Inductive Generalization in Reinforcement Learning from Specifications
About
We present a novel inductive generalization framework for RL from logical specifications. Many interesting tasks in RL environments have a natural inductive structure. These inductive tasks have similar overarching goals but they differ inductively in low-level predicates and distributions. We present a generalization procedure that leverages this inductive relationship to learn a higher-order function, a policy generator, that generates appropriately adapted policies for instances of an inductive task in a zero-shot manner. An evaluation of the proposed approach on a set of challenging control benchmarks demonstrates the promise of our framework in generalizing to unseen policies for long-horizon tasks.
Vignesh Subramanian, Rohit Kushwah, Subhajit Roy, Suguman Bansal• 2024
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Multi-task reinforcement learning | DIBS Multi-environment Suite (train) | Relative tasks solved ratio (vs DIBS)3.82 | 4 | |
| Multi-task reinforcement learning | DIBS Multi-environment Suite Unseen tasks | Relative Solved Ratio (vs DIBS)6.19 | 3 |
Showing 2 of 2 rows