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首页> 外文期刊>European Journal of Operational Research >A Tabu Search heuristic procedure in Markov chain bootstrapping
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A Tabu Search heuristic procedure in Markov chain bootstrapping

机译:马尔可夫链自举中的禁忌搜索启发式过程

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摘要

Markov chain theory is proving to be a powerful approach to bootstrap finite states processes, especially where time dependence is non linear. In this work we extend such approach to bootstrap discrete time continuous-valued processes. To this purpose we solve a minimization problem to partition the state space of a continuous-valued process into a finite number of intervals or unions of intervals (i.e. its states) and identify the time lags which provide "memory" to the process. A distance is used as objective function to stimulate the clustering of the states having similar transition probabilities. The problem of the exploding number of alternative partitions in the solution space (which grows with the number of states and the order of the Markov chain) is addressed through a Tabu Search algorithm. The method is applied to bootstrap the series of the German and Spanish electricity prices. The analysis of the results confirms the good consistency properties of the method we propose.
机译:事实证明,马尔可夫链理论是引导有限状态过程的有力方法,尤其是在时间依赖性是非线性的情况下。在这项工作中,我们将这种方法扩展为引导离散时间连续值过程。为此,我们解决了最小化问题,将连续值过程的状态空间划分为有限数量的间隔或间隔的并集(即其状态),并确定了为过程提供“内存”的时滞。距离用作目标函数,以激发具有相似过渡概率的状态的聚类。通过禁忌搜索算法解决了解决方案空间中替代分区数量激增的问题(随着状态数和马尔可夫链的阶数增长)。该方法适用于引导德国和西班牙的电价系列。结果分析证实了我们提出的方法的良好一致性。

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