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A Bayesian estimation of a stochastic predator-prey model of economic fluctuations

机译:经济波动随机捕食物模型的贝叶斯估计

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In this paper, we develop a Bayesian framework for the empirical estimation of the parameters of one of the best known nonlinear models of the business cycle: The Marx-inspired model of a growth cycle introduced by R. M. Goodwin. The model predicts a series of closed cycles representing the dynamics of labor's share and the employment rate in the capitalist economy. The Bayesian framework is used to empirically estimate a modified Goodwin model. The original model is extended in two ways. First, we allow for exogenous periodic variations of the otherwise steady growth rates of the labor force and productivity per worker. Second, we allow for stochastic variations of those parameters. The resultant modified Goodwin model is a stochastic predator-prey model with periodic forcing. The model is then estimated using a newly developed Bayesian estimation method on data sets representing growth cycles in France and Italy during the years 1960-2005. Results show that inference of the parameters of the stochastic Goodwin model can be achieved. The comparison of the dynamics of the Goodwin model with the inferred values of parameters demonstrates quantitative agreement with the growth cycle empirical data.
机译:在本文中,我们开发了贝叶斯框架,用于经验估计业务周期的最着名的非线性模型之一的参数:R. M. Goodwin引入的生长周期的Marx Inspired模型。该模型预测了一系列封闭循环,代表了劳动力份额的动态和资本主义经济中的就业率。贝叶斯框架用于经验估计修改的善文模型。原始模型以两种方式扩展。首先,我们允许各工人劳动力和生产率的其他稳定增长率的外源周期性变化。其次,我们允许这些参数的随机变化。由此产生的修改的良好模型是具有周期性强制的随机捕食者 - 猎物模型。然后使用新开发的贝叶斯估计方法估计该模型在1960 - 2005年期间代表法国和意大利增长周期的数据集。结果表明,可以实现随机商业模型参数的推理。使用参数推断值的Goodwin模型的动态比较显示了与生长周期经验数据的定量协议。

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