Carleton W Christopher, Campbell David, Collard Mark
Department of Archaeology, Simon Fraser University,University Drive, Burnaby, British Columbia, Canada.
Department of Statistics and Actuarial Science, Simon Fraser University,University Drive, Burnaby, British Columbia, Canada.
PLoS One. 2018 Jan 19;13(1):e0191055. doi: 10.1371/journal.pone.0191055. eCollection 2018.
Statistical time-series analysis has the potential to improve our understanding of human-environment interaction in deep time. However, radiocarbon dating-the most common chronometric technique in archaeological and palaeoenvironmental research-creates challenges for established statistical methods. The methods assume that observations in a time-series are precisely dated, but this assumption is often violated when calibrated radiocarbon dates are used because they usually have highly irregular uncertainties. As a result, it is unclear whether the methods can be reliably used on radiocarbon-dated time-series. With this in mind, we conducted a large simulation study to investigate the impact of chronological uncertainty on a potentially useful time-series method. The method is a type of regression involving a prediction algorithm called the Poisson Exponentially Weighted Moving Average (PEMWA). It is designed for use with count time-series data, which makes it applicable to a wide range of questions about human-environment interaction in deep time. Our simulations suggest that the PEWMA method can often correctly identify relationships between time-series despite chronological uncertainty. When two time-series are correlated with a coefficient of 0.25, the method is able to identify that relationship correctly 20-30% of the time, providing the time-series contain low noise levels. With correlations of around 0.5, it is capable of correctly identifying correlations despite chronological uncertainty more than 90% of the time. While further testing is desirable, these findings indicate that the method can be used to test hypotheses about long-term human-environment interaction with a reasonable degree of confidence.
统计时间序列分析有潜力增进我们对远古时期人类与环境相互作用的理解。然而,放射性碳测年法——考古学和古环境研究中最常用的计时技术——给既定的统计方法带来了挑战。这些方法假定时间序列中的观测值有精确的年代测定,但在校准后的放射性碳年代被使用时,这一假定常常被违背,因为它们通常具有极不规则的不确定性。因此,尚不清楚这些方法能否可靠地用于放射性碳测年的时间序列。考虑到这一点,我们进行了一项大型模拟研究,以探究年代不确定性对一种可能有用的时间序列方法的影响。该方法是一种回归类型,涉及一种称为泊松指数加权移动平均(PEWMA)的预测算法。它专为计数时间序列数据设计,这使其适用于有关远古时期人类与环境相互作用的广泛问题。我们的模拟表明,尽管存在年代不确定性,PEWMA方法通常仍能正确识别时间序列之间的关系。当两个时间序列的相关系数为0.25时,若时间序列噪声水平较低,该方法能够在20% - 30%的时间内正确识别这种关系。当相关系数约为0.5时,尽管存在年代不确定性,它能够在超过90%的时间内正确识别相关性。虽然需要进一步测试,但这些发现表明该方法可用于以合理程度的置信度检验有关长期人类与环境相互作用的假设。