Edge-exchangeable probabilistic network models generate edges as an i.i.d.~sequence from a discrete measure, providing a simple means for statistical inference of latent network properties. The measure is often constructed using the self-product of a realization from a Bayesian nonparametric (BNP) discrete prior; but unlike in standard BNP models, the self-product measure prior is not conjugate the likelihood, hindering the development of exact simulation and inference algorithms. Approximation via finite truncation of the discrete measure is a straightforward alternative, but incurs an unknown approximation error. In this paper, we develop methods for forward simulation and posterior inference in random self-product-measure models based on truncation, and provide theoretical guarantees on the quality of the results as a function of the truncation level. The techniques we present are general and extend to the broader class of discrete Bayesian nonparametric models.
翻译:离散的测量方法为潜在网络属性的统计推导提供了简单的方法。 测量方法通常是使用以前从巴伊西亚非对等(BNP)离散(BNP)的非对称(BNP)实现的自产物来构建的; 但与标准的法国国家巴黎大学模型不同, 先前的自产测量方法并不具有共验可能性, 妨碍精确模拟和推断算法的发展。 离散测量的有限脱轨近似是一种直接的替代方法, 但却存在未知的近似错误。 在本文中, 我们开发了基于逃逸的远端模拟和随机自计量模型的远端推断方法, 并为结果的质量提供了理论保障, 作为对流值的函数。 我们介绍的技术是一般性的, 扩展到较广的离散的海湾非对数模型。