Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

LEAD: Exploring Logit Space Evolution for Model Selection

About

The remarkable success of pretrain-then-finetune paradigm has led to a proliferation of available pre-trained models for vision tasks. This surge presents a significant challenge in efficiently choosing the most suitable pre-trained models for downstream tasks. The critical aspect of this challenge lies in effectively predicting the model transferability by considering the underlying fine-tuning dynamics. Existing methods often model fine-tuning dynamics in feature space with linear transformations, which do not precisely align with the fine-tuning objective and fail to grasp the essential nonlinearity from optimization. To this end, we present LEAD, a finetuning-aligned approach based on the network output of logits. LEAD proposes a theoretical framework to model the optimization process and derives an ordinary differential equation (ODE) to depict the nonlinear evolution toward the final logit state. Additionally, we design a class-aware decomposition method to consider the varying evolution dynamics across classes and further ensure practical applicability. Integrating the closely aligned optimization objective and nonlinear modeling capabilities derived from the differential equation, our method offers a concise solution to effectively bridge the optimization gap in a single step, bypassing the lengthy fine-tuning process. The comprehensive experiments on 24 supervised and self-supervised pre-trained models across 10 downstream datasets demonstrate impressive performances and showcase its broad adaptability even in low-data scenarios.

Zixuan Hu, Xiaotong Li, Shixiang Tang, Jun Liu, Yichun Hu, Ling-Yu Duan• 2025

Related benchmarks

TaskDatasetResultRank
Model SelectionDTD
Weighted Kendall's Tau0.825
46
Model SelectionPets
Weighted Kendall's Tau0.841
36
Model SelectionCIFAR100
Weighted Kendall's Tau0.835
36
Model SelectionCIFAR10
Weighted Kendall's Tau0.791
36
Model SelectionCars
Weighted Kendall's Tau0.663
36
Model SelectionSUN397
Weighted Kendall's Tau0.76
36
Model SelectionCaltech
Weighted Kendall's Tau0.78
24
Model SelectionFood
Weighted Kendall's Tau0.892
17
Model SelectionFlowers
Weighted Kendall's Tau0.786
17
Model SelectionVOC 2007
Weighted Kendall's Tau0.743
17
Showing 10 of 10 rows

Other info

Follow for update