Goal-Aware Cross-Entropy for Multi-Target Reinforcement Learning
About
Learning in a multi-target environment without prior knowledge about the targets requires a large amount of samples and makes generalization difficult. To solve this problem, it is important to be able to discriminate targets through semantic understanding. In this paper, we propose goal-aware cross-entropy (GACE) loss, that can be utilized in a self-supervised way using auto-labeled goal states alongside reinforcement learning. Based on the loss, we then devise goal-discriminative attention networks (GDAN) which utilize the goal-relevant information to focus on the given instruction. We evaluate the proposed methods on visual navigation and robot arm manipulation tasks with multi-target environments and show that GDAN outperforms the state-of-the-art methods in terms of task success ratio, sample efficiency, and generalization. Additionally, qualitative analyses demonstrate that our proposed method can help the agent become aware of and focus on the given instruction clearly, promoting goal-directed behavior.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Robot arm manipulation | R1 (test) | Success Rate Ratio20.06 | 5 | |
| Visual Navigation | Visual Navigation Task V1 | Number of Updates1.64e+5 | 5 |