-Cabaleiro | Markus Schedl
Proceedings of the 4th Conference on Language, Data and Knowledge

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Parameter-efficient Modularised Bias Mitigation via AdapterFusion
Deepak Kumar | Oleg Lesota | George Zerveas | Daniel Cohen | Carsten Eickhoff | Markus Schedl | Navid Rekabsaz
Proceedings of the 17th Conference of the European Chapter of the Association for Computational Linguistics

Large pre-trained language models contain societal biases and carry along these biases to downstream tasks. Current in-processing bias mitigation approaches (like adversarial training) impose debiasing by updating a model’s parameters, effectively transferring the model to a new, irreversible debiased state. In this work, we propose a novel approach to develop stand-alone debiasing functionalities separate from the model, which can be integrated into the model on-demand, while keeping the core model untouched. Drawing from the concept of AdapterFusion in multi-task learning, we introduce DAM (Debiasing with Adapter Modules) – a debiasing approach to first encapsulate arbitrary bias mitigation functionalities into separate adapters, and then add them to the model on-demand in order to deliver fairness qualities. We conduct a large set of experiments on three classification tasks with gender, race, and age as protected attributes. Our results show that DAM improves or maintains the effectiveness of bias mitigation, avoids catastrophic forgetting in a multi-attribute scenario, and maintains on-par task performance, while granting parameter-efficiency and easy switching between the original and debiased models.