cs.AI updates on arXiv.org 09月29日
FINDAP:金融领域LLM自适应后训练研究
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本文提出FINDAP,对金融领域LLM自适应后训练进行系统研究,包括定义核心能力FinCap、优化训练策略FinRec、定制训练数据集FinTrain和评估套件FinEval,实现金融任务上最佳性能。

arXiv:2501.04961v3 Announce Type: replace-cross Abstract: Domain-adaptive post-training of large language models (LLMs) has emerged as a promising approach for specialized domains such as medicine and finance. However, significant challenges remain in identifying optimal adaptation criteria and training strategies across varying data and model configurations. To address these challenges, we introduce FINDAP, a systematic and fine-grained investigation into domain-adaptive post-training of LLMs for the finance domain. Our approach consists of four key components: FinCap, which defines the core capabilities required for the target domain; FinRec, an effective training recipe that jointly optimizes continual pre-training and instruction-following, along with a novel preference data distillation method leveraging process signals from a generative reward model; FinTrain, a curated set of training datasets supporting FinRec; and FinEval, a comprehensive evaluation suite aligned with FinCap. The resulting model, Llama-Fin, achieves state-of-the-art performance across a wide range of financial tasks. Our analysis also highlights how each post-training stage contributes to distinct capabilities, uncovering specific challenges and effective solutions, providing valuable insights for domain adaptation of LLMs

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LLM 自适应后训练 金融领域 FINDAP 性能提升
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