A double mixture autoregressive model of commodity prices

Q4 Mathematics
Gilbert Mbara
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引用次数: 1

Abstract

Abstract Many commodity prices exhibit boom-bust type behavior: sustained periods of price increases, followed by sudden sharp collapses. Since around the year 2000, booms have become longer while busts have tended to be short but steep, suggesting a structural change in growth and persistence. We model these features of the data using a novel double mixture autoregression with two independent hidden Markov chains. One chain tracks shifts in mean growth rates that account for rising and falling prices, while a second chain tracks changes in volatility and lag-structure. While the two chains are independent, the persistence of price growth depends on the volatility state, which allows the lag-structure to vary across variance regimes. Estimation requires a two-stage Fisherian approach. Initially, location-related parameters are estimated while suppressing the underlying autoregressive structure. These parameters are then held fixed while the optimal lag-structure across variance regimes is determined. We apply the model to three industrial commodities price time series: Crude Oil, Aluminum, and Rubber. We find that in each case, the model captures boom and bust cycles, with data from more recent periods exhibiting higher volatility, longer price rallies, and steeper collapses.
商品价格的双混合自回归模型
许多商品价格表现出盛衰型行为:价格持续上涨,随后突然急剧下跌。自2000年左右以来,繁荣变得更长,而萧条往往是短暂而陡峭的,这表明增长和持久性发生了结构性变化。我们使用一种新颖的双混合自回归模型来模拟数据的这些特征,该模型具有两个独立的隐马尔可夫链。一条链追踪反映价格涨跌的平均增长率的变化,另一条链追踪波动性和滞后结构的变化。虽然这两条链是独立的,但价格增长的持久性取决于波动性状态,这使得滞后结构在不同的方差制度下变化。估计需要两阶段费雪方法。首先,估计与位置相关的参数,同时抑制潜在的自回归结构。这些参数然后保持固定,同时确定跨方差制度的最优滞后结构。我们将模型应用于原油、铝和橡胶这三种工业商品的价格时间序列。我们发现,在每种情况下,该模型都捕捉到了繁荣和萧条的周期,来自最近时期的数据显示出更高的波动性,更长的价格反弹和更陡峭的崩溃。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
1.00
自引率
0.00%
发文量
29
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