Learnability Lock: Authorized Learnability Control Through Adversarial Invertible Transformations
This addresses data privacy concerns for data owners by enabling controlled learnability, representing a novel approach beyond previous attacks that only prevented unauthorized exploitation.
The paper tackles the problem of preventing unauthorized use of data for training commercial models by introducing a 'learnability lock' that makes data unlearnable through adversarial invertible transformations, while allowing authorized restoration with a key, and demonstrates its success on visual classification tasks.
Owing much to the revolution of information technology, the recent progress of deep learning benefits incredibly from the vastly enhanced access to data available in various digital formats. However, in certain scenarios, people may not want their data being used for training commercial models and thus studied how to attack the learnability of deep learning models. Previous works on learnability attack only consider the goal of preventing unauthorized exploitation on the specific dataset but not the process of restoring the learnability for authorized cases. To tackle this issue, this paper introduces and investigates a new concept called "learnability lock" for controlling the model's learnability on a specific dataset with a special key. In particular, we propose adversarial invertible transformation, that can be viewed as a mapping from image to image, to slightly modify data samples so that they become "unlearnable" by machine learning models with negligible loss of visual features. Meanwhile, one can unlock the learnability of the dataset and train models normally using the corresponding key. The proposed learnability lock leverages class-wise perturbation that applies a universal transformation function on data samples of the same label. This ensures that the learnability can be easily restored with a simple inverse transformation while remaining difficult to be detected or reverse-engineered. We empirically demonstrate the success and practicability of our method on visual classification tasks.