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One-for-All Model Initialization with Frequency-Domain Knowledge

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Transferring knowledge by fine-tuning large-scale pre-trained networks has become a standard paradigm for downstream tasks, yet the knowledge of a pre-trained model is tightly coupled with monolithic architecture, which restricts flexible reuse across models of varying scales. In response to this challenge, recent approaches typically resort to either parameter selection, which fails to capture the interdependent structure of this knowledge, or parameter prediction using generative models that depend on impractical access to large network collections. In this paper, we empirically demonstrate that a model's foundational, task-agnostic knowledge, its "learngene", is encoded within the low-frequency components of its weights, and can be efficiently inherited by downstream models. Based on this insight, we propose FRONT (FRequency dOmain kNowledge Transfer), a novel framework that uses the Discrete Cosine Transform (DCT) to isolate the low-frequency "learngene". This learngene can be seamlessly adapted to initialize models of arbitrary size via simple truncation or padding, a process that is entirely training-free. For enhanced performance, we propose an optional low-cost refinement process that introduces a spectral regularizer to further improve the learngene's transferability. Extensive experiments demonstrate that FRONT achieves the state-of-the-art performance, accelerates convergence by up to 15 times in vision tasks, and reduces training FLOPs by an average of 40.5% in language tasks.

Jianlu Shen, Fu Feng, Yucheng Xie, Jiaqi Lv, Xin Geng• 2026

Related benchmarks

TaskDatasetResultRank
Image ClassificationImageNet-1K
Top-1 Acc78.7
1239
Image ClassificationCIFAR-100
Accuracy79.5
691
Image ClassificationStanford Cars
Accuracy88.2
635
Image ClassificationFood-101
Accuracy85.9
542
Image ClassificationCUB-200 2011
Accuracy68.9
356
Image ClassificationCIFAR-10
Accuracy95.7
246
Image ClassificationOxford Flowers 102
Accuracy91.3
234
Medical Image SegmentationISIC--
64
Image ClassificationiNaturalist
Accuracy69.1
63
Image ClassificationImageNet-1k (val)
Accuracy77.2
59
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