Supervising strong learners by amplifying weak experts
Abstract
Many real world learning tasks involve complex or hard-to-specify objectives, and using an easier-to-specify proxy can lead to poor performance or misaligned behavior. One solution is to have humans provide a training signal by demonstrating or judging performance, but this approach fails if the task is too complicated for a human to directly evaluate. We propose Iterated Amplification, an alternative training strategy which progressively builds up a training signal for difficult problems by combining solutions to easier subproblems. Iterated Amplification is closely related to Expert Iteration (Anthony et al., 2017; Silver et al., 2017), except that it uses no external reward function. We present results in algorithmic environments, showing that Iterated Amplification can efficiently learn complex behaviors.
Cite
@article{arxiv.1810.08575,
title = {Supervising strong learners by amplifying weak experts},
author = {Paul Christiano and Buck Shlegeris and Dario Amodei},
journal= {arXiv preprint arXiv:1810.08575},
year = {2018}
}