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Adaptation and Recovery Stages for Case-Based Reasoning Systems Using Bayesian Estimation and Density Estimation with Nearest Neighbors

机译:基于贝叶斯估计和最近邻密度估计的案例推理系统的适应和恢复阶段

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When searching for better solutions that improve the medical diagnosis accuracy, Case-Based reasoning systems (CBR) arise as a good option. This article seeks to improve these systems through the use of parametric and non-parametric probability estimation methods, particularly, at their recovery and adaptation stages. To this end, a set of experiments are conducted with two essentially different, medical databases (Cardiotocography and Cleveland databases), in order to find good parametric and non-parametric estimators. The results are remarkable as a high accuracy rate is achieved when using explored approaches: Naive Bayes and Nearest Neighbors (K-NN) estimators. In addition, a decrease on the involved processing time is reached, which suggests that proposed estimators incorporated into the recovery and adaptation stage becomes suitable for CBR systems, especially when dealing with support for medical diagnosis applications.
机译:当寻找更好的解决方案以提高医疗诊断的准确性时,基于案例的推理系统(CBR)成为一个不错的选择。本文力求通过使用参数和非参数概率估计方法来改进这些系统,尤其是在其恢复和适应阶段。为此,使用两个本质上不同的医学数据库(心动描记术和克利夫兰数据库)进行了一组实验,以便找到良好的参数和非参数估计量。当使用以下探索的方法时,可以达到很高的准确率:朴素贝叶斯和最近邻(K-NN)估计器,结果令人瞩目。另外,所涉及的处理时间减少了,这表明并入恢复和适应阶段的拟议估计量变得适用于CBR系统,尤其是在处理医学诊断应用程序支持时。

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