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Growing Adaptive Multi-Hyperplane Machines

机译:生长自适应多层超平板机

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Adaptive Multi-hyperplane Machine (AMM) is an online algorithm for learning Multi-hyperplane Machine (MM), a classification model which allows multiple hyperplanes per class. AMM is based on Stochastic Gradient Descent (SGD), with training time comparable to linear Support Vector Machine (SVM) and significantly higher accuracy. On the other hand, empirical results indicate there is a large accuracy gap between AMM and non-linear SVMs. In this paper we show that this performance gap is not due to limited representability of the MM model, as it can represent arbitrary concepts. We set to explain the connection between the AMM and Learning Vector Quantization (LVQ) algorithms, and introduce a novel Growing AMM (GAMM) classifier motivated by Growing LVQ, that imputes duplicate hyperplanes into the MM model during SGD training. We provide theoretical results showing that GAMM has favorable convergence properties, and analyze the generalization bound of the MM models. Experiments indicate that GAMM achieves significantly improved accuracy on non-linear problems, with only slightly slower training compared to AMM. On some tasks GAMM comes close to non-linear SVM, and outperforms other popular classifiers such as Neural Networks and Random Forests.
机译:自适应多层超平面机(AMM)是一种用于学习多层超平面机(MM)的在线算法,该分类模型允许每类多个超平面。 AMM基于随机梯度下降(SGD),具有与线性支持向量机(SVM)相当的训练时间和显着更高的精度。另一方面,经验结果表明AMM和非线性SVM之间存在大的精度差距。在本文中,我们表明,这种性能差距不是由于MM模型的有限性,因为它可以代表任意概念。我们设置了解释了AMM和学习矢量量化(LVQ)算法之间的连接,并引入了通过生长LVQ激励的新型生长AMM(GAMM)分类器,其在SGD训练期间将重复的超平面施加到MM模型中。我们提供理论结果表明GAMM具有有利的收敛性,并分析MM模型的泛化。实验表明,GAMM实现了对非线性问题的显着提高的准确性,仅与AMM相比略微慢。在一些任务上,GAMM接近非线性SVM,并且优于其他流行的分类器,如神经网络和随机林。

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