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首页> 外文期刊>Applied Intelligence: The International Journal of Artificial Intelligence, Neural Networks, and Complex Problem-Solving Technologies >A new quantile tracking algorithm using a generalized exponentially weighted average of observations
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A new quantile tracking algorithm using a generalized exponentially weighted average of observations

机译:一种新的定量位跟踪算法,使用广义指数加权平均值的观察

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The Exponentially Weighted Average (EWA) of observations is known to be a state-of-art estimator for tracking expectations of dynamically varying data stream distributions. However, how to devise an EWA estimator to track quantiles of data stream distributions is not obvious. In this paper, we present a lightweight quantile estimator using a generalized form of the EWA. To the best of our knowledge, this work represents the first reported quantile estimator of this form in the literature. An appealing property of the estimator is that the update step size is adjusted online proportionally to the difference between current observation and the current quantile estimate. Thus, if the estimator is off-track compared to the data stream, large steps will be taken to promptly get the estimator back on-track. The convergence of the estimator to the true quantile is proven using the theory of stochastic learning. Extensive experimental results using both synthetic and real-life data show that our estimator clearly outperforms legacy state-of-the-art quantile tracking estimators and achieves faster adaptivity in dynamic environments. The quantile estimator was further tested on real-life data where the objective is efficient in online control of indoor climate. We show that the estimator can be incorporated into a concept drift detector to efficiently decide when a machine learning model used to predict future indoor temperature should be retrained/updated.
机译:已知观察的指数加权平均(EWA)是用于跟踪动态变化的数据流分布的期望的最先进的估计器。但是,如何设计EWA估计器以跟踪数据流分布的量级并不明显。在本文中,我们使用EWA的广义形式提出了轻量级定量估计器。据我们所知,这项工作代表了文献中的第一个报告了这种形式的数量估计。估算器的吸引人属性是更新步长度在线在线调整到当前观察和当前定量估计之间的差异。因此,如果估计器与数据流相比,估算器是偏离轨道,则将采取大步骤以及时将估计器返回轨道。使用随机学习理论,证明了估计器对真正量子的融合。使用合成和现实生活数据的广泛的实验结果表明,我们的估计器显然优于旧式最先进的定量性跟踪估算,并在动态环境中实现更快的适应性。在现实数据上进一步测试了定量估算器,其中目标是在线控制室内气候的效率。我们表明估计器可以合并到概念漂移探测器中,以有效地确定用于预测未来室内温度的机器学习模型是否应被再培训/更新。

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