在线正则化判别分析

U. Orhan, Ang Li, Deniz Erdoğmuş
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引用次数: 0

摘要

学习信号统计和校准是监督机器学习算法的基本步骤。对于某些应用,例如基于ERP的脑机接口,减少校准的持续时间可能很重要,特别是对于那些需要频繁训练分类器的应用。然而,如果算法存在维数不足或信噪比较低的问题,单纯减少校正样本数量会降低算法的性能。作为补救措施,我们建议在校准期间以在线方式估计算法的性能,这将允许我们在需要时终止校准会话。因此,提前终止意味着减少花费的时间。在本文中,我们提出了一种正则化判别分析(RDA)的更新算法,利用新的监督数据来修改分类器。与重新校准RDA分类器相比,所建议的过程大大减少了更新RDA分类器所需的时间,这将使性能估计实时适用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Online regularized discriminant analysis
Learning the signal statistics and calibration are essential procedures for supervised machine learning algorithms. For some applications, e.g ERP based brain computer interfaces, it might be important to reduce the duration of the calibration, especially for the ones requiring frequent training of the classifiers. However simply decreasing the number of calibration samples would decrease the performance of the algorithm if the algorithm suffers from curse of dimensionality or low signal to noise ratio. As a remedy, we propose estimating the performance of the algorithm during the calibration in an online manner, which would allow us to terminate the calibration session if required. Consequently, early termination means a reduction in time spent. In this paper, we present an updating algorithm for regularized discriminant analysis (RDA) to modify the classifier using the new supervised data collected. The proposed procedure considerably reduces the time required for updating the RDA classifiers compared to recalibrating them, that would make the performance estimation applicable in real time.
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