不同贝叶斯分类器模型的比较研究

Yong-Hua Cai
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引用次数: 5

摘要

贝叶斯分类器模型是基于贝叶斯理论的一类概率分类器。与决策树和神经网络等更复杂的分类算法相比,贝叶斯分类器在许多实际应用中都能提供很好的分类精度。在本文中,我们对这七种方法进行了方法学上的比较,结果表明每种方法之间存在很大的相互差异,没有一种方法普遍更好。本文对这7种算法的时间复杂度和分类精度进行了比较。
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The comparative study of different Bayesian classifier models
The Bayesian classifier model is a class of probability classifier based on the Bayesian theory. Compared with more sophisticated classification algorithms, such as decision tree and neural network, Bayesian classifier can offer very good classification accuracy in many practical applications. In this article, we perform a methodologically sound comparison of the seven methods, which shows large mutual differences of each of the methods and no single method being universally better. The comparisons that are carried out in this paper include time complexity and classification accuracy of these seven algorithms.
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