Neural Lineage
About
Given a well-behaved neural network, is possible to identify its parent, based on which it was tuned? In this paper, we introduce a novel task known as neural lineage detection, aiming at discovering lineage relationships between parent and child models. Specifically, from a set of parent models, neural lineage detection predicts which parent model a child model has been fine-tuned from. We propose two approaches to address this task. (1) For practical convenience, we introduce a learning-free approach, which integrates an approximation of the finetuning process into the neural network representation similarity metrics, leading to a similarity-based lineage detection scheme. (2) For the pursuit of accuracy, we introduce a learning-based lineage detector comprising encoders and a transformer detector. Through experimentation, we have validated that our proposed learning-free and learning-based methods outperform the baseline in various learning settings and are adaptable to a variety of visual models. Moreover, they also exhibit the ability to trace cross-generational lineage, identifying not only parent models but also their ancestors.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Model Lineage Attestation | Caltech101 -> Caltech101 -> CIFAR100 | TPR99 | 20 | |
| Model Lineage Attestation | Caltech101->TinyImageNet Mixed | TPR100 | 10 | |
| Model Lineage Attestation | CIFAR100 Dogs | TPR94 | 10 | |
| Model Lineage Attestation | TinyImageNet->Pet->Mixed | TPR95 | 10 | |
| Model Lineage Attestation | Flowers CIFAR100 Mixed Dataset | TPR0.96 | 10 |