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首页> 外文期刊>Annals of Operations Research >A mixed integer linear program to compress transition probability matrices in Markov chain bootstrapping
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A mixed integer linear program to compress transition probability matrices in Markov chain bootstrapping

机译:混合整数线性程序,用于压缩马尔可夫链自举中的转移概率矩阵

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摘要

Bootstrapping time series is one of the most acknowledged tools to study the statistical properties of an evolutive phenomenon. An important class of bootstrapping methods is based on the assumption that the sampled phenomenon evolves according to a Markov chain. This assumption does not apply when the process takes values in a continuous set, as it frequently happens with time series related to economic and financial phenomena. In this paper we apply the Markov chain theory for bootstrapping continuous-valued processes, starting from a suitable discretization of the support that provides the state space of a Markov chain of order . Even for small k, the number of rows of the transition probability matrix is generally too large and, in many practical cases, it may incorporate much more information than it is really required to replicate the phenomenon satisfactorily. The paper aims to study the problem of compressing the transition probability matrix while preserving the "law" characterising the process that generates the observed time series, in order to obtain bootstrapped series that maintain the typical features of the observed time series. For this purpose, we formulate a partitioning problem of the set of rows of such a matrix and propose a mixed integer linear program specifically tailored for this particular problem. We also provide an empirical analysis by applying our model to the time series of Spanish and German electricity prices, and we show that, in these medium size real-life instances, bootstrapped time series reproduce the typical features of the ones under observation.
机译:自举时间序列是研究进化现象统计特性的最著名工具之一。一类重要的引导方法是基于以下假设:采样现象根据马尔可夫链演化。当过程取连续值时,此假设不适用,因为它经常发生在与经济和金融现象相关的时间序列中。在本文中,我们从支持的适当离散化开始,应用马尔可夫链理论来引导连续值过程,该离散化提供了有序马尔可夫链的状态空间。即使对于较小的k,过渡概率矩阵的行数通常也太大,并且在许多实际情况下,它可能包含的信息要比令人满意地复制现象所需的信息多得多。本文旨在研究在保留表示生成观测时间序列的过程的“定律”的“定律”的同时压缩过渡概率矩阵的问题,以获得保持观测时间序列典型特征的自举序列。为此,我们制定了此类矩阵的行集的分区问题,并提出了专门针对此特定问题而设计的混合整数线性程序。我们还通过将模型应用于西班牙和德国电价的时间序列来提供实证分析,并且我们表明,在这些中等大小的实际情况下,自举时间序列再现了所观察时间序列的典型特征。

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