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Multivariate mixtures of Erlangs for density estimation under censoring

机译:审查下密度估计的Erlangs多元混合

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摘要

Multivariate mixtures of Erlang distributions form a versatile, yet analytically tractable, class of distributions making them suitable for multivariate density estimation. We present a flexible and effective fitting procedure for multivariate mixtures of Erlangs, which iteratively uses the EM algorithm, by introducing a computationally efficient initialization and adjustment strategy for the shape parameter vectors. We furthermore extend the EMalgorithm for multivariatemixtures of Erlangs to be able to deal with randomly censored and fixed truncated data. The effectiveness of the proposed algorithm is demonstrated on simulated as well as real data sets.
机译:Erlang分布的多元混合形成了通用的,但分析上易于处理的一类分布,使其适合于多元密度估计。通过为形状参数向量引入计算有效的初始化和调整策略,我们为Erlangs的多元混合物提供了灵活而有效的拟合过程,该过程迭代使用EM算法。我们进一步扩展了Erlangs多元混合的EM算法,以能够处理随机删节和固定的截断数据。所提算法的有效性在仿真数据集和真实数据集上都得到了证明。

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