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A comparison of collective classification techniques on network data

机译:网络数据的集体分类技术比较

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Collective Classification techniques aim to improve the classification performance of linked data by utilizing unknown nodes in the network that are classified by using known nodes and network structure. In this paper, we consider both single and multi-labeled linked data classification problem using local and global classification algorithms. Initially, single-labeled linked data classification problem is evaluated using ICA-KNN, ICA-Naïve Bayes, LBP and MF algorithms on bibliographic datasets. Then we extend our experiments on terrorism relation multi-labeled linked dataset by using ML-LBP, ML-MF global classification algorithms. The experimental results show that for single-labeled linked data the best classification accuracy is obtained by MF global classification algorithm. For multi-labeled data both ML-LBP and ML-MF algorithms perform similarly.
机译:集体分类技术旨在通过利用网络中的未知节点(通过使用已知节点和网络结构进行分类)来提高链接数据的分类性能。在本文中,我们考虑使用局部和全局分类算法的单标签和多标签链接数据分类问题。最初,在书目数据集上使用ICA-KNN,ICA-朴素贝叶斯,LBP和MF算法评估单标签链接数据分类问题。然后,我们使用ML-LBP,ML-MF全局分类算法扩展了对恐怖主义关系多标签链接数据集的实验。实验结果表明,对于单标签链接数据,通过MF全局分类算法可获得最佳分类精度。对于多标签数据,ML-LBP和ML-MF算法的执行情况相似。

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