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Query from Sketch: A Common Subgraph Correspondence Mining Framework

机译:从草图查询:一个常见的子图对应挖掘群

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We investigate a subgraph mining framework, that can connect similar entities according to their structure and attribute similarities. We take one mapping between two related points chosen from the query and target graph as one vertex in the correspondence graph and decide the weight of the edge based on the similarity score. In this way, we transform the problem to a dense subgraph discovery problem. To adapt this method to large scale, we choose the candidate group by some effective pruning methods. We also add some techniques to make our method more flexible to fit uncertain user sketched input. We investigate how changes to certain parameters in the algorithm can influence the results. By integrating all these adjustments into the framework, we can provide a method that exhibits both accuracy and flexibility in many situations with a degree of generality. Experiments on both certain and uncertain query graphs can give satisfactory and informative results.
机译:我们调查了一个子图挖掘框架,可以根据其结构和属性相似性连接类似的实体。我们在从查询和目标图中选择的两个相关点之间的一个映射作为对应图中的一个顶点,并根据相似度得分来确定边缘的权重。通过这种方式,我们将问题转变为密集的子图发现问题。为了使这种方法适应大规模,我们通过一些有效的修剪方法选择候选群体。我们还添加了一些技术,使我们的方法更灵活地适应不确定的用户草图输入。我们调查算法中某些参数的变化如何影响结果。通过将所有这些调整集成到框架中,我们可以提供一种方法,该方法在具有一般性程度的许多情况下表现出准确性和灵活性。对某种和不确定查询图的实验可以提供令人满意和信息性的结果。

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