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Collaborated Online Change-point Detection in Sparse Time Series for Online Advertising

机译:在线广告的稀疏时间序列中合作的在线更换点检测

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Online advertising delivers promotional marketing messages to consumers through online media. Advertisers often have the desire to optimize their advertising spending and strate-gics in order to maximize their KPI (Key performance indicator). To build accurate ad performance predictive models, it is crucial to detect the change-points in historical data and therefore apply appropriate strategies to address the data pattern shift. However, with sparse data, which is common in online advertising, online change-point detection often becomes challenging. We propose a novel collaborated online change-point detection method in this paper. Through efficiently leveraging and coordinating with auxiliary time series, it can quickly and accurately identify the change-points in sparse and noisy time series. Simulation studies as well as real data applications have demonstrated its effectiveness in detecting change-point in sparse time series and therefore improving the accuracy of predictive models.
机译:在线广告通过在线媒体向消费者提供促销营销信息。广告商常常有希望优化他们的广告支出和水平GICS,以最大限度地提高其KPI(关键绩效指标)。为了构建准确的广告性能预测模型,对历史数据中的变化点至关重要,因此适用于解决数据模式转移的适当策略。然而,对于在线广告中常见的稀疏数据,在线更改点检测通常变得具有挑战性。我们提出了一种在本文中的一部新颖的合作的在线变更点检测方法。通过有效地利用和协调辅助时间序列,它可以快速准确地识别稀疏和嘈杂的时间序列中的变化点。仿真研究以及真实数据应用已经证明了其在稀疏时间序列中检测变化点的有效性,从而提高了预测模型的准确性。

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