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Interpretable Minority Synthesis for Imbalanced Classification

Yi He, Fudong Lin, Xu Yuan, Nian-Feng Tzeng

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Abstract

This paper proposes a novel oversampling approach that strives to balance the class priors with a considerably imbalanced data distribution of high dimensionality. The crux of our approach lies in learning interpretable latent representations that can model the synthetic mechanism of the minority samples by using a generative adversarial network(GAN). A Bayesian regularizer is imposed to guide the GAN to extract a set of salient features that are either disentangled or intensionally entangled, with their interplay controlled by a prescribed structure, defined with human-in-the-loop. As such, our GAN enjoys an improved sample complexity, being able to synthesize high-quality minority samples even if the sizes of minority classes are extremely small during training. Empirical studies substantiate that our approach can empower simple classifiers to achieve superior imbalanced classification performance over the state-of-the-art competitors and is robust across various imbalance settings. Code is released in github.com/fudonglin/IMSIC.

Topics & Concepts

Computer scienceOversamplingMachine learningArtificial intelligencePrior probabilitySalientCode (set theory)Set (abstract data type)Sample (material)Class (philosophy)Bayesian probabilityData miningPattern recognition (psychology)Bandwidth (computing)Programming languageChromatographyComputer networkChemistryDigital Media Forensic DetectionImbalanced Data Classification TechniquesGenerative Adversarial Networks and Image Synthesis