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Iterative Naive Bayes

机译:迭代朴素贝叶斯

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摘要

Navie Bayes is a well known and studied algorithm both in statistics and machine learning. Bayesian learning algorithms represent each concept with a single probabilistic summary. In this paper we present an iterative approach to naive Bayes. The iterative Bayes begins with the distribution tables built by the naive Bayes. Those tables are iteratively updated in order to improve the probability class distribution associated with each training example. Experimental evaluation of Iterative Bayes on 25 benchmark datasets shows consistent gains in a accuracy. An interesting side effect of our algorithm is that it shows to be robust to attribute dependencies.
机译:Navie Bayes是统计和机器学习中的知名和研究算法。贝叶斯学习算法代表了每个概念的单一概率摘要。在本文中,我们展示了朴素贝叶斯的迭代方法。迭代贝叶斯始于天真贝叶斯建造的分销表。迭代地更新这些表以改善与每个训练示例相关的概率类分布。迭代贝叶斯对25个基准数据集的实验评估显示了准确性的一致收益。我们算法的一个有趣的副作用是它显示到属性依赖性的强大。

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