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Poster

Transcendence: Generative Models Can Outperform The Experts That Train Them

Edwin Zhang · Vincent Zhu · Naomi Saphra · Anat Kleiman · Benjamin Edelman · Milind Tambe · Sham Kakade · Eran Malach

[ ] [ Project Page ]
Thu 12 Dec 11 a.m. PST — 2 p.m. PST

Abstract:

Generative models are trained with the simple objective of imitating the conditional probability distribution induced by the data they are trained on. Therefore, when trained on data generated by humans, we may not expect the artificial model to outperform the humans on their original objectives. In this work, we study the phenomenon of transcendence: when a generative model achieves capabilities that surpass the abilities of the experts generating its data. We demonstrate transcendence by training an autoregressive transformer to play chess from game transcripts, and show that the trained model can sometimes achieve better performance than all players in the dataset. We theoretically prove that transcendence is enabled by low-temperature sampling, and rigorously assess this experimentally. Finally, we discuss other sources of transcendence, laying the groundwork for future investigation of this phenomenon in a broader setting.

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