Title
Learning Realistic Patterns from Visually Unrealistic Stimuli: Generalization and Data Anonymization (Extended Abstract).
Abstract
Good training data is a prerequisite to develop useful Machine Learning applications. However, in many domains existing data sets cannot be shared due to privacy regulations (e.g., from medical studies). This work investigates a simple yet unconventional approach for anonymized data synthesis to enable third parties to benefit from such anonymized data. We explore the feasibility of learning implicitly from visually unrealistic, task-relevant stimuli, which are synthesized by exciting the neurons of a trained deep neural network. As such, neuronal excitation can be used to generate synthetic stimuli. The stimuli data is used to train new classification models. Furthermore, we extend this framework to inhibit representations that are associated with specific individuals. Extensive comparative empirical investigation shows that different algorithms trained on the stimuli are able to generalize successfully on the same task as the original model.
Year
DOI
Venue
2022
10.24963/ijcai.2022/806
European Conference on Artificial Intelligence
Keywords
DocType
Citations 
Computer Vision: Representation Learning,Computer Vision: Neural generative models, auto encoders, GANs,Natural Language Processing: Knowledge Extraction,Knowledge Representation and Reasoning: General
Conference
0
PageRank 
References 
Authors
0.34
0
11