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Training Classifiers for Tree-Structured Sets of Categories

机译:树形结构类别的训练分类器

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In this paper we propose a new method for training classifiers for multi-class problems when classes are not (necessarily) mutually exclusive and may be related by means of a probabilistic tree structure. Our method is based on the definition of a Bayesian model relating network parameters, feature vectors and categories. Learning is stated as a maximum likelihood estimation problem of the classifier parameters. The proposed algorithm is tested on an image retrieval scenario.
机译:在本文中,我们提出了一种新的训练分类器的方法,该方法用于分类不是(必要)互斥并且可以通过概率树结构关联的多分类问题。我们的方法基于有关网络参数,特征向量和类别的贝叶斯模型的定义。学习被描述为分类器参数的最大似然估计问题。该算法在图像检索场景下进行了测试。

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