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首页> 外文期刊>Knowledge and Data Engineering, IEEE Transactions on >Online and Non-Parametric Drift Detection Methods Based on Hoeffding’s Bounds
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Online and Non-Parametric Drift Detection Methods Based on Hoeffding’s Bounds

机译:基于霍夫定界的在线非参数漂移检测方法

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摘要

Incremental and online learning algorithms are more relevant in the data mining context because of the increasing necessity to process data streams. In this context, the target function may change over time, an inherent problem of online learning (known as concept drift). In order to handle concept drift regardless of the learning model, we propose new methods to monitor the performance metrics measured during the learning process, to trigger drift signals when a significant variation has been detected. To monitor this performance, we apply some probability inequalities that assume only independent, univariate and bounded random variables to obtain theoretical guarantees for the detection of such distributional changes. Some common restrictions for the online change detection as well as relevant types of change (abrupt and gradual) are considered. Two main approaches are proposed, the first one involves moving averages and is more suitable to detect abrupt changes. The second one follows a widespread intuitive idea to deal with gradual changes using weighted moving averages. The simplicity of the proposed methods, together with the computational efficiency make them very advantageous. We use a Naïve Bayes classifier and a Perceptron to evaluate the performance of the methods over synthetic and real data.
机译:增量和在线学习算法在数据挖掘环境中更加重要,因为处理数据流的必要性越来越高。在这种情况下,目标功能可能会随着时间而变化,这是在线学习的固有问题(称为概念漂移)。为了不考虑学习模型而处理概念漂移,我们提出了新的方法来监视在学习过程中测得的性能指标,并在检测到显着变化时触发漂移信号。为了监视此性能,我们应用了仅假定独立,单变量和有界随机变量的一些概率不等式,以获取检测此类分布变化的理论保证。考虑了一些在线更改检测的常见限制以及相关的更改类型(突然的和渐进的)。提出了两种主要方法,第一种涉及移动平均,更适合于检测突变。第二个方法遵循一个广泛的直观思想,即使用加权移动平均值来处理渐变。所提出的方法的简单性以及计算效率使它们非常有利。我们使用朴素的贝叶斯分类器和感知器来评估方法在综合数据和真实数据上的性能。

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