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Semi-supervised Online Kernel Semantic Embedding for Multi-label Annotation

机译:多标签注释的半监督在线内核语义嵌入

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This paper presents a multi-label annotation method that uses a semantic embedding strategy based on kernel matrix factorization. The proposed method called Semi-supervised Online Kernel Semantic Embedding (SS-OKSE) learns to predict the labels of a document by building a semantic representation of the document features that takes into account the labels, when available. A remarkable characteristic of the algorithm is that it is based on a kernel formulation that allows to model non-linear relationships. The SS-OKSE method was evaluated under a semi-supervised learning setup for a multi-label annotation task, over two text document datasets and was compared against several supervised and semi-supervised methods. Experimental results show that SS-OKSE exhibits a significant improvement, showing that a better modeling can be achieved with an adequate selection/construction of a kernel input representation.
机译:本文提出了一种基于语义矩阵分解的基于语义嵌入策略的多标签标注方法。所提出的称为半监督在线内核语义嵌入(SS-OKSE)的方法通过构建考虑标签的文档特征的语义表示来学习预测文档的标签。该算法的显着特征是它基于内核模型,该模型可以对非线性关系进行建模。在两个文本文档数据集的多标签注释任务的半监督学习设置下,对SS-OKSE方法进行了评估,并与几种监督和半监督方法进行了比较。实验结果表明,SS-OKSE表现出改善显著,显示出更好的建模可以用适当的选择/构造的内核输入表示来实现。

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