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Multi-sample ζ -mixup: richer, more realistic synthetic samples from a p -series interpolant.

Kumar AbhishekColin J BrownGhassan Hamarneh
Published in: Journal of big data (2024)
Modern deep learning training procedures rely on model regularization techniques such as data augmentation methods, which generate training samples that increase the diversity of data and richness of label information. A popular recent method, mixup , uses convex combinations of pairs of original samples to generate new samples. However, as we show in our experiments, mixup  can produce undesirable synthetic samples, where the data is sampled off the manifold and can contain incorrect labels. We propose ζ - mixup , a generalization of mixup  with provably and demonstrably desirable properties that allows convex combinations of T ≥ 2 samples, leading to more realistic and diverse outputs that incorporate information from T original samples by using a p -series interpolant. We show that, compared to mixup , ζ - mixup  better preserves the intrinsic dimensionality of the original datasets, which is a desirable property for training generalizable models. Furthermore, we show that our implementation of ζ - mixup  is faster than mixup , and extensive evaluation on controlled synthetic and 26 diverse real-world natural and medical image classification datasets shows that ζ - mixup  outperforms mixup , CutMix, and traditional data augmentation techniques. The code will be released at https://github.com/kakumarabhishek/zeta-mixup.
Keyphrases
  • deep learning
  • electronic health record
  • healthcare
  • big data
  • primary care
  • artificial intelligence
  • social media
  • data analysis
  • rna seq
  • health information
  • quality improvement
  • single cell
  • soft tissue