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Time series analysis / Statistics / Time series models / Autoregressive conditional heteroskedasticity / Noise / CUSUM / Time series / Autoregressive conditional duration / Economic model / Autoregressive model / Parameter / ACD
Date: 2016-06-28 03:34:41
Time series analysis
Statistics
Time series models
Autoregressive conditional heteroskedasticity
Noise
CUSUM
Time series
Autoregressive conditional duration
Economic model
Autoregressive model
Parameter
ACD

Ann Inst Stat Math:621–637 DOIs10463x Parameter change test for autoregressive conditional duration models Sangyeol Lee1 · Haejune Oh1

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