Feb. 2, 2024, 9:41 p.m. | Yushu Jiang

cs.CL updates on arXiv.org arxiv.org

Extensive fine-tuning on Large Language Models does not always yield better results. Oftentimes, models tend to get better at imitating one form of data without gaining greater reasoning ability and may even end up losing some intelligence. Here I introduce EvoMerge, a systematic approach to large language model training and merging. Leveraging model merging for weight crossover and fine-tuning for weight mutation, EvoMerge establishes an evolutionary process aimed at pushing models beyond the limits of conventional fine-tuning.

cs.ai cs.cl cs.lg cs.ne data fine-tuning form intelligence language language model language models language model training large language large language model large language models merging neuroevolution reasoning training

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