LGJan 27, 2023

Reinforcement Learning from Diverse Human Preferences

arXiv:2301.11774v334 citationsh-index: 40
Originality Incremental advance
AI Analysis

This addresses the problem of scaling reinforcement learning to real-world applications by enabling learning from noisy, crowd-sourced human feedback, though it is incremental as it builds on existing preference-based RL methods.

The paper tackles the challenge of learning reward functions from diverse human preferences in reinforcement learning, achieving consistent and significant improvements over existing preference-based RL algorithms on tasks in DMcontrol and Meta-world.

The complexity of designing reward functions has been a major obstacle to the wide application of deep reinforcement learning (RL) techniques. Describing an agent's desired behaviors and properties can be difficult, even for experts. A new paradigm called reinforcement learning from human preferences (or preference-based RL) has emerged as a promising solution, in which reward functions are learned from human preference labels among behavior trajectories. However, existing methods for preference-based RL are limited by the need for accurate oracle preference labels. This paper addresses this limitation by developing a method for crowd-sourcing preference labels and learning from diverse human preferences. The key idea is to stabilize reward learning through regularization and correction in a latent space. To ensure temporal consistency, a strong constraint is imposed on the reward model that forces its latent space to be close to the prior distribution. Additionally, a confidence-based reward model ensembling method is designed to generate more stable and reliable predictions. The proposed method is tested on a variety of tasks in DMcontrol and Meta-world and has shown consistent and significant improvements over existing preference-based RL algorithms when learning from diverse feedback, paving the way for real-world applications of RL methods.

Foundations

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

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