Noisy Demonstration
Noisy demonstration research focuses on improving machine learning models' ability to learn effectively from imperfect or incomplete training data, a common challenge in real-world applications. Current research emphasizes developing algorithms and model architectures that can filter noise, infer underlying patterns from diverse or suboptimal demonstrations, and leverage techniques like inverse reinforcement learning, behavior cloning, and various forms of few-shot learning to enhance performance. This work is significant because it addresses a critical limitation in many machine learning approaches, paving the way for more robust and reliable systems in fields ranging from robotics and natural language processing to autonomous driving and healthcare.
Papers
LLM-based MOFs Synthesis Condition Extraction using Few-Shot Demonstrations
Lei Shi, Zhimeng Liu, Yi Yang, Weize Wu, Yuyang Zhang, Hongbo Zhang, Jing Lin, Siyu Wu, Zihan Chen, Ruiming Li, Nan Wang, Zipeng Liu, Huobin Tan, Hongyi Gao, Yue Zhang, Ge Wang
Integrating Controllable Motion Skills from Demonstrations
Honghao Liao, Zhiheng Li, Ziyu Meng, Ran Song, Yibin Li, Wei Zhang