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A novel Naive Bayes model: Packaged Hidden Naive Bayes

机译:一部小说朴素贝叶斯型号:包装隐藏的天真贝叶斯

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摘要

Naive Bayes classifier has good performance on many datasets, however, the performance is very poor on some datasets which have a strong correlation between attributes due to the conditional independence assumption is not always true in the real world. In the latest Hidden Naive Bayes (HNB) algorithm, each attribute corresponds to a hidden parent which combines the influences of all other attributes. Compared to other Bayesian algorithms, its performance is significantly improved, but too much test time on high-dimensional datasets cost. In this paper, to find the optimal combination between Naive Bayes and HNB, a novel model Packaged Hidden Naive Bayes (PHNB), which the number of attributes in the hidden parent is controlled through packaging idea, is proposed. Our experiments show that compared to HNB, PHNB significantly reduces the test time on many high-dimensional datasets, and has higher accuracy on some particular datasets.
机译:朴素的贝叶斯分类器在许多数据集上具有良好的性能,但是,在某些数据集上的性能非常差,这在属性之间存在强烈关联,由于条件独立假设在现实世界中并不总是如此。在最新隐藏的天真贝叶斯(HNB)算法中,每个属性对应于一个隐藏的父级,它结合了所有其他属性的影响。与其他贝叶斯算法相比,其性能显着提高,但在高维数据集成本上的测试时间太大。在本文中,为了找到朴素贝叶斯和HNB之间的最佳组合,这是一种新型模型包装隐藏的隐藏野贝雷斯(PHNB),提出了隐藏父级的属性数量通过包装思想来控制。我们的实验表明,与HNB相比,PHNB在许多高维数据集上显着降低了测试时间,并且对某些特定数据集具有更高的准确性。

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