31 - Singular Learning Theory with Daniel Murfet
AXRP - the AI X-risk Research Podcast
Release Date: 05/07/2024
AXRP - the AI X-risk Research Podcast
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info_outline New Patreon tiers + MATS applicationsAXRP - the AI X-risk Research Podcast
Patreon: MATS: Note: I'm employed by MATS, but they're not paying me to make this video.
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info_outline 34 - AI Evaluations with Beth BarnesAXRP - the AI X-risk Research Podcast
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info_outline 31 - Singular Learning Theory with Daniel MurfetAXRP - the AI X-risk Research Podcast
What's going on with deep learning? What sorts of models get learned, and what are the learning dynamics? Singular learning theory is a theory of Bayesian statistics broad enough in scope to encompass deep neural networks that may help answer these questions. In this episode, I speak with Daniel Murfet about this research program and what it tells us. Patreon: Ko-fi: Topics we discuss, and timestamps: 0:00:26 - What is singular learning theory? 0:16:00 - Phase transitions 0:35:12 - Estimating the local learning coefficient 0:44:37 - Singular learning theory and generalization 1:00:39 -...
info_outlineWhat's going on with deep learning? What sorts of models get learned, and what are the learning dynamics? Singular learning theory is a theory of Bayesian statistics broad enough in scope to encompass deep neural networks that may help answer these questions. In this episode, I speak with Daniel Murfet about this research program and what it tells us.
Patreon: patreon.com/axrpodcast
Ko-fi: ko-fi.com/axrpodcast
Topics we discuss, and timestamps:
0:00:26 - What is singular learning theory?
0:16:00 - Phase transitions
0:35:12 - Estimating the local learning coefficient
0:44:37 - Singular learning theory and generalization
1:00:39 - Singular learning theory vs other deep learning theory
1:17:06 - How singular learning theory hit AI alignment
1:33:12 - Payoffs of singular learning theory for AI alignment
1:59:36 - Does singular learning theory advance AI capabilities?
2:13:02 - Open problems in singular learning theory for AI alignment
2:20:53 - What is the singular fluctuation?
2:25:33 - How geometry relates to information
2:30:13 - Following Daniel Murfet's work
The transcript: https://axrp.net/episode/2024/05/07/episode-31-singular-learning-theory-dan-murfet.html
Daniel Murfet's twitter/X account: https://twitter.com/danielmurfet
Developmental interpretability website: https://devinterp.com
Developmental interpretability YouTube channel: https://www.youtube.com/@Devinterp
Main research discussed in this episode:
- Developmental Landscape of In-Context Learning: https://arxiv.org/abs/2402.02364
- Estimating the Local Learning Coefficient at Scale: https://arxiv.org/abs/2402.03698
- Simple versus Short: Higher-order degeneracy and error-correction: https://www.lesswrong.com/posts/nWRj6Ey8e5siAEXbK/simple-versus-short-higher-order-degeneracy-and-error-1
Other links:
- Algebraic Geometry and Statistical Learning Theory (the grey book): https://www.cambridge.org/core/books/algebraic-geometry-and-statistical-learning-theory/9C8FD1BDC817E2FC79117C7F41544A3A
- Mathematical Theory of Bayesian Statistics (the green book): https://www.routledge.com/Mathematical-Theory-of-Bayesian-Statistics/Watanabe/p/book/9780367734817
In-context learning and induction heads: https://transformer-circuits.pub/2022/in-context-learning-and-induction-heads/index.html
- Saddle-to-Saddle Dynamics in Deep Linear Networks: Small Initialization Training, Symmetry, and Sparsity: https://arxiv.org/abs/2106.15933
- A mathematical theory of semantic development in deep neural networks: https://www.pnas.org/doi/abs/10.1073/pnas.1820226116
- Consideration on the Learning Efficiency Of Multiple-Layered Neural Networks with Linear Units: https://papers.ssrn.com/sol3/papers.cfm?abstract_id=4404877
- Neural Tangent Kernel: Convergence and Generalization in Neural Networks: https://arxiv.org/abs/1806.07572
- The Interpolating Information Criterion for Overparameterized Models: https://arxiv.org/abs/2307.07785
- Feature Learning in Infinite-Width Neural Networks: https://arxiv.org/abs/2011.14522
- A central AI alignment problem: capabilities generalization, and the sharp left turn: https://www.lesswrong.com/posts/GNhMPAWcfBCASy8e6/a-central-ai-alignment-problem-capabilities-generalization
- Quantifying degeneracy in singular models via the learning coefficient: https://arxiv.org/abs/2308.12108
Episode art by Hamish Doodles: hamishdoodles.com