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LaF focuses on the comparion testing of multiple deep learning models without manual labeling.

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LaF: labeling-free comparison testing of deep learning models

Problem definition

Given N pre-trained deep learning models, the task is to estimate the rank of models regrading their performance on an unlabeled test set.

Dependency

  • python 3.6.10
  • keras 2.6.0
  • tensorflow 2.5.1
  • scipy 1.5.4
  • numpy 1.19.5

Download the dataset

ID data

MNIST, CIFAR-10, and Fashion-MNIST are available in Keras.

Amazon and iwildcam are taken from WILDS.

Java250 and C++1000 are taken from Project CodeNet.

OOD data

Download the OOD data of MNIST from Google drive or generate it by

python gene_mnist.py

Download the OOD data of CIFAR-10 from Google drive or generate it by

python gene_cifar10.py

Download the OOD data of Amazon and iwildCam from WILDS.

Download the OOD data of Java250 from Google drive.

Download Pre-trained deep learning models

Download all the models from Google drive.

You can also train the models for MNIST and CIFAR-10 by running the scripts in trainModel/mnist and trainModel/cifar10.

How to use

To speed the execution and avoid calling the model repeatedly, we first get the model prediction. E.g.:

python main_ground.py --dataName mnist

To get the results by baseline methods (SDS, Random, CES), run the following code:

python main_selection.py --dataName mnist --metric random

Besides, to get the final results of CES, you need to run:

python main_ces_best.py --dataName mnist

To get the results by LaF, run the following code:

python main_laf.py --dataName mnist --dataType id

To get the evaluation on kendall's tau, spearman's coefficients, jaccard similarity, run the following code:

python main_eva.py --dataName mnist 

[Notice] Be careful with the saving directories.

Reference


@article{10.1145/3611666,
author = {Hu, Qiang and Guo, Yuejun and Xie, Xiaofei and Cordy, Maxime and Papadakis, Mike and Le Traon, Yves},
title = {LaF: Labeling-Free Model Selection for Automated Deep Neural Network Reusing},
year = {2023},
publisher = {Association for Computing Machinery},
address = {New York, NY, USA},
issn = {1049-331X},
url = {https://doi.org/10.1145/3611666},
doi = {10.1145/3611666},
journal = {ACM Trans. Softw. Eng. Methodol.},
month = {jul}
}

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LaF focuses on the comparion testing of multiple deep learning models without manual labeling.

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