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Concept Drift Detection Using Online Histogram-Based Bayesian Classifiers

机译:概念漂移检测使用基于在线直方图的贝叶斯分类器

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In this paper, we present a novel algorithm that performs online histogram-based classification, i.e., specifically designed for the case when the data is dynamic and its distribution is non-stationary. Our method, called the Online Histogram-based Naive Bayes Classifier (OHNBC) involves a statistical classifier based on the well-established Bayesian theory, but which makes some assumptions with respect to the independence of the attributes. Moreover, this classifier generates a prediction model using uni-dimensional histograms, whose segments or buckets are fixed in terms of their cardinalities but dynamic in terms of their widths. Additionally, our algorithm invokes the principles of information theory to automatically identify changes in the performance of the classifier, and consequently, forces the reconstruction of the classification model in run-time as and when it is needed. These properties have been confirmed experimentally over numerous data sets (In the interest of space and brevity, we present here only a subset of the available results. More detailed results are found in [2].) from different domains. As far as we know, our histogram-based Naive Bayes classification paradigm for time-varying datasets is both novel and of a pioneering sort.
机译:在本文中,我们提出了一种新的算法,该算法执行基于在线直方图的分类,即,专门为数据而设计的情况,其分布是非静止的。我们的方法称为基于在线直方图的Naive Bayes分类器(OHNBC)涉及基于良好建立的贝叶斯理论的统计分类器,但这对属性的独立性作出了一些假设。此外,该分类器使用单维直方图生成预测模型,其段或铲斗在其基数方面固定,但在其宽度方面是动态的。此外,我们的算法调用信息理论的原则,以自动识别分类器性能的变化,从而强制在需要时在运行时重建分类模型。这些属性已经通过实验在许多数据集上进行了确认(符合空间和简洁性,我们在这里仅存在可用结果的子集。从不同域中的[2]中找到了更详细的结果。据我们所知,基于直方图的Naive Bayes分类范例用于时变数据集是新颖的和开创性的排序。

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