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An optimal formulation of feature weight allocation for CBR using machine learning techniques

机译:使用机器学习技术的CBR特征权重分配的最佳制定

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Case based reasoning (CBR) is frequently used for data classification problems, it can be considered as similarity based reasoning but equal importance are assigned to every attribute in the dataset. By identifying the features which are more important in the process of classification we can have better accuracy of CBR system. This paper proposes use of ranked attribute selection on the basis of their relevance. This attribute ranking is done by assigning different weights to different features. The results obtained after conducting experiments also indicated great improvement in the overall accuracy while classifying similar cases in CBR systems. The results are compared by using three famous ranking methods on three different datasets. The obtained results show that the proposed method is effective in terms of ranking the relevant features as compare to irrelevant features.
机译:基于案例的推理(CBR)经常用于数据分类问题,它可以被视为相似度的推理,但是将相同的重要性分配给DataSet中的每个属性。通过识别在分类过程中更重要的特征,我们可以具有更好的CBR系统准确性。本文提出了基于其相关性使用排名的属性选择。通过将不同的权重分配给不同的功能来完成此属性排名。在进行实验后获得的结果也表明整体准确性的巨大改善,同时对CBR系统进行了类似病例。通过在三个不同的数据集上使用三种着名的排名方法进行比较。所得结果表明,该方法在对与无关的特征进行比较的比较方面是有效的。

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