拟合渔业数据的时间序列模型以确定年龄

IF 1 Q3 STATISTICS & PROBABILITY
Kathleen S. Kirch, Norou Diawara, Cynthia M. Jones
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引用次数: 0

摘要

政府机构确定鱼类准确年龄的能力对渔业管理很重要。准确的老龄化允许使用最可靠的基于年龄的模型来支持可持续性和最大限度地提高经济效益。确定年龄依赖于通过评估鱼耳骨模式中积累的物质来验证假定的年度标记,通常是通过边际增量分析。这些模式通常是锯齿波的形状,每年的吸积突然下降,形成每年的波段,通常是定性的。研究人员对建立边际增量模型来验证这些标记实际上是每年发生的表现出了浓厚的兴趣。然而,寻找预测这种锯齿波模式的最佳模型一直具有挑战性。我们提出了三种新的时间序列模型来验证年锯齿波数据的存在性:自回归积分移动平均(ARIMA)、未观测分量和copula。这些方法有望使人们能够确定吸积的年模式。ARIMA和未观测分量解释了观测值和误差的依赖性,而copula包含了各种边际分布和依赖性结构。未观测成分模型的结果最好(AIC: - 123.7, MSE: 0.00626),其次是时间序列模型(AIC: - 117.292, MSE: 0.0081),其次是copula模型(AIC: - 96.62, Kendall 's tau: - 0.5503)。由于数据集的完整性,未观察到的组件模型表现最好。总之,尽管这三种模型在约束条件和假设方面存在差异,但它们都是验证鱼耳骨年增长模式的有效工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fitting Time Series Models to Fisheries Data to Ascertain Age
The ability of government agencies to assign accurate ages of fish is important to fisheries management. Accurate ageing allows for most reliable age-based models to be used to support sustainability and maximize economic benefit. Assigning age relies on validating putative annual marks by evaluating accretional material laid down in patterns in fish ear bones, typically by marginal increment analysis. These patterns often take the shape of a sawtooth wave with an abrupt drop in accretion yearly to form an annual band and are typically validated qualitatively. Researchers have shown key interest in modeling marginal increments to verify the marks do, in fact, occur yearly. However, it has been challenging in finding the best model to predict this sawtooth wave pattern. We propose three new applications of time series models to validate the existence of the yearly sawtooth wave patterned data: autoregressive integrated moving average (ARIMA), unobserved component, and copula. These methods are expected to enable the identification of yearly patterns in accretion. ARIMA and unobserved components account for the dependence of observations and error, while copula incorporates a variety of marginal distributions and dependence structures. The unobserved component model produced the best results (AIC: −123.7, MSE 0.00626), followed by the time series model (AIC: −117.292, MSE: 0.0081), and then the copula model (AIC: −96.62, Kendall’s tau: −0.5503). The unobserved component model performed best due to the completeness of the dataset. In conclusion, all three models are effective tools to validate yearly accretional patterns in fish ear bones despite their differences in constraints and assumptions.
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来源期刊
Journal of Probability and Statistics
Journal of Probability and Statistics STATISTICS & PROBABILITY-
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14
审稿时长
18 weeks
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