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Naive Bayes Associative Classification of Mammographic Data

机译:朴素的贝叶斯联想分类乳房X Xmpoare数据

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In this paper we focus on a new mode; named ANB (Associative Naive Bayes) model. ANB model extend the modeling flexibility of well known Naive Bayes (NB) models by introducing rules generated by associative classifier. The model consists of two layer s: an input layer and an internal layer. We propose an associative classifier algorithm (AAC), relaxing the condition of independence of attributes in NB, for generating rules and learning network parameter and a simple algorithm for training ANB models in the context of classification. Experimental results show that the learned models can significantly improve classification accuracy as compared to NB.
机译:在本文中,我们专注于新模式;命名为ANB(联想的天真贝叶斯)模型。 ANB模型通过引入关联分类器生成的规则来扩展众所周知的天真贝叶斯(NB)模型的建模灵活性。该模型由两层S:输入层和内部层组成。我们提出了一种关联分类器算法(AAC),放松NB中属性的独立性的条件,用于生成规则和学习网络参数以及在分类上下文中训练ANB模型的简单算法。实验结果表明,与NB相比,学习模型可以显着提高分类精度。

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