多标签分类的广义混合框架

Charmgil Hong, Iyad Batal, Milos Hauskrecht
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引用次数: 0

摘要

我们开发了一种基于专家混合物架构的新型多标签分类概率集合框架。在这一框架中,我们将分类器链系列中的多标签分类模型结合起来,这些分类器链使用输出空间分量的后验分布乘积来分解类的后验分布 P(Y1,...,Yd |X)。我们的方法捕捉到了不同的输入-输出和输出-输出关系,这些关系往往会随着数据的变化而变化。因此,我们可以恢复输入和输出之间丰富的依赖关系,而单一的多标签分类模型由于建模简化而无法捕捉到这些关系。我们开发并提出了从数据中学习专家混合物模型以及对未见数据实例进行多标签预测的算法。在多个基准数据集上的实验表明,我们的方法取得了极具竞争力的结果,优于现有的最先进的多标签分类方法。
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A Generalized Mixture Framework for Multi-label Classification.

We develop a novel probabilistic ensemble framework for multi-label classification that is based on the mixtures-of-experts architecture. In this framework, we combine multi-label classification models in the classifier chains family that decompose the class posterior distribution P(Y1, …, Yd |X) using a product of posterior distributions over components of the output space. Our approach captures different input-output and output-output relations that tend to change across data. As a result, we can recover a rich set of dependency relations among inputs and outputs that a single multi-label classification model cannot capture due to its modeling simplifications. We develop and present algorithms for learning the mixtures-of-experts models from data and for performing multi-label predictions on unseen data instances. Experiments on multiple benchmark datasets demonstrate that our approach achieves highly competitive results and outperforms the existing state-of-the-art multi-label classification methods.

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