Multi-source fast transfer learning algorithm based on support vector machine.

Peng Gao, Weifei Wu, Jingmei Li
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Abstract

Knowledge in the source domain can be used in transfer learning to help train and classification tasks within the target domain with fewer available data sets. Therefore, given the situation where the target domain contains only a small number of available unlabeled data sets and multi-source domains contain a large number of labeled data sets, a new Multi-source Fast Transfer Learning algorithm based on support vector machine(MultiFTLSVM) is proposed in this paper. Given the idea of multi-source transfer learning, more source domain knowledge is taken to train the target domain learning task to improve classification effect. At the same time, the representative data set of the source domain is taken to speed up the algorithm training process to improve the efficiency of the algorithm. Experimental results on several real data sets show the effectiveness of MultiFTLSVM, and it also has certain advantages compared with the benchmark algorithm.

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基于支持向量机的多源快速转移学习算法。
在迁移学习中,源领域的知识可以用来帮助在可用数据集较少的目标领域中进行训练和分类任务。因此,考虑到目标域只包含少量可用的未标记数据集,而多源域包含大量标记数据集的情况,本文提出了一种新的基于支持向量机的多源快速迁移学习算法(MultiFTLSVM)。鉴于多源迁移学习的思想,更多的源领域知识被用来训练目标领域的学习任务,以提高分类效果。同时,利用源域的代表性数据集来加速算法训练过程,从而提高算法的效率。在多个真实数据集上的实验结果表明了 MultiFTLSVM 的有效性,与基准算法相比也具有一定的优势。
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