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Time series models / Time series analysis / Statistical forecasting / Estimation theory / Computational neuroscience / Autoregressive integrated moving average / Autoregressive model / Forecasting / Exponential smoothing / Forecast error / Time series / Anomaly detection
Date: 2004-05-18 19:08:36
Time series models
Time series analysis
Statistical forecasting
Estimation theory
Computational neuroscience
Autoregressive integrated moving average
Autoregressive model
Forecasting
Exponential smoothing
Forecast error
Time series
Anomaly detection

Sketch-based Change Detection: Methods, Evaluation, and Applications Balachander Krishnamurthy, Subhabrata Sen, Yin Zhang AT&T Labs–Research; 180 Park Avenue Florham Park, NJ, USA

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