Summary of Dynamic Scheduling For Vehicle-to-vehicle Communications Enhanced Federated Learning, by Jintao Yan et al.
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General Binding Affinity Guidance for Diffusion Models in Structure-Based Drug Designby Yue Jian, Curtis Wu,…
Efficient k-means with Individual Fairness via Exponential Tiltingby Shengkun Zhu, Jinshan Zeng, Yuan Sun, Sheng…
Cherry on the Cake: Fairness is NOT an Optimization Problemby Marco Favier, Toon CaldersFirst submitted…