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

机译:半监督在线内核嵌入多标签注释

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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:本文介绍了一种多标签注释方法,该方法使用基于内核矩阵分解的语义嵌入策略。所提出的方法称为半监控在线内核语义嵌入(SS-OKSE)学习通过构建记录功能的语义表示来预测文档的标签,该功能在可用时考虑到标签。算法的显着特征是它基于允许模拟非线性关系的内核配方。 SS-OKSE方法在多标签注释任务的半监督学习设置下进行评估,超过两个文本文档数据集,并与多个监督和半监督方法进行比较。实验结果表明,SS-OKSE表现出显着的改进,表明可以通过足够的选择/构建核心输入表示来实现更好的建模。

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