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首页> 外文期刊>Journal of Intelligent Information Systems >Case-base maintenance with multi-objective evolutionary algorithms
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Case-base maintenance with multi-objective evolutionary algorithms

机译:基于案例的多目标进化算法维护

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Case-Base Reasoning is a problem-solving methodology that uses old solved problems, called cases, to solve new problems. The case-base is the knowledge source where the cases are stored, and the amount of stored cases is critical to the problem-solving ability of the Case-Base Reasoning system. However, when the case-base has many cases, then performance problems arise due to the time needed to find those similar cases to the input problem. At this point, Case-Base Maintenance algorithms can be used to reduce the number of cases and maintain the accuracy of the Case-Base Reasoning system at the same time. Whereas Case-Base Maintenance algorithms typically use a particular heuristic to remove (or select) cases from the case-base, the resulting maintained case-base relies on the proportion of redundant and noisy cases that are present in the case-base, among other factors. That is, a particular Case-Base Maintenance algorithm is suitable for certain types of case-bases that share some indicators, such as redundancy and noise levels. In the present work, we consider Case-Base Maintenance as a multi-objective optimization problem, which is solved with a Multi-Objective Evolutionary Algorithm. To this end, a fitness function is introduced to measure three different objectives based on the Complexity Profile model. Our hypothesis is that the Multi-Objective Evolutionary Algorithm performing Case-Base Maintenance may be used in a wider set of case-bases, achieving a good balance between the reduction of cases and the problem-solving ability of the Case-Based Reasoning system. Finally, from a set of the experiments, our proposed Multi-Objective Evolutionary Algorithm performing Case-Base Maintenance shows regularly good results with different sets of case-bases with different proportion of redundant and noisy cases.
机译:基于案例的推理是一种解决问题的方法,它使用已解决的旧问题(称为案例)来解决新问题。案例库是存储案例的知识源,并且案例的存储量对于案例库推理系统的问题解决能力至关重要。但是,当案例库中有很多案例时,由于查找与输入问题类似的案例所需的时间,会出现性能问题。此时,可以使用案例库维护算法来减少案例数并同时保持案例库推理系统的准确性。案例库维护算法通常使用特定的启发式方法从案例库中删除(或选择)案例,而生成的维护案例库则依赖于案例库中存在的冗余案例和嘈杂案例的比例等。因素。也就是说,特定的案例库维护算法适用于共享某些指标(例如冗余和噪声级别)的某些类型的案例库。在当前的工作中,我们将基于案例的维护视为一个多目标优化问题,可以通过多目标进化算法解决。为此,引入了适应度函数以基于“复杂性概要文件”模型测量三个不同的目标。我们的假设是,执行案例库维护的多目标进化算法可以在更广泛的案例库中使用,从而在案例减少和案例推理系统的问题解决能力之间取得良好的平衡。最后,从一组实验中,我们提出的执行基于案例的维护的多目标进化算法,在不同数量的案例库中,具有不同比例的冗余案例和嘈杂案例,定期显示出良好的效果。

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