一种通过预期域转换来解决分布偏移的方法

Jean-Christophe Gagnon-Audet, Soroosh Shahtalebi, Frank Rudzicz, I. Rish
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引用次数: 0

摘要

由于分布的变化,机器学习模型往往不能推广到不可见的领域。一类这样的偏移,“相关偏移”,是由数据中的虚假相关性引起的。它是在“领域泛化”的总体主题下研究的。在这项工作中,我们采用多模态翻译网络来处理数据在分布外采样时出现的相关偏移。从训练域学习生成模型使我们能够在其他可能域的特殊特征下翻译每个训练样本。我们表明,通过仅在生成的样本上训练预测器,训练域中的虚假相关性被平均掉了,并且出现了与真实相关性对应的不变特征。我们提出的期望域翻译(EDT)技术在有色MNIST数据集上进行了基准测试,并通过训练域验证模型的选择将最先进的分类精度大大提高了38%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Remedy For Distributional Shifts Through Expected Domain Translation
Machine learning models often fail to generalize to unseen domains due to the distributional shifts. A family of such shifts, “correlation shifts,” is caused by spurious correlations in the data. It is studied under the overarching topic of “domain generalization.” In this work, we employ multi-modal translation networks to tackle the correlation shifts that appear when data is sampled out-of-distribution. Learning a generative model from training domains enables us to translate each training sample under the special characteristics of other possible domains. We show that by training a predictor solely on the generated samples, the spurious correlations in training domains average out, and the invariant features corresponding to true correlations emerge. Our proposed technique, Expected Domain Translation (EDT), is benchmarked on the Colored MNIST dataset and drastically improves the state-of-the-art classification accuracy by 38% with train-domain validation model selection.
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