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An MIMLSVM algorithm based on ECC

机译:一种基于ECC的MIMLSVM算法

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摘要

In the multi-instance multi-label learning framework, an example is described by multiple instances and associated with multiple class labels at the same time. An idea of tackling with multi-instance multi-label problems is to identify its equivalence in the traditional supervised learning framework. However, some useful information such as the correlation between labels may be lost in the process of degeneration, which will influence the classification performance. In E-MIMLSVM+ algorithm, multi-task learning techniques are utilized to incorporate label correlations, while it is time consuming as well as memory consuming. Therefore, we propose an improved algorithm. In our algorithm, the classifier chains method is applied in E-MIMLSVM+ to incorporate label correlations instead of multi-task learning techniques. The experimental results show that the proposed algorithm can reduce time complexity and improve the predictive performance.
机译:在多实例多标签学习框架中,示例由多个实例描述并同时与多个类标签相关联。 解决多实例多标签问题的解决是识别传统监督学习框架中的等价。 然而,一些有用的信息,例如标签之间的相关性可能在变性过程中丢失,这将影响分类性能。 在E-MIMLSVM +算法中,利用多任务学习技术来结合标签相关性,而耗时也是耗时的和记忆消耗。 因此,我们提出了一种改进的算法。 在我们的算法中,分类器链方法应用于E-MIMLSVM +以结合标签相关性而不是多任务学习技术。 实验结果表明,该算法可以降低时间复杂性并提高预测性能。

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