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Hybrid case-base maintenance approach for modeling large scale case-based reasoning systems

机译:基于案例的混合维护方法,用于基于案例的大规模推理系统建模

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Case-based reasoning (CBR) is a nature inspired paradigm of machine learning capable to continuously learn from the past experience. Each newly solved problem and its corresponding solution is retained in its central knowledge repository called case-base. Withρ the regular use of the CBR system, the case-base cardinality keeps on growing. It results into performance bottleneck as the number of comparisons of each new problem with the existing problems also increases with the case-base growth. To address this performance bottleneck, different case-base maintenance (CBM) strategies are used so that the growth of the case-base is controlled without compromising on the utility of knowledge maintained in the case-base. This research work presents a hybrid case-base maintenance approach which equally utilizes the benefits of case addition as well as case deletion strategies to maintain the case-base in online and offline modes respectively. The proposed maintenance method has been evaluated using a simulated model of autonomic forest fire application and its performance has been compared with the existing approaches on a large case-base of the simulated case study.
机译:基于案例的推理(CBR)是一种自然启发的机器学习范例,能够从过去的经验中不断学习。每个新解决的问题及其相应的解决方案都保留在其称为案例库的中央知识库中。随着CBR系统的常规使用,基于案例的基数不断增长。随着每个新问题与现有问题的比较次数也随着案例数的增长而增加,这会导致性能瓶颈。为了解决此性能瓶颈,使用了不同的案例库维护(CBM)策略,以便在不影响案例库中维护知识实用性的情况下控制案例库的增长。这项研究工作提出了一种基于案例的混合维护方法,该方法平均利用案例添加和案例删除策略的优势来分别以在线和离线模式维护案例库。已使用自主森林火灾应用的模拟模型对建议的维护方法进行了评估,并在模拟案例研究的大型案例基础上将其性能与现有方法进行了比较。

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