使用序列粒子方法和非参数分布在贝叶斯评估丰度和捕获量在年龄时间序列

I. Shevchenko
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引用次数: 0

摘要

我们描述了一种通过状态模型分析两个变量连接的时间序列的方法,以丰度和捕获数据集以及队列和捕获方程为例。首先,我们创建了一个具有参数的确定性模型,该模型最大限度地提高了给定数据和模型生成的数据的接近度。然后,我们利用初始数据和建模数据之间的差异获得队列随机模型。它们被表示为隐藏的贝叶斯模型,丰度作为状态,捕获量作为观察值。使用这些模型,可以评估后验密度,并计算平均值、偏差等。一般来说,由后验密度满足的递归方程没有解析解。我们描述了几种可用于密度近似的粒子方法,以及随后对其统计量的计算。所有生成的样本密度用非参数核密度估计平滑。Fishmetica包扩展了用于生成样本和权重的功能,用于过滤、预测和平滑密度。对一组测试数据进行了数值模拟。提出了该方法的几个扩展,包括与使用似然函数比较基本模型的附加选项。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using sequential particle methods and non-parametric distributions in bayesian evaluations of abundance and catch at age time series
We describe an approach to analyzing time series for two variables connected through the state model with abundance and catch data sets and cohort and catch equations as an example. First, we create a deterministic model with parameters that maximizes the closeness of given data and data generated by a model. Then, we obtain cohort stochastic models using the difference between initial and modeled data. They are represented as hidden Bayesian models with abundances as states and catches as observations. Using these models, one can evaluate posterior densities and calculate averages, deviations, etc. As a general matter, the recursive equations met by posterior densities have no analytic solutions. We describe several particle methods that may be used for density approximations and following calculations of their statistical quantities. All generated sample densities are smoothed with non-parametric kernel density estimation. The Fishmetica package was extended with functions for generating samples and weights for filtering, predicting and smoothing densities. Numerical simulations were conducted for a test data set. Several extensions of the approach are proposed including an additional option for comparing the basic models with the use of a likelihood function.
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