Emergent Abilities
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Good quality. Reputable source with community review or editorial standards, but less rigorous than peer-reviewed venues.
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Abstract
Scaling up language models has been shown to predictably improve performance and sample efficiency on a wide range of downstream tasks. This paper instead discusses an unpredictable phenomenon that we refer to as emergent abilities of large language models. We consider an ability to be emergent if it is not present in smaller models but is present in larger models. Thus, emergent abilities cannot be predicted simply by extrapolating the performance of smaller models. The existence of such emergence implies that additional scaling could further expand the range of capabilities of language models.
Cited by 5 pages
| Page | Type | Quality |
|---|---|---|
| Large Language Models | Capability | 60.0 |
| Deceptive Alignment Decomposition Model | Analysis | 62.0 |
| AI Scaling Laws | Concept | 92.0 |
| Emergent Capabilities | Risk | 61.0 |
| Sharp Left Turn | Risk | 69.0 |
2d76bc16fcc7825d | Stable ID: YzEzZmNiNz