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Is Imitation All You Need? Generalized Decision-Making with Dual-Phase Training

IEEE International Conference on Computer Vision (ICCV), 2023
16 July 2023
Yao Wei
Yanchao Sun
Ruijie Zheng
Sai H. Vemprala
Rogerio Bonatti
Shuhang Chen
Ratnesh Madaan
Zhongjie Ba
Ashish Kapoor
Shuang Ma
    OffRL
ArXiv (abs)PDFHTMLGithub
Main:8 Pages
16 Figures
Bibliography:3 Pages
10 Tables
Appendix:10 Pages
Abstract

We introduce DualMind, a generalist agent designed to tackle various decision-making tasks that addresses challenges posed by current methods, such as overfitting behaviors and dependence on task-specific fine-tuning. DualMind uses a novel "Dual-phase" training strategy that emulates how humans learn to act in the world. The model first learns fundamental common knowledge through a self-supervised objective tailored for control tasks and then learns how to make decisions based on different contexts through imitating behaviors conditioned on given prompts. DualMind can handle tasks across domains, scenes, and embodiments using just a single set of model weights and can execute zero-shot prompting without requiring task-specific fine-tuning. We evaluate DualMind on MetaWorld and Habitat through extensive experiments and demonstrate its superior generalizability compared to previous techniques, outperforming other generalist agents by over 50%\%% and 70%\%% on Habitat and MetaWorld, respectively. On the 45 tasks in MetaWorld, DualMind achieves over 30 tasks at a 90%\%% success rate.

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