18 - Concept Extrapolation with Stuart Armstrong

Concept extrapolation is the idea of taking concepts an AI has about the world - say, "mass" or "does this picture contain a hot dog" - and extending them sensibly to situations where things are different - like learning that the world works via special relativity, or seeing a picture of a novel sausage-bread combination. For a while, Stuart Armstrong has been thinking about concept extrapolation and how it relates to AI alignment. In this episode, we discuss where his thoughts are at on this topic, what the relationship to AI alignment is, and what the open questions are.   Topics we discuss, and timestamps:  - 00:00:44 - What is concept extrapolation  - 00:15:25 - When is concept extrapolation possible  - 00:30:44 - A toy formalism  - 00:37:25 - Uniqueness of extrapolations  - 00:48:34 - Unity of concept extrapolation methods  - 00:53:25 - Concept extrapolation and corrigibility  - 00:59:51 - Is concept extrapolation possible?  - 01:37:05 - Misunderstandings of Stuart's approach  - 01:44:13 - Following Stuart's work   The transcript: axrp.net/episode/2022/09/03/episode-18-concept-extrapolation-stuart-armstrong.html   Stuart's startup, Aligned AI: aligned-ai.com   Research we discuss:  - The Concept Extrapolation sequence: alignmentforum.org/s/u9uawicHx7Ng7vwxA  - The HappyFaces benchmark: github.com/alignedai/HappyFaces  - Goal Misgeneralization in Deep Reinforcement Learning: arxiv.org/abs/2105.14111

Om Podcasten

AXRP (pronounced axe-urp) is the AI X-risk Research Podcast where I, Daniel Filan, have conversations with researchers about their papers. We discuss the paper, and hopefully get a sense of why it's been written and how it might reduce the risk of AI causing an existential catastrophe: that is, permanently and drastically curtailing humanity's future potential. You can visit the website and read transcripts at axrp.net.