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Sequential EM for Unsupervised Adaptive Gaussian Mixture Model Based Classifier

机译:基于无监督自适应高斯混合模型分类器的顺序EM

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摘要

In this paper we present a sequential expectation maximization algorithm to adapt in an unsupervised manner a Gaussian mixture model for a classification problem. The goal is to adapt the Gaussian mixture model to cope with the non-stationarity in the data to classify and hence preserve the classification accuracy. Experimental results on synthetic data show that this method is able to learn the time-varying statistical features in data by adapting a Gaussian mixture model online. In order to control the adaptation method and to ensure the stability of the adapted model, we introduce an index to detect when the adaptation would fail.
机译:在本文中,我们提出了一种顺序期望最大化算法,以无监督的方式将高斯混合模型用于分类问题。目的是使高斯混合模型适应数据的非平稳性进行分类,从而保持分类的准确性。综合数据的实验结果表明,该方法能够通过在线适应高斯混合模型来学习数据中随时间变化的统计特征。为了控制自适应方法并确保自适应模型的稳定性,我们引入了一个索引来检测自适应何时会失败。

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