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FLEA-CBR - A Flexible Alternative to the Classic 4R Cycle of Case-Based Reasoning

机译:FLEA-CBR-基于案例推理的经典4R周期的灵活替代方案

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This paper introduces FLEA-CBR, an alternative approach for composition of case-based reasoning (CBR) processes. FLEA-CBR extends the original 4R (Retrieve, Reuse, Revise, Retain) CBR cycle with a flexible order of execution of its main steps. Additionally, a number of combinatorial features for a more comprehensive and enhanced composition can be used. FLEA is an acronym for Find, Learn, Explain, Adapt and was initially created to solve the restrictiveness issues of case-based design (CBD) where many existing approaches consist of the retrieval phase only. However, the methodology can be transferred to other CBR domains too, as its flexibility allows for convenient adaptation to the given requirements and constraints. The main advantages of FLEA-CBR over the classic 4R cycle are the ability to combine and activate the main steps in desired or arbitrary order and the use of the explainability feature together with each of the steps as well as a standalone component, providing a deep integration of Explainable AI (XAI) into the CBR cycle. Besides the CBR methods, the methodology was also conceptualized to make use of the currently popular machine learning methods, such as recurrent and convolutional neural networks (RNN, ConvNet) or general adversarial nets (GAN), for all of its steps. It is also compatible with different case representations, such as graph- or attribute-based. Being a template for a distributed software architecture, FLEA-CBR relies on the autonomy of implemented components, making the methodology more stable and suitable for use in modern container-based environments. Along with the detailed description of the methodology, this paper also provides two examples of its usage: for the domain of CBR-based creativity and library service optimization.
机译:本文介绍了FLEA-CBR,这是一种基于案例的推理(CBR)流程的替代方法。 FLEA-CBR通过灵活执行其主要步骤的顺序来扩展原始的4R(检索,重用,修订,保留)CBR周期。此外,可以使用许多组合功能来实现更全面和增强的合成。 FLEA是Find,Learn,Explain,Adapt的首字母缩写,最初创建是为了解决基于案例的设计(CBD)的局限性问题,在该案例中,许多现有方法仅包含检索阶段。但是,该方法也可以转移到其他CBR域,因为它的灵活性允许方便地适应给定的要求和约束。与经典的4R循环相比,FLEA-CBR的主要优点是能够按所需顺序或任意顺序组合和激活主要步骤,并且可解释性功能与每个步骤以及独立组件一起使用,从而提供了深入的信息将可解释的AI(XAI)集成到CBR周期中。除了CBR方法之外,该方法的所有步骤还被概念化为利用当前流行的机器学习方法,例如递归和卷积神经网络(RNN,ConvNet)或通用对抗网(GAN)。它也与不同的案例表示兼容,例如基于图形或基于属性的案例。作为分布式软件体系结构的模板,FLEA-CBR依赖于已实现组件的自主性,从而使该方法更加稳定并适合在基于现代容器的环境中使用。除了对该方法的详细说明之外,本文还提供了两个示例,以说明基于CBR的创造力和图书馆服务优化的用法。

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