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A BAYESIAN APPROACH FOR EXTREME LEARNING MACHINE-BASED SUBSPACE LEARNING

机译:基于极端学习机的子空间学习的贝叶斯方法

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In this paper, we describe a supervised subspace learning method that combines Extreme Learning methods and Bayesian learning. We approach the standard Extreme Learning Machine algorithm from a probabilistic point of view. Subsequently and we devise a method for the calculation of the network target vectors for Extreme Learning Machine-based neural network training that is based on a Bayesian model exploiting both the labeling information available for the training data and geometric class information in the feature space determined by the network's hidden layer outputs. We combine the derived subspace learning method with Nearest Neighbor-based classification and compare its performance with that of the standard ELM approach and other standard methods.
机译:在本文中,我们描述了一个监督的子空间学习方法,结合了极端学习方法和贝叶斯学习。我们从概率的角度接近标准的极端学习机算法。随后,我们设计了一种用于计算基于极端学习机的神经网络训练的网络目标向量的方法,该培训基于贝叶斯模型利用由所确定的特征空间中的训练数据和几何类信息的标签信息进行利用网络的隐藏层输出。我们将派生子空间学习方法与最近的基于邻的分类组合,并将其性能与标准ELM方法和其他标准方法进行比较。

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