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Comparison of lazy Bayesian rule, and tree-augmented Bayesian learning

机译:懒惰贝叶斯规则和树增强贝叶斯学习的比较

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The naive Bayes classifier is widely used in interactive applications due to its computational efficiency, direct theoretical base, and competitive accuracy. However its attribute independence assumption can result in sub-optimal accuracy. A number of techniques have explored simple relaxations of the attribute independence assumption in order to increase accuracy. Among these, the lazy Bayesian rule (LBR) and the tree-augmented naive Bayes (TAN) have demonstrated strong prediction accuracy. However their relative performance has never been evaluated. The paper compares and contrasts these two techniques, finding that they have comparable accuracy and hence should be selected according to computational profile. LBR is desirable when small numbers of objects are to be classified while TAN is desirable when large numbers of objects are to be classified.
机译:朴素的贝叶斯分类器由于其计算效率,直接的理论基础和竞争准确性而广泛用于交互式应用程序。但是,其属性独立性假设可能导致次优精度。为了提高准确性,许多技术已经探索了对属性独立性假设的简单放松。其中,懒惰贝叶斯规则(LBR)和树增强的朴素贝叶斯(TAN)表现出很强的预测准确性。但是,它们的相对性能从未得到评估。本文比较并对比了这两种技术,发现它们具有相当的准确性,因此应根据计算配置文件进行选择。当要分类少量对象时,LBR是理想的;而当要分类大量对象时,TAN是理想的。

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