Joint Estimation of Expertise and Reward Preferences From Human Demonstrations

11/09/2020
by   Pamela Carreno-Medrano, et al.
1

When a robot learns from human examples, most approaches assume that the human partner provides examples of optimal behavior. However, there are applications in which the robot learns from non-expert humans. We argue that the robot should learn not only about the human's objectives, but also about their expertise level. The robot could then leverage this joint information to reduce or increase the frequency at which it provides assistance to its human's partner or be more cautious when learning new skills from novice users. Similarly, by taking into account the human's expertise, the robot would also be able of inferring a human's true objectives even when the human's fails to properly demonstrate these objectives due to a lack of expertise. In this paper, we propose to jointly infer the expertise level and objective function of a human given observations of their (possibly) non-optimal demonstrations. Two inference approaches are proposed. In the first approach, inference is done over a finite, discrete set of possible objective functions and expertise levels. In the second approach, the robot optimizes over the space of all possible hypotheses and finds the objective function and expertise level that best explain the observed human behavior. We demonstrate our proposed approaches both in simulation and with real user data.

READ FULL TEXT

page 10

page 12

page 15

page 16

research
07/07/2022

Unified Learning from Demonstrations, Corrections, and Preferences during Physical Human-Robot Interaction

Humans can leverage physical interaction to teach robot arms. This physi...
research
10/11/2018

Learning under Misspecified Objective Spaces

Learning robot objective functions from human input has become increasin...
research
07/06/2021

Physical Interaction as Communication: Learning Robot Objectives Online from Human Corrections

When a robot performs a task next to a human, physical interaction is in...
research
09/10/2021

Discretizing Dynamics for Maximum Likelihood Constraint Inference

Maximum likelihood constraint inference is a powerful technique for iden...
research
01/13/2021

Preferential Mixture-of-Experts: Interpretable Models that Rely on Human Expertise as much as Possible

We propose Preferential MoE, a novel human-ML mixture-of-experts model t...
research
02/11/2023

The Impact of Expertise in the Loop for Exploring Machine Rationality

Human-in-the-loop optimization utilizes human expertise to guide machine...
research
01/18/2017

Assessing User Expertise in Spoken Dialog System Interactions

Identifying the level of expertise of its users is important for a syste...

Please sign up or login with your details

Forgot password? Click here to reset