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Interday Forecasting and Intraday Updating of Call Center Arrivals

机译:呼叫中心到达日间预报和日内更新

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摘要

Accurate forecasting of call arrivals is critical for staffing and scheduling of a telephone call center. We develop methods for interday and dynamic intraday forecasting of incoming call volumes. Our approach is to treat the intraday call volume profiles as a high-dimensional vector time series. We propose first to reduce the dimensionality by singular value decomposition of the matrix of historical intraday profiles and then to apply time series and regression techniques. Our approach takes into account both interday (or day-to-day) dynamics and intraday (or within-day) patterns of call arrivals. Distributional forecasts are also developed. The proposed methods are data driven, appear to be robust against model assumptions in our simulation studies, and are shown to be very competitive in out-of-sample forecast comparisons using two real data sets. Our methods are computationally fast; it is therefore feasible to use them for real-time dynamic forecasting.
机译:准确预测呼叫的到达时间对于电话呼叫中心的人员配备和日程安排至关重要。我们开发用于日间和动态日内来电量预测的方法。我们的方法是将日内通话量配置文件视为高维向量时间序列。我们建议首先通过历史日内剖面矩阵的奇异值分解来减少维数,然后应用时间序列和回归技术。我们的方法既考虑了一天中(或每天)的动态变化,又考虑了一天之内(或一天之内)的呼叫到达模式。还制定了分布预测。所提出的方法是数据驱动的,在我们的模拟研究中似乎对模型假设具有鲁棒性,并且在使用两个真实数据集的样本外预测比较中显示出非常好的竞争力。我们的方法计算速度快;因此,将它们用于实时动态预测是可行的。

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