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A Multilabel Extension of LDA Based on the Gram-Schmidt Orthogonalization Procedure

机译:基于Gram-Schmidt正交化程序的LDA多标签扩展

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Multilabel classification is a generalization of the traditional unidimensional classification problem, the goal of multilabel classification is to learn a function that maps instances into a set of relevant labels. This article proposes an extension to linear discriminant analysis in the context of multilabel classification. The new method is based on Gram-Schmidt orthogonalization procedure. The theoretical basis and underlying assumptions of the new model are described and the method is experimentally evaluated on the Emotions data set for multilabel classification. The analysis of the empirical results support that this new method is competitive and in some instances superior to the baseline.
机译:多标签分类是对传统一维分类问题的概括,多标签分类的目标是学习将实例映射到一组相关标签中的功能。本文提出了在多标签分类的情况下线性判别分析的扩展。该新方法基于Gram-Schmidt正交化过程。描述了新模型的理论基础和基本假设,并在用于多标签分类的Emotions数据集上对方法进行了实验评估。对实证结果的分析支持该新方法具有竞争力,并且在某些情况下优于基线。

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