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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Regularized margin-based conditional log-likelihood loss for prototype learning
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Regularized margin-based conditional log-likelihood loss for prototype learning

机译:基于原型的正则化基于余量的条件对数似然损失

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摘要

The classification performance of nearest prototype classifiers largely relies on the prototype learning algorithm. The minimum classification error (MCE) method and the soft nearest prototype classifier (SNPC) method are two important algorithms using misclassification loss. This paper proposes a new prototype learning algorithm based on the conditional log-likelihood loss (CLL), which is based on the discriminative model called log-likelihood of margin (LOGM). A regularization term is added to avoid over-fitting in training as well as to maximize the hypothesis margin. The CLL in the LOGM algorithm is a convex function of margin, and so, shows better convergence than the MCE. In addition, we show the effects of distance metric learning with both prototype-dependent weighting and prototype-independent weighting. Our empirical study on the benchmark datasets demonstrates that the LOGM algorithm yields higher classification accuracies than the MCE, generalized learning vector quantization (GLVQ), soft nearest prototype classifier (SNPC) and the robust soft learning vector quantization (RSLVQ), and moreover, the LOGM with prototype-dependent weighting achieves comparable accuracies to the support vector machine (SVM) classifier.
机译:最接近的原型分类器的分类性能在很大程度上取决于原型学习算法。最小分类误差(MCE)方法和软最近原型分类器(SNPC)方法是使用分类错误的两个重要算法。本文提出了一种新的基于条件对数似然损失(CLL)的原型学习算法,该算法基于称为对数对数似然(LOGM)的判别模型。添加正则项可以避免过度拟合训练并最大化假设余量。 LOGM算法中的CLL是余量的凸函数,因此与MCE相比,具有更好的收敛性。此外,我们还展示了距离度量学习对原型依赖权重和原型依赖权重的影响。我们对基准数据集的经验研究表明,LOGM算法比MCE,广义学习矢量量化(GLVQ),软最近原型分类器(SNPC)和鲁棒软学习矢量量化(RSLVQ)产生更高的分类准确性,此外,具有与原型相关的加权的LOGM可以实现与支持向量机(SVM)分类器相当的精度。

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