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Hybrid of the scatter search, improved adaptive genetic, and expectation maximization algorithms for phase-type distribution fitting

机译:混合搜索,改进的自适应遗传算法和期望最大化算法,用于相类型分布拟合

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Although a large number of different methods for establishing the fitting parameters of PH distributions to data traces (PH fitting) have been developed, most of these approaches lack efficiency and numerical stability. In the present paper, a restricted class of PH distribution, called the hyper-Erlang distribution (HErD), is used to establish a maximum likelihood estimation model for data tracing. To fit the parameters, a hybrid algorithm based on the scatter search algorithm, the improved adaptive genetic algorithm, and the expectation maximization algorithm was developed to obtain the SS&IAGA-EM algorithm, which has a polynomial time complexity. In the data tracing tests for different distribution functions, the results obtained from SS&IAGA-EM and from the G-FIT, which is currently the best software for PH fitting, were compared. The present paper demonstrates that (a) the fitting effect of G-FIT does not positively correlate with the number of states of a HErD; thus, G-FIT repeatedly has to test the number of states manually to achieve a satisfactory fitting effect; (b) although setting range of the number of branches in G-FIT could mitigate the aforementioned deficiency, the combinations of the number of phases per branch grow exponentially; and (c) on SS&IAGA-EM can optimize the number of states and the number of phases automatically, aside from being slightly faster than G-FIT for a small number of branches and is significantly faster for a large number of branches. Moreover, in all tests, SS&IAGA-EM can achieve the same fitting quality as G-FIT for the same number of states.
机译:尽管已经开发了许多不同的方法来建立PH分布到数据迹线的拟合参数(PH拟合),但是这些方法大多数都缺乏效率和数值稳定性。在本文中,使用有限类的PH分布(称为超Erlang分布(HErD))来建立用于数据跟踪的最大似然估计模型。为了适应这些参数,开发了一种基于散点搜索算法,改进的自适应遗传算法和期望最大化算法的混合算法,以获得具有多项式时间复杂度的SS&IAGA-EM算法。在针对不同分布函数的数据跟踪测试中,比较了从SS&IAGA-EM和G-FIT(目前是最适合PH拟合的软件)获得的结果。本文证明了:(a)G-FIT的拟合效果与HErD状态数没有正相关;因此,G-FIT必须反复手动测试状态数才能获得令人满意的拟合效果; (b)尽管在G-FIT中设置分支数量的范围可以缓解上述不足,但每个分支的相数组合却呈指数增长; (c)在SS&IAGA-EM上,可以自动优化状态数和相数,除了在少数分支中比G-FIT稍快时,在大量分支中则要快得多。此外,在所有测试中,SS&IAGA-EM在相同数量的州均可达到与G-FIT相同的拟合质量。

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