Unseen Task
Unseen task generalization focuses on enabling artificial intelligence models to successfully perform tasks they haven't been explicitly trained on. Current research emphasizes developing methods that leverage pre-trained models, incorporating dynamic planning and compositional approaches, and utilizing techniques like meta-learning, instruction tuning, and reward machine abstractions to improve generalization capabilities. This research is significant because it addresses a critical limitation of current AI systems, paving the way for more robust and adaptable AI agents in various applications, including robotics and natural language processing.
Papers
February 22, 2022
February 4, 2022
January 18, 2022
December 30, 2021
December 6, 2021
November 17, 2021