Polynomial Regression as a Task for Understanding In-context Learning Through Finetuning and Alignment
Wilcoxson, Max, Svendgård, Morten, Doshi, Ria, Davis, Dylan, Vir, Reya, Sahai, Anant
–arXiv.org Artificial Intelligence
Simple function classes have emerged as toy problems to better understand in-context-learning in transformer-based architectures used for large language models. But previously proposed simple function classes like linear regression or multi-layer-perceptrons lack the structure required to explore things like prompting and alignment within models capable of in-context-learning. We propose univariate polynomial regression as a function class that is just rich enough to study prompting and alignment, while allowing us to visualize and understand what is going on clearly.
arXiv.org Artificial Intelligence
Jul-27-2024
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