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首页> 外文期刊>Chaos >Beyond long memory in heart rate variability: An approach based on fractionally integrated autoregressive moving average time series models with conditional heteroscedasticity
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Beyond long memory in heart rate variability: An approach based on fractionally integrated autoregressive moving average time series models with conditional heteroscedasticity

机译:心率变异性超越长记忆:基于带条件异方差的分数积分自回归移动平均时间序列模型的方法

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摘要

Heart Rate Variability (HRV) series exhibit long memory and time-varying conditional variance. This work considers the Fractionally Integrated AutoRegressive Moving Average (ARFIMA) models with Generalized AutoRegressive Conditional Heteroscedastic (GARCH) errors. ARFIMA-GARCH models may be used to capture and remove long memory and estimate the conditional volatility in 24 h HRV recordings. The ARFIMA-GARCH approach is applied to fifteen long term HRV series available at Physionet, leading to the discrimination among normal individuals, heart failure patients, and patients with atrial fibrillation.
机译:心率变异性(HRV)系列具有较长的记忆力和随时间变化的条件方差。这项工作考虑具有广义自回归条件异方差(GARCH)误差的分数积分自回归移动平均(ARFIMA)模型。 ARFIMA-GARCH模型可用于捕获和删除长时间记忆,并估计24小时HRV记录中的条件波动性。 ARFIMA-GARCH方法应用于Physionet上的15个长期HRV系列,从而导致正常个体,心力衰竭患者和房颤患者之间的区别。

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