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ToW: Thoughts of Words Improve Reasoning in Large Language Models

The introduction of thoughts of words (ToW) as a training-time data augmentation method enhances reasoning performance and reduces factual hallucination in models for next-word prediction through fine-grained thought annotations.

Year
2024
Venue
arXiv 2024
Authors
9
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arxiv.org/abs/2410.16235v2ARXIV-DEFAULT
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Abstract

We introduce thoughts of words (ToW), a novel training-time data-augmentation method for next-word prediction. ToW views next-word prediction as a core reasoning task and injects fine-grained thoughts explaining what the next word should be and how it is related to the previous contexts in pre-training texts. Our formulation addresses two fundamental drawbacks of existing next-word prediction learning schemes: they induce factual hallucination and are inefficient for models to learn the implicit reasoning processes in raw texts. While there are many ways to acquire such thoughts of words, we explore the first step of acquiring ToW annotations through distilling from larger models. After continual pre-training with only 70K ToW annotations, we effectively improve models' reasoning performances by 7% to 9% on average and reduce model hallucination by up to 10%. At the same time, ToW is entirely agnostic to tasks and applications, introducing no additional biases on labels or semantics.

Authors

9