Although the applications of Non-Homogeneous Poisson Processes to model and study the threshold overshoots of interest in different time series of measurements have proven to provide good results, they needed to be complemented with an efficient and automatic diagnostic technique to establish the location of the change-points, which, when taken into account, make the estimated model fit poorly in regards of the information contained in the real model. For this reason, we propose a new method to solve the segmentation uncertainty of the time series of measurements, where the emission distribution of exceedances of a specific threshold is the focus of investigation. One of the great contributions of the present algorithm is that all the days that overflowed are candidates to be a change-point, so all the possible configurations of overflow days are the possible chromosomes, which will unite to have offspring. Under the heuristics of a genetic algorithm, the solution to the problem of finding such change points will be guaranteed to be non-local and the best possible one, reducing wasted machine time evaluating the least likely chromosomes to be a solution to the problem. The analytical evaluation technique will be by means of the Minimum Description Length (\textit{MDL}) as the objective function, which is the joint posterior distribution function of the parameters of each regime and the change points that determines them and which account as well for the influence of the presence of said times.
翻译:虽然对不同时间系列测量中引起兴趣的阈值过量点的模型和研究应用非热质 Poisson 进程已证明取得了良好结果,但它们需要辅之以一种高效和自动的诊断技术,以确定变化点的位置,如果考虑到这些变化点,估计模型在真实模型所载信息方面不适宜。为此原因,我们建议了一种新的方法,以解决测量时间序列的分解不确定性,在时间序列中,调查的焦点是某一具体阈值的超度排放分布,目前算法的巨大贡献之一是,所有溢出日期都是一个变化点,因此,所有可能的溢出日配置都是可能的染色体,这些染色体将结合成后代。根据基因算法的超常论,找到这些变化点的解决方案将保证不是局部的,而且尽可能是最佳的,减少评估最不可能发生的染色体的浪费时间,评估问题的一个解决办法是,目前的算法的一个重大贡献是,所有溢出日都是一个变现日的所有可能的染色体组合,这样可能的染色体。根据基因算法,找到这些变数的每个变数是最低值的分布时间和最低值的计算结果。