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Verified stochastic methods: Markov set-chains and dependency modeling of mean and standard deviation

机译:经过验证的随机方法:Markov集链以及均值和标准差的依赖关系建模

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Markov chains provide quite attractive features for simulating a system's behavior under consideration of uncertainties. However, their use is somewhat limited because of their deterministic transition matrices. Vague probabilistic information and imprecision appear in the modeling of real-life systems, thus causing difficulties in the pure probabilistic model set-up. Moreover, their accuracy suffers due to implementations on computers with floating point arithmetics. Our goal is to address these problems by extending the Dempster-Shafer with Intervals toolbox for MATLAB with novel verified algorithms for modeling that work with Markov chains with imprecise transition matrices, known as Markov set-chains. Additionally, in order to provide a statistical estimation tool that can handle imprecision to set up Markov chain models, we develop a new verified algorithm for computing relations between the mean and the standard deviation of fuzzy sets.
机译:马尔可夫链为考虑不确定因素的系统行为提供了非常诱人的功能。但是,由于它们的确定性转移矩阵,它们的使用在一定程度上受到限制。模糊的概率信息和不精确性出现在现实生活系统的建模中,因此在纯概率模型设置中造成了困难。此外,由于在具有浮点运算的计算机上的实现,其准确性也会受到影响。我们的目标是通过使用新颖的经过验证的建模算法扩展用于MATLAB的Dempster-Shafer with Intervals工具箱来解决这些问题,该算法可与带有不精确过渡矩阵的Markov链(称为Markov集链)一起使用。此外,为了提供可以处理不精确性的统计估计工具来建立马尔可夫链模型,我们开发了一种新的经过验证的算法,用于计算模糊集的均值和标准差之间的关系。

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