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Bayesian change-point modeling with segmented ARMA model

机译:带分段ARMA模型的贝叶斯变化点建模

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摘要

Time series segmentation aims to identify segment boundary points in a time series, and to determine the dynamical properties corresponding to each segment. To segment time series data, this article presents a Bayesian change-point model in which the data within segments follows an autoregressive moving average (ARMA) model. A prior distribution is defined for the number of change-points, their positions, segment means and error terms. To quantify uncertainty about the location of change-points, the resulting posterior probability distributions are sampled using the Generalized Gibbs sampler Markov chain Monte Carlo technique. This methodology is illustrated by applying it to simulated data and to real data known as the well-log time series data. This well-log data records the measurements of nuclear magnetic response of underground rocks during the drilling of a well. Our approach has high sensitivity, and detects a larger number of change-points than have been identified by comparable methods in the existing literature.
机译:时间序列分段的目的是识别时间序列中的分段边界点,并确定与每个分段相对应的动力学特性。为了细分时间序列数据,本文提出了一种贝叶斯变化点模型,其中,细分中的数据遵循自回归移动平均(ARMA)模型。为更改点的数量,其位置,段均值和错误项定义了先验分布。为了量化有关变化点位置的不确定性,使用通用Gibbs采样器Markov链蒙特卡洛技术对所得后验概率分布进行采样。通过将其应用于模拟数据和称为测井时间序列数据的实际数据来说明此方法。该测井数据记录了在钻井过程中地下岩石的核磁响应的测量值。我们的方法具有很高的灵敏度,并且可以检测到比现有文献中的可比方法所识别的变化点更多的变化点。

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