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  4. Towards Trustworthy Dataset Distillation: A Benchmark of Privacy, Fairness and Robustness
 
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July 2024
Conference Paper
Title

Towards Trustworthy Dataset Distillation: A Benchmark of Privacy, Fairness and Robustness

Abstract
Dataset distillation is an increasingly prevalent technique for condensing a large-scale dataset into more compact versions while preserving their intrinsic utility. However, very few studies have investigated the trustworthiness of data distillation, i.e., privacy, robustness, and fairness. The deficiency is particularly striking given the existing research that underscores the vulnerabilities in current AI models, including privacy breaches, biased predictions against underrepresented subgroups, and susceptibility to imperceptible attacks. To bridge the gap, we propose a trustworthy benchmark for assessing representative dataset distillation solutions across the benchmark CIFAR10 with comprehensive evaluation metrics. Through extensive experiments, we uncover vulnerabilities inherent in the application of dataset distillation, offering valuable insights for practitioners. Our work aims to drive the development of more transparent, reliable, and responsible machine learning models, fostering AI systems that align with trustworthy principles.
Author(s)
Chen, Zongxiong
Fraunhofer-Institut für Offene Kommunikationssysteme FOKUS  
Geng, Jiahui
Zhu, Derui
Li, Qing
Schimmler, Sonja  
Fraunhofer-Institut für Offene Kommunikationssysteme FOKUS  
Hauswirth, Manfred  
Fraunhofer-Institut für Offene Kommunikationssysteme FOKUS  
Mainwork
International Joint Conference on Neural Networks, IJCNN 2024. Proceedings  
Conference
International Joint Conference on Neural Networks 2024  
World Congress on Computational Intelligence 2024  
DOI
10.1109/IJCNN60899.2024.10650522
Language
English
Fraunhofer-Institut für Offene Kommunikationssysteme FOKUS  
Keyword(s)
  • Dataset

  • Distillation

  • Fairness

  • Robustness

  • Privacy-Preserving

  • AI

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