Parameter estimation of mixed two distributions based on EM algorithm and Nelder-Mead algorithm

Yuting Zhou, Xuemei Yang, Shiqi Liu, Junping Yin
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Abstract

As the amount of data increases, the data can obey either a single distribution, two distributions or even multiple distributions. If the distribution parameters and mixing ratio can be estimated for mixed data, it will be beneficial to further analysis and research in practical applications. In this paper, the EM algorithm and the Nelder-Mead(NM) algorithm are applied to the mixed parameter estimation of the two distributions, including mixing two identical distributions, mixing two different distributions, and comparing the EM algorithm and the Nelder-Mead algorithm to estimate the accuracy of the mixed distribution parameter estimation and its initial comparison. The stability of the value and other advantages and disadvantages. A large amount of data simulation results found that the EM algorithm has a good effect on the estimation of mixed distribution parameters, with high accuracy and fast convergence. The initial value selection has little effect on the results, and the preliminary derivation process is more complicated; the Nelder-Mead algorithm has a good effect on the estimation of mixed distribution parameters. High precision, fast convergence speed, the initial value selection has a greater impact on the result, the preliminary derivation process is relatively simple, and the application range is wide. When the initial value is close to the peak value of the real data, the parameter estimation effect is better; the two algorithms have poorer effect on the unimodal distribution parameter estimation for the data, and the bimodal distribution parameter estimation effect is better.
基于EM算法和Nelder-Mead算法的混合两种分布参数估计
随着数据量的增加,数据可以服从单一分布、两个分布甚至多个分布。如果能够估计出混合数据的分布参数和混合比例,将有利于在实际应用中进一步分析和研究。本文将EM算法和Nelder-Mead(NM)算法应用于两种分布的混合参数估计,包括混合两个相同的分布,混合两个不同的分布,并比较EM算法和Nelder-Mead算法来估计混合分布参数估计的精度及其初步比较。价值的稳定性等优点和缺点。大量的数据仿真结果表明,EM算法对混合分布参数的估计效果良好,精度高,收敛速度快。初值选取对结果影响不大,初步推导过程较为复杂;Nelder-Mead算法对混合分布参数的估计效果较好。精度高,收敛速度快,初值选择对结果影响较大,初步推导过程相对简单,应用范围广。当初始值接近真实数据的峰值时,参数估计效果较好;两种算法对数据的单峰分布参数估计效果较差,双峰分布参数估计效果较好。
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