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RNBL-MN: A Recursive Naive Bayes Learner for Sequence Classification

机译:RNBL-MN:用于序列分类的递归朴素贝叶斯学习器

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摘要

Naive Bayes (NB) classifier relies on the assumption that the instances in each class can be described by a single generative model. This assumption can be restrictive in many real world classification tasks. We describe RNBL-MN, which relaxes this assumption by constructing a tree of Naive Bayes classifiers for sequence classification, where each individual NB classifier in the tree is based on a multinomial event model (one for each class at each node in the tree). In our experiments on protein sequence and text classification tasks, we observe that RNBL-MN substantially outperforms NB classifier. Furthermore, our experiments show that RNBL-MN outperforms C4.5 decision tree learner (using tests on sequence composition statistics as the splitting criterion) and yields accuracies that are comparable to those of support vector machines (SVM) using similar information.
机译:朴素贝叶斯(NB)分类器依赖于这样的假设,即每个类中的实例都可以由单个生成模型来描述。该假设在许多现实世界的分类任务中可能是限制性的。我们描述了RNBL-MN,它通过构造用于序列分类的朴素贝叶斯分类器树来放松此假设,其中树中的每个单独的NB分类器都基于多项式事件模型(树中每个节点的每个类一个)。在蛋白质序列和文本分类任务的实验中,我们观察到RNBL-MN的性能明显优于NB分类器。此外,我们的实验表明,RNBL-MN的性能优于C4.5决策树学习器(使用序列组成统计数据的测试作为划分标准),并且使用类似信息得出的结果可与支持向量机(SVM)相比。

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