Task-agnostic Exploration in Reinforcement Learning
–Neural Information Processing Systems
Efficient exploration is one of the main challenges in reinforcement learning (RL). Most existing sample-efficient algorithms assume the existence of a single reward function during exploration. In many practical scenarios, however, there is not a single underlying reward function to guide the exploration, for instance, when an agent needs to learn many skills simultaneously, or multiple conflicting objectives need to be balanced. To address these challenges, we propose the \textit{task-agnostic RL} framework: In the exploration phase, the agent first collects trajectories by exploring the MDP without the guidance of a reward function. After exploration, it aims at finding near-optimal policies for N tasks, given the collected trajectories augmented with \textit{sampled rewards} for each task.
Neural Information Processing Systems
Jan-26-2025, 09:02:21 GMT
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