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引用次数: 0

摘要

反事实解释是一种可解释的机器学习形式,它在样本上产生扰动以达到预期的结果。生成的样品可以作为指导,指导最终用户如何通过改变样品来观察所需的结果。尽管最先进的反事实解释方法被提出使用变分自编码器(VAE)来实现有希望的改进,但它们受到两个主要限制:1)反事实生成非常缓慢,这阻碍了算法在交互式环境中部署;2)由于变分自编码器采样过程的随机性,反事实解释算法产生的结果不稳定。在这项工作中,为了解决上述限制,我们设计了一个鲁棒且高效的反事实解释框架,即CeFlow,它利用规范化流来处理连续和分类特征的混合类型。数值实验表明,我们的技术优于最先进的方法。我们在https://github.com/tridungduong16/fairCE.git上发布了我们的源代码以复制结果。
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CeFlow: A Robust and Efficient Counterfactual Explanation Framework for Tabular Data using Normalizing Flows
Counterfactual explanation is a form of interpretable machine learning that generates perturbations on a sample to achieve the desired outcome. The generated samples can act as instructions to guide end users on how to observe the desired results by altering samples. Although state-of-the-art counterfactual explanation methods are proposed to use variational autoencoder (VAE) to achieve promising improvements, they suffer from two major limitations: 1) the counterfactuals generation is prohibitively slow, which prevents algorithms from being deployed in interactive environments; 2) the counterfactual explanation algorithms produce unstable results due to the randomness in the sampling procedure of variational autoencoder. In this work, to address the above limitations, we design a robust and efficient counterfactual explanation framework, namely CeFlow, which utilizes normalizing flows for the mixed-type of continuous and categorical features. Numerical experiments demonstrate that our technique compares favorably to state-of-the-art methods. We release our source at https://github.com/tridungduong16/fairCE.git for reproducing the results.
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