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Transfer Learning without Knowing: Reprogramming Black-box Machine Learning Models with Scarce Data and Limited Resources

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Current transfer learning methods are mainly based on finetuning a pretrained model with target-domain data. Motivated by the techniques from adversarial machine learning (ML) that are capable of manipulating the model prediction via data perturbations, in this paper we propose a novel approach, black-box adversarial reprogramming (BAR), that repurposes a well-trained black-box ML model (e.g., a prediction API or a proprietary software) for solving different ML tasks, especially in the scenario with scarce data and constrained resources. The rationale lies in exploiting high-performance but unknown ML models to gain learning capability for transfer learning. Using zeroth order optimization and multi-label mapping techniques, BAR can reprogram a black-box ML model solely based on its input-output responses without knowing the model architecture or changing any parameter. More importantly, in the limited medical data setting, on autism spectrum disorder classification, diabetic retinopathy detection, and melanoma detection tasks, BAR outperforms state-of-the-art methods and yields comparable performance to the vanilla adversarial reprogramming method requiring complete knowledge of the target ML model. BAR also outperforms baseline transfer learning approaches by a significant margin, demonstrating cost-effective means and new insights for transfer learning.

Yun-Yun Tsai, Pin-Yu Chen, Tsung-Yi Ho• 2020

Related benchmarks

TaskDatasetResultRank
Image ClassificationEuroSAT
Accuracy77.2
497
Image ClassificationFood-101
Accuracy84.5
494
Image ClassificationSUN397
Accuracy62.4
425
Image ClassificationUCF101
Top-1 Acc64.2
404
Image ClassificationSVHN
Accuracy34.9
359
Image ClassificationImageNet
Top-1 Accuracy64.6
324
Image ClassificationStanfordCars--
266
Image ClassificationRESISC45
Accuracy65.3
263
Image ClassificationOxford-IIIT Pets
Accuracy88.6
259
Image ClassificationFGVC Aircraft--
185
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