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Approximating multivariate Markov chains for bootstrapping through contiguous partitions

机译:近似多元马尔可夫链,用于通过连续分区进行自举

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This paper extends Markov chain bootstrapping to the case of multivariate continuous-valued stochastic processes. To this purpose, we follow the approach of searching an optimal partition of the state space of an observed (multivariate) time series. The optimization problem is based on a distance indicator calculated on the transition probabilities of the Markov chain. Such criterion aims at grouping those states exhibiting similar transition probabilities. A second methodological contribution is represented by the addition of a contiguity constraint, which is introduced to force the states to group only if they have "near" values (in the state space). This requirement meets two important aspects: first, it allows a more intuitive interpretation of the results; second, it contributes to control the complexity of the problem, which explodes with the cardinality of the states. The computational complexity of the optimization problem is also addressed through the introduction of a novel Tabu Search algorithm, which improves both the quality of the solution found and the computing times with respect to a similar heuristic previously advanced in the literature. The bootstrap method is applied to two empirical cases: the bivariate process of prices and volumes of electricity in the Spanish market; the trivariate process composed of prices and volumes of a US company stock (McDonald's) and prices of the Dow Jones Industrial Average index. In addition, the method is compared with two other well-established bootstrap methods. The results show the good distributional properties of the present proposal, as well as a clear superiority in reproducing the dependence among the data.
机译:本文将马尔可夫链自举扩展到多元连续值随机过程的情况。为此,我们遵循的方法是搜索观察到的(多元)时间序列的状态空间的最佳分区。最优化问题基于基于马尔可夫链的转移概率计算的距离指标。这样的标准旨在将表现出相似过渡概率的那些状态进行分组。第二种方法学贡献是通过添加连续性约束来表示的,该约束被引入以强制状态仅在状态值接近(在状态空间中)时才进行分组。该要求满足两个重要方面:首先,它允许对结果进行更直观的解释;其次,它有助于控制问题的复杂性,并随着状态的基数激增。通过引入一种新颖的禁忌搜索算法也可以解决优化问题的计算复杂性,相对于以前文献中提出的类似启发式算法,该算法可以提高找到的解决方案的质量和计算时间。自举法适用于两个经验案例:西班牙市场中电价和电量的二元过程;三变量过程由美国公司股票(麦当劳)的价格和数量以及道琼斯工业平均指数的价格组成。此外,将该方法与其他两个公认的自举方法进行了比较。结果表明,本提案具有良好的分布特性,并且在再现数据之间的依赖性方面具有明显的优势。

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