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Bias Management of Bayesian Network Classifiers

机译:贝叶斯网络分类器的偏差管理

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摘要

The purpose of this paper is to describe an adaptive algorithm for improving the performance of Bayesian Network Classifiers (BNCs) in an on-line learning framework. Instead of choosing a priori a particular model class of BNCs, our adaptive algorithm scales up the model's complexity by gradually increasing the number of allowable dependencies among features. Starting with the simple Naive Bayes structure, it uses simple decision rules based on qualitative information about the performance's dynamics to decide when it makes sense to do the next move in the spectrum of feature dependencies and to start searching for a more complex classifier. Results in conducted experiments using the class of Dependence Bayesian Classifiers on three large datasets show that our algorithm is able to select a model with the appropriate complexity for the current amount of training data, thus balancing the computational cost of updating a model with the benefits of increasing in accuracy.
机译:本文的目的是描述一种用于在在线学习框架中提高贝叶斯网络分类器(BNC)性能的自适应算法。我们的自适应算法不是先验选择特定的BNC模型类,而是通过逐渐增加特征之间允许的依赖关系数量来扩大模型的复杂性。从简单的朴素贝叶斯结构开始,它基于有关性能动态的定性信息使用简单的决策规则,来决定何时进行有意义的功能依赖关系决定并开始寻找更复杂的分类器。使用依赖贝叶斯分类器的类别对三个大型数据集进行的实验结果表明,我们的算法能够为当前的训练数据量选择具有适当复杂度的模型,从而平衡了模型更新的计算成本和提高准确性。

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