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A Family of Maximum Margin Criterion for Adaptive Learning

机译:适应性学习的最大保证金准则族

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摘要

In recent years, pattern analysis plays an important role in data mining and recognition, and many variants have been proposed to handle complicated scenarios. In the literature, it has been quite familiar with high dimensionality of data samples, but either such characteristics or large data sets have become usual sense in real-world applications. In this work, an improved maximum margin criterion (MMC) method is introduced firstly. With the new definition of MMC, several variants of MMC, including random MMC, layered MMC, 2D~2 MMC, are designed to make adaptive learning applicable. Particularly, the MMC network is developed to learn deep features of images in light of simple deep networks. Experimental results on a diversity of data sets demonstrate the discriminant ability of proposed MMC methods are component to be adopted in complicated application scenarios.
机译:近年来,模式分析在数据挖掘和识别中起着重要的作用,并且提出了许多变体来处理复杂的场景。在文献中,已经非常熟悉数据样本的高维,但是这种特性或大型数据集已成为现实应用程序中的常识。在这项工作中,首先介绍了一种改进的最大余量准则(MMC)方法。通过MMC的新定义,MMC的多种变体(包括随机MMC,分层MMC,2D〜2 MMC)被设计为使自适应学习适用。特别地,MMC网络被开发为根据简单的深度网络来学习图像的深度特征。在各种数据集上的实验结果表明,提出的MMC方法的判别能力是复杂应用场景中要采用的组件。

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