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The Performance of LVQ Based Automatic Relevance Determination Applied to Spontaneous Biosignals

机译:基于LVQ的自相关生物信号自动确定性能

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The issue of Automatic Relevance Determination (ARD) has attracted attention over the last decade for the sake of efficiency and accuracy of classifiers, and also to extract knowledge from discriminant functions adapted to a given data set. Based on Learning Vector Quantization (LVQ), we recently proposed an approach to ARD utilizing genetic algorithms. Another approach is the Generalized Relevance LVQ which has been shown to outperform other algorithms of the LVQ family. In the following we present a unique description of a number of LVQ algorithms and compare them concerning their classification accuracy and their efficacy. For this purpose a real world data set consisting of spontaneous EEG and EOG during overnight-driving is employed to detect so-called microsleep events. Results show that relevance learning can improve classification accuracies, but do not reach the performance of Support Vector Machines. The computational costs for the best performing classifiers are exceptionally high and exceed basic LVQ1 by a factor of 10~4.
机译:在过去的十年中,出于分类器的效率和准确性的考虑,自动相关性确定(ARD)问题引起了人们的关注,并且还从适用于给定数据集的判别函数中提取了知识。基于学习向量量化(LVQ),我们最近提出了一种利用遗传算法进行ARD的方法。另一种方法是通用相关性LVQ,它已被证明优于LVQ系列的其他算法。在下文中,我们提出了许多LVQ算法的独特描述,并就它们的分类准确性和功效进行了比较。为了这个目的,在夜间驾驶期间由自发EEG和EOG组成的现实世界数据集用于检测所谓的微睡眠事件。结果表明,相关学习可以提高分类的准确性,但达不到支持向量机的性能。性能最佳的分类器的计算成本极高,比基本LVQ1高出10到4倍。

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