Ranking-Based Case Retrieval with Graph Neural Networks in Process-Oriented Case-Based Reasoning

Maximilian Hoffmann, R. Bergmann
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Abstract

In Process-Oriented Case-Based Reasoning (POCBR), experiential knowledge from previous problem-solving situations is retrieved from a case base to be reused for upcoming problems. The task of retrieval is approached in previous work by using Graph Neural Networks (GNNs) to learn workflow similarities which are, in turn, used to find similar workflows w.r.t. a query workflow. This paper is motivated by the fact that these GNNs are mostly used for predicting the similarity between two workflows (query and case), while the retrieval in CBR is only concerned with the ranking of the most similar workflows from the case base w.r.t. the query. Thus, we propose a novel approach to extend the GNN-based workflow retrieval by a Learning-to-Rank (LTR) component where rankings instead of similarities between cases are predicted. The main contribution of this paper addresses the changes to the GNNs from previous work, such that their model architecture predicts pairwise preferences between cases w.r.t. a query and that they can be trained using labeled preference data. In order to transform these preferences into a case ranking, we also describe rank aggregation methods with different levels of computational complexity. The experimental evaluation compares different models for predicting similarities and rankings in case retrieval scenarios. The results indicate the potential of our ranking-based approach in significantly improving retrieval quality with only small impacts on the performance.
面向过程的案例推理中基于排序的图神经网络案例检索
在面向过程的基于案例的推理(POCBR)中,从以前解决问题的情况中检索经验知识,以便在即将出现的问题中重用。在以前的工作中,检索任务是通过使用图神经网络(gnn)来学习工作流的相似性,进而用于查找与查询工作流相似的工作流。本文的动机是这些gnn主要用于预测两个工作流(查询和案例)之间的相似性,而CBR中的检索仅关注案例库中最相似工作流的排名。因此,我们提出了一种新的方法,通过学习排序(LTR)组件来扩展基于gnn的工作流检索,其中预测案例之间的排名而不是相似性。本文的主要贡献是解决了以前工作中gnn的变化,这样他们的模型架构就可以预测与查询相关的情况之间的成对偏好,并且可以使用标记偏好数据进行训练。为了将这些偏好转化为案例排名,我们还描述了具有不同计算复杂度的排名聚合方法。实验评估比较了案例检索场景中预测相似性和排名的不同模型。结果表明,我们基于排名的方法在显著提高检索质量而对性能影响很小的情况下具有潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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