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Knowledge Graph Constraints for Multi-label Graph Classification

机译:多标签图分类的知识图约束

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Graph classification methods have gained increasing attention in different domains, such as classifying functions of molecules or detection of bugs in software programs. Similarly, predicting events in manufacturing operations data can be compactly modeled as graph classification problem. Feature representations of graphs are usually found by mining discriminative sub-graph patterns that are non-uniformly distributed across class labels. However, as these feature selection approaches are computationally expensive for multiple labels, prior knowledge about label correlations should be exploited as much as possible. In this work, we introduce a new approach for mining discriminative sub-graph patterns with constraints that are extracted from links between labels in knowledge graphs which indicate label correlations. The incorporation of these constraints allows to prune the search space and ensures extraction of consistent patterns. Therefore, constraint checking remains efficient and more robust classification results can be obtained. We evaluate our approach on both, one public and one custom simulated data set. Evaluation confirms that incorporation of constraints still results in efficient pattern mining and can increase performance of state-of-the-art approaches.
机译:图分类方法已在不同领域中得到越来越多的关注,例如分子的功能分类或软件程序中错误的检测。类似地,可以将制造操作数据中的预测事件紧凑地建模为图形分类问题。图的特征表示通常是通过挖掘在子类标签上不均匀分布的有区别的子图模式来找到的。然而,由于这些特征选择方法对于多个标签在计算上是昂贵的,因此应当尽可能多地利用关于标签相关性的现有知识。在这项工作中,我们引入了一种新的方法,该方法用于挖掘具有约束力的有区别的子图模式,这些约束条件是从知识图谱中的标签之间的链接中提取的,这些链接指示标签的相关性。这些约束的合并允许修剪搜索空间并确保提取一致的模式。因此,约束检查仍然有效,并且可以获得更鲁棒的分类结果。我们在一个公共和一个自定义模拟数据集上评估我们的方法。评估证实,约束的合并仍然可以有效地进行模式挖掘,并且可以提高最新方法的性能。

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