Title
Policy Shaping: Integrating Human Feedback with Reinforcement Learning.
Abstract
A long term goal of Interactive Reinforcement Learning is to incorporate non-expert human feedback to solve complex tasks. State-of-the-art methods have approached this problem by mapping human information to reward and value signals to indicate preferences and then iterating over them to compute the necessary control policy. In this paper we argue for an alternate, more effective characterization of human feedback: Policy Shaping. We introduce Advise, a Bayesian approach that attempts to maximize the information gained from human feedback by utilizing it as direct labels on the policy. We compare Advise to state-of-the-art approaches and highlight scenarios where it outperforms them and importantly is robust to infrequent and inconsistent human feedback.
Year
Venue
Field
2013
NIPS
Computer science,Artificial intelligence,Machine learning,Bayesian probability,Reinforcement learning
DocType
Citations 
PageRank 
Conference
52
1.77
References 
Authors
18
5
Name
Order
Citations
PageRank
Griffith, Shane11066.33
Kaushik Subramanian21497.84
Scholz, Jonathan31045.42
Charles L. Isbell427027.80
Andrea Lockerd Thomaz5111584.85