Latent space models are popular for analyzing dynamic network data. We propose a variational approach to estimate the model parameters as well as the latent positions of the nodes in the network. The variational approach is much faster than Markov chain Monte Carlo algorithms, and is able to handle large networks. Theoretical properties of the variational Bayes risk of the proposed procedure are provided. We apply the variational method and latent space model to simulated data as well as real data to demonstrate its performance.
翻译:原始空间模型在分析动态网络数据方面很受欢迎。我们建议采用变式方法来估计模型参数和网络节点的潜在位置。变式方法比Markov链Monte Carlo算法快得多,并且能够处理大型网络。提供了拟议程序变式海湾风险的理论特性。我们用变式方法和潜在空间模型模拟数据以及真实数据来证明其性能。