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arxiv:2410.01044

RATIONALYST: Pre-training Process-Supervision for Improving Reasoning

Published on Oct 1
· Submitted by Dongwei on Oct 3
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Abstract

The reasoning steps generated by LLMs might be incomplete, as they mimic logical leaps common in everyday communication found in their pre-training data: underlying rationales are frequently left implicit (unstated). To address this challenge, we introduce RATIONALYST, a model for process-supervision of reasoning based on pre-training on a vast collection of rationale annotations extracted from unlabeled data. We extract 79k rationales from web-scale unlabelled dataset (the Pile) and a combination of reasoning datasets with minimal human intervention. This web-scale pre-training for reasoning allows RATIONALYST to consistently generalize across diverse reasoning tasks, including mathematical, commonsense, scientific, and logical reasoning. Fine-tuned from LLaMa-3-8B, RATIONALYST improves the accuracy of reasoning by an average of 3.9% on 7 representative reasoning benchmarks. It also demonstrates superior performance compared to significantly larger verifiers like GPT-4 and similarly sized models fine-tuned on matching training sets.

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edited 2 days ago

Process supervision for reasoning is 🔥! While previous approaches often relied on human annotation and struggled to generalize across different reasoning tasks, we're now asking: Can we improve this?

Introducing RATIONALYST: a new model pre-trained on implicit rationales from web text to provide process supervision! RATIONALYST generalizes over reasoning tasks with minimal human intervention, outperforming much larger models like GPT-4!

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