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Research2026-05-12

Weight Pruning Amplifies Bias: A Multi-Method Study of Compressed LLMs for Edge AI

Source: Arxiv CS.AI

arXiv:2605.08137v1 Announce Type: cross Abstract: Weight pruning is widely advocated for deploying Large Language Models on resource-constrained IoT and edge devices, yet its impact on model fairness remains poorly understood. We conduct a controlled empirical study of three instruction-tuned...

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