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NeurIPS 2025 ÈëÑ¡ÂÛÎÄ£º

K. Jiang et al., "MiN: Mixture of Noise for Pre-Trained Model-Based Class-Incremental Learning", NeurIPS 2025.

S. Yin et al., "Towards Reliable LLM-based Robots Planning via Combined Uncertainty Estimation", NeurIPS 2025.

W. Xie et al., "KungfuBot: Physics-Based Humanoid Whole-Body Control for Learning Highly-Dynamic Skills", NeurIPS 2025, arXiv:2506.12851.

J. Shi et al., "Adversarial Locomotion and Motion Imitation for Humanoid Policy Learning", NeurIPS 2025, arXiv:2504.14305.

Z. Ning et al., "CAS-Spec: Cascade Adaptive Self-Speculative Decoding for On-the-Fly Lossless Inference Acceleration of LLMs", NeurIPS 2025.

Z. Huang et al., "NFIG: Multi-Scale Autoregressive Image Generation via Frequency Ordering", NeurIPS 2025.

W. Lin et al., "PUO-Bench: A Panel Understanding and Operation Benchmark with A Privacy-Preserving Framework", NeurIPS 2025.

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