跨未知测试数据的平衡-次采样稳定预测

Kun Kuang, Hengtao Zhang, Runze Wu, Fei Wu, Y. Zhuang, Aijun Zhang
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引用次数: 8

摘要

在数据挖掘和机器学习中,通常假设训练数据和测试数据共享相同的总体分布。然而,在实践中,由于样本选择偏差,这一假设经常被违背,这可能导致分布从训练数据到测试数据的转移。这种与模型无关的分布转移通常会导致未知测试数据的预测不稳定。本文提出了一种基于分数因子设计理论的平衡-次抽样稳定预测(BSSP)算法。它从混杂变量中分离出每个预测因子的明显影响。设计理论分析表明,该方法可以减少分布移位引起的预测因子之间的混杂效应,提高参数估计的精度和跨未知测试数据预测的稳定性。在合成数据集和实际数据集上的数值实验表明,我们的BSSP算法在未知测试数据的稳定预测方面明显优于基线方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Balance-Subsampled Stable Prediction Across Unknown Test Data
In data mining and machine learning, it is commonly assumed that training and test data share the same population distribution. However, this assumption is often violated in practice because of the sample selection bias, which might induce the distribution shift from training data to test data. Such a model-agnostic distribution shift usually leads to prediction instability across unknown test data. This article proposes a novel balance-subsampled stable prediction (BSSP) algorithm based on the theory of fractional factorial design. It isolates the clear effect of each predictor from the confounding variables. A design-theoretic analysis shows that the proposed method can reduce the confounding effects among predictors induced by the distribution shift, improving both the accuracy of parameter estimation and the stability of prediction across unknown test data. Numerical experiments on synthetic and real-world datasets demonstrate that our BSSP algorithm can significantly outperform the baseline methods for stable prediction across unknown test data.
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