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In-context Learning Generalizes, But Not Always Robustly: The Case of Syntax

Authors :
Mueller, Aaron
Webson, Albert
Petty, Jackson
Linzen, Tal
Publication Year :
2023

Abstract

In-context learning (ICL) is now a common method for teaching large language models (LLMs) new tasks: given labeled examples in the input context, the LLM learns to perform the task without weight updates. Do models guided via ICL infer the underlying structure of the task defined by the context, or do they rely on superficial heuristics that only generalize to identically distributed examples? We address this question using transformations tasks and an NLI task that assess sensitivity to syntax - a requirement for robust language understanding. We further investigate whether out-of-distribution generalization can be improved via chain-of-thought prompting, where the model is provided with a sequence of intermediate computation steps that illustrate how the task ought to be performed. In experiments with models from the GPT, PaLM, and Llama 2 families, we find large variance across LMs. The variance is explained more by the composition of the pre-training corpus and supervision methods than by model size; in particular, models pre-trained on code generalize better, and benefit more from chain-of-thought prompting.<br />Comment: Accepted to NAACL 2024

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2311.07811
Document Type :
Working Paper