Not All Layers Need Tuning: Selective Layer Restoration Recovers Diversity
This addresses the issue of repetitive outputs in open-ended settings for users of LLMs, offering a training-free method to enhance diversity, though it is incremental as it builds on existing layer-based insights.
The paper tackled the problem of mode collapse in post-trained large language models, where generation diversity is reduced, and found that restoring specific layers to pre-trained weights can recover diversity with minimal quality loss, achieving consistent improvements across multiple tasks and model families.
Post-training improves instruction-following and helpfulness of large language models (LLMs) but often reduces generation diversity, which leads to repetitive outputs in open-ended settings, a phenomenon known as mode collapse. Motivated by evidence that LLM layers play distinct functional roles, we hypothesize that mode collapse can be localized to specific layers and that restoring a carefully chosen range of layers to their pre-trained weights can recover diversity while maintaining high output quality. To validate this hypothesis and decide which layers to restore, we design a proxy task -- Constrained Random Character(CRC) -- with an explicit validity set and a natural diversity objective. Results on CRC reveal a clear diversity-validity trade-off across restoration ranges and identify configurations that increase diversity with minimal quality loss. Based on these findings, we propose Selective Layer Restoration (SLR), a training-free method that restores selected layers in a post-trained model to their pre-trained weights, yielding a hybrid model with the same architecture and parameter count, incurring no additional inference cost. Across three different tasks (creative writing, open-ended question answering, and multi-step reasoning) and three different model families (Llama, Qwen, and Gemma), we find SLR can consistently and substantially improve output diversity while maintaining high output quality.