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Effects of drift and noise on the optimal sliding window size for data stream regression models

机译:漂移与噪声对数据流回归模型最佳滑动窗口大小的影响

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摘要

The analysis of non stationary data streams requires a continuous adaption of the model to the relevant most recent data. This requires that changes in the data stream must be distinguished from noise. Many approaches are based on heuristic adaptation schemes. We analyze simple regression models to understand the joint effects of noise and concept drift and derive the optimal sliding window size for the regression models. Our theoretical analysis and simulations show that a near optimal window size can be crucial. Our models can be used as benchmarks for other models to see how they cope with noise and drift.
机译:非静止数据流的分析需要将模型的连续调整到相关的最新数据。这要求数据流中的变化必须与噪声区分开。许多方法都是基于启发式适应方案。我们分析简单的回归模型,了解噪声和概念漂移的联合影响,并导出回归模型的最佳滑动窗口大小。我们的理论分析和仿真表明,近最佳窗口尺寸至关重要。我们的模型可用作其他模型的基准,以了解它们如何应对噪音和漂移。

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