CoDA: Towards Effective Cross-domain Knowledge Transfer via CoT-guided Domain Adaptation
Jianzhi Yan, Le Liu, Buzhou Tang, Yang Xiang, Dongning Sun, Zhiming Li

TL;DR
This paper introduces CoDA, a novel method for improving cross-domain knowledge transfer in large language models by aligning latent reasoning representations through a lightweight adapter and distribution matching techniques.
Contribution
CoDA employs a lightweight adapter and distribution matching to enhance cross-domain knowledge transfer in LLMs, addressing domain shift challenges in reasoning tasks.
Findings
CoDA significantly outperforms previous state-of-the-art methods.
The approach effectively aligns source and target domain representations.
Experimental results validate CoDA's robustness across multiple tasks and models.
Abstract
Large language models (LLMs) have achieved substantial advances in logical reasoning, yet they continue to lag behind human-level performance. In-context learning provides a viable solution that boosts the model's performance via prompting its input with expert-curated, in-domain exemplars. However, in many real-world, expertise-scarce domains, such as low-resource scientific disciplines, emerging biomedical subfields, or niche legal jurisdictions, such high-quality in-domain demonstrations are inherently limited or entirely unavailable, thereby constraining the general applicability of these approaches. To mitigate this limitation, recent efforts have explored the retrieval of cross-domain samples as surrogate in-context demonstrations. Nevertheless, the resulting gains remain modest. This is largely attributable to the pronounced domain shift between source and target distributions,…
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