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Enhancing Linguistic Competence of Language Models through Pre-training with Language Learning Tasks

Language models pre-trained with a framework combining standard next-token prediction and structured language learning tasks show enhanced linguistic competence without sacrificing general reasoning capabilities.

Year
2026
Venue
arXiv 2026
Authors
3
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arxiv.org/abs/2601.03448ARXIV-DEFAULT
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Abstract

Language models (LMs) are pre-trained on raw text datasets to generate text sequences token-by-token. While this approach facilitates the learning of world knowledge and reasoning, it does not explicitly optimize for linguistic competence. To bridge this gap, we propose L2T, a pre-training framework integrating Language Learning Tasks alongside standard next-token prediction. Inspired by human language acquisition, L2T transforms raw text into structured input-output pairs to provide explicit linguistic stimulation. Pre-training LMs on a mixture of raw text and L2T data not only improves overall performance on linguistic competence benchmarks but accelerates its acquisition, while maintaining competitive performance on general reasoning tasks.

Authors

3