A Stochastic Expectation-Maximization Approach to Shuffled Linear Regression

Abubakar Abid, James Y. Zou
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引用次数: 22

Abstract

We consider the problem of inference in a linear regression model in which the relative ordering of the input features and output labels is not known. Such datasets naturally arise from experiments in which the samples are shuffled or permuted during the protocol. In this work, we propose a framework that treats the unknown permutation as a latent variable. We maximize the likelihood of observations using a stochastic expectation-maximization (EM) approach. We compare this to the dominant approach in the literature, which corresponds to hard EM in our framework. We show on synthetic data that the stochastic EM algorithm we develop has several advantages, including lower parameter error, less sensitivity to the choice of initialization, and significantly better performance on datasets that are only partially shuffled. We conclude by performing two experiments on real datasets that have been partially shuffled, in which we show that the stochastic EM algorithm can recover the weights with modest error.
洗牌线性回归的随机期望最大化方法
我们考虑了一个输入特征和输出标签的相对顺序未知的线性回归模型中的推理问题。这样的数据集自然产生于实验中,在实验过程中,样本被洗牌或排列。在这项工作中,我们提出了一个将未知排列视为潜在变量的框架。我们使用随机期望最大化(EM)方法最大化观察的可能性。我们将其与文献中的主导方法进行比较,该方法对应于我们框架中的硬EM。我们在合成数据上表明,我们开发的随机EM算法具有几个优点,包括更低的参数误差,对初始化选择的敏感度更低,并且在仅部分洗牌的数据集上显着更好的性能。最后,我们在部分洗牌的真实数据集上进行了两个实验,结果表明随机EM算法可以以适度的误差恢复权重。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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