LGAIHCJul 22, 2023

DIP-RL: Demonstration-Inferred Preference Learning in Minecraft

arXiv:2307.12158v13 citationsh-index: 20
Originality Incremental advance
AI Analysis

This addresses the challenge of reward specification in open-ended environments like Minecraft, but it is incremental as it builds on prior work combining demonstrations and preferences.

The authors tackled the problem of learning reward functions from human demonstrations in unstructured environments, presenting DIP-RL, which uses demonstrations to train an autoencoder, seed RL batches, and infer preferences, and showed it performs competitively in a Minecraft tree-chopping task.

In machine learning for sequential decision-making, an algorithmic agent learns to interact with an environment while receiving feedback in the form of a reward signal. However, in many unstructured real-world settings, such a reward signal is unknown and humans cannot reliably craft a reward signal that correctly captures desired behavior. To solve tasks in such unstructured and open-ended environments, we present Demonstration-Inferred Preference Reinforcement Learning (DIP-RL), an algorithm that leverages human demonstrations in three distinct ways, including training an autoencoder, seeding reinforcement learning (RL) training batches with demonstration data, and inferring preferences over behaviors to learn a reward function to guide RL. We evaluate DIP-RL in a tree-chopping task in Minecraft. Results suggest that the method can guide an RL agent to learn a reward function that reflects human preferences and that DIP-RL performs competitively relative to baselines. DIP-RL is inspired by our previous work on combining demonstrations and pairwise preferences in Minecraft, which was awarded a research prize at the 2022 NeurIPS MineRL BASALT competition, Learning from Human Feedback in Minecraft. Example trajectory rollouts of DIP-RL and baselines are located at https://sites.google.com/view/dip-rl.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes