APE: Selective Fine-tuning with Acceptance Criteria for Language Model Adaptation
APE: Selective Fine-tuning with Acceptance Criteria for Language Model Adaptation
We present Adjacent Possible Exploration (APE), a selective fine-tuning method for adapting large language models that systematically explores parameter modifications while maintaining model stability. Inspired by evolutionary optimization principles, APE evaluates multiple candidate parameter updates through fine-tuning on small data subsets and accepts only those exceeding a performance threshold. Unlike standard fine-tuning that follows single gradient directions, APE implements a filtered selection process that prevents destabilizing parameter changes while enabling systematic improvement. Our method achieves 33.9\% BLEU improvement and 36.2\% perplexity reduction on news summarization tasks while using minimal computational resources. The approach provides a practical framework for controlled model adaptation that balances performance gains with representational stability.
Javier Marín
计算技术、计算机技术
Javier Marín.APE: Selective Fine-tuning with Acceptance Criteria for Language Model Adaptation[EB/OL].(2025-05-26)[2025-08-02].https://arxiv.org/abs/2505.19912.点此复制
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