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Using Siamese Graph Neural Networks for Similarity-Based Retrieval in Process-Oriented Case-Based Reasoning

机译:利用暹罗图神经网络在以过程为导向的基于案例推理中的基于相似性的检索

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Similarity-based retrieval of semantic graphs is widely used in real-world scenarios, e.g., in the domain of business workflows. To tackle the problem of complex and time-consuming graph similarity computations during retrieval, the MAC/FAC approach is used in Process-Oriented Case-Based Reasoning (POCBR), where similar graphs are extracted from a preselected set of candidate graphs. These graphs result from a similarity computation with a computationally inexpensive similarity measure. The contribution of this paper is a novel similarity measure where vector space embeddings generated by two Siamese Graph Neural Networks (GNNs) are used to approximate the similarities of a precise but therefore computationally complex graph similarity measure. Our approach includes a specific encoding scheme for semantic graphs that enables their usage in neural networks. The evaluation examines the quality and performance of these models in preselecting retrieval candidates and in approximating the ground-truth similarities of the graph similarity measure for two workflow domains. The results show great potential of the approach for being used in a MAC/FAC scenario, either as a preselection model or as an approximation of the graph similarity measure.
机译:基于相似性的语义图中的检索广泛用于现实世界场景,例如,在商业工作流域中。为了解决在检索期间复杂和耗时的图形相似度计算的问题,MAC / FAC方法用于面向过程的基于案例的推理(POCBR),其中从预选的一组候选图表中提取了类似的图。这些图表由具有计算廉价相似度测量的相似性计算产生。本文的贡献是一种新的相似性测量,其中两个暹罗图形神经网络(GNN)产生的矢量空间嵌入物用于近似于精确但是因此计算复杂的图形相似度测量的相似性。我们的方法包括用于语义图的特定编码方案,其能够在神经网络中使用它们。评估检查了这些模型在预先选择的检索候选方面的质量和性能,以及近似于两个工作流域的图形相似度测量的地面真理相似性。结果表明,用于在MAC / FAC场景中使用的方法的潜力很大,无论是预选模型还是图形相似度测量的近似。

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