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首页> 外文期刊>Signal Processing, IEEE Transactions on >The beta-Model—Maximum Likelihood, Cramér–Rao Bounds, and Hypothesis Testing
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The beta-Model—Maximum Likelihood, Cramér–Rao Bounds, and Hypothesis Testing

机译:Beta模型-最大似然,Cramér-Rao界限和假设检验

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摘要

We study the maximum-likelihood estimator in a setting where the dependent variable is a random graph and covariates are available on a graph level. The model generalizes the well-known β-model for random graphs by replacing the constant model parameters with regression functions. Cramer-Rao bounds are derived for special cases of the undirected β-model, the directed β-model, and the covariate-based β-model. The corresponding maximum-likelihood estimators are compared with the bounds by means of simulations. Moreover, examples are given on how to use the presented maximum-likelihood estimators to test for directionality and significance. Finally, the applicability of the model is demonstrated using temporal social network data describing communication among healthcare workers.
机译:我们在因变量为随机图且协变量在图级别可用的情况下研究最大似然估计器。该模型通过将常数模型参数替换为回归函数,为随机图推广了众所周知的β模型。对于无向β模型,有向β模型和基于协变量的β模型的特殊情况,得出了Cramer-Rao界。通过模拟将相应的最大似然估计值与范围进行比较。此外,给出了有关如何使用提出的最大似然估计器测试方向性和重要性的示例。最后,使用描述医护人员之间交流的时间社交网络数据证明了该模型的适用性。

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