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Online Density Estimation over Streaming Data: A Local Adaptive Solution

机译:流数据在线密度估计:一种本地自适应解决方案

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Accurate online density estimation is crucial to numerous applications that are prevalent with streaming data. Existing online approaches for density estimation somewhat lack prompt adaptability when facing drifting concepts, resulting in delayed or even deteriorated approximations. To alleviate this issue, in this work, we propose an adaptive local online density estimator, i.e. ALoKDE, for real-time density estimation on data streams. Two strategies, a statistical test for concept drift detection and an adaptive weighted local online density estimation when the drift occurs, are tightly integrated into ALoKDE. Specifically, using a weighted form, ALoKDE seeks to provide an unbiased estimation by factoring in the statistical hallmarks of the latest learned distribution and any potential distributional changes that could be introduced by each incoming instance. To ensure a high-precision estimate, ALoKDE integrates three key components: local sampling, optimal bandwidth selection at a temporal basis, and adaptive weighting factor determination. We further analyze the asymptotic properties of ALoKDE and derive its theoretical error bounds regarding bias, variance, MSE and MISE. Extensive comparative studies on various artificial and real-world streaming data demonstrate the efficacy of ALoKDE in online density estimation and real-time classification.
机译:准确的在线密度估算对于具有流数据普遍存在的许多应用程序至关重要。在面对漂移概念时,存在在密度估计的现有在线方法缺乏迅速的适应性,从而导致延迟甚至劣化近似。为了减轻这个问题,在这项工作中,我们提出了一种自适应本地在线密度估计器,即Alokde,用于数据流的实时密度估计。两种策略,概念漂移检测的统计测试和漂移发生时的自适应加权本地在线密度估计,被紧密地集成到Alokde中。具体地,使用加权形式,Alokde寻求通过考虑最新学习分发的统计标志和任何可以由每个传入实例引入的任何潜在分布变化的统计标志提供无偏估计。为确保高精度估计,Alokde集成了三个关键组件:局部采样,以时间为基础,最佳带宽选择,以及自适应加权因子确定。我们进一步分析了Alokde的渐近性质,并得出了关于偏差,方差,MSE和Mise的理论误差范围。关于各种人工和现实世界流媒体数据的广泛比较研究证明了ALOKDE在在线密度估计和实时分类中的功效。

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