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Streaming, Distributed Variational Inference for Bayesian Nonparametrics

机译:贝叶斯非参数的流式分布变分推断

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This paper presents a methodology for creating streaming, distributed inference algorithms for Bayesian nonparametric (BNP) models. In the proposed framework, processing nodes receive a sequence of data minibatches, compute a variational posterior for each, and make asynchronous streaming updates to a central model. In contrast to previous algorithms, the proposed framework is truly streaming, distributed, asynchronous, learning-rate-free, and truncation-free. The key challenge in developing the framework, arising from the fact that BNP models do not impose an inherent ordering on their components, is finding the correspondence between minibatch and central BNP posterior components before performing each update. To address this, the paper develops a combinatorial optimization problem over component correspondences, and provides an efficient solution technique. The paper concludes with an application of the methodology to the DP mixture model, with experimental results demonstrating its practical scalability and performance.
机译:本文提出了一种为贝叶斯非参数(BNP)模型创建流式分布式推理算法的方法。在提出的框架中,处理节点接收一系列数据微型批次,为每个微型批次计算一个后验变量,并对中心模型进行异步流更新。与以前的算法相比,所提出的框架是真正的流式,分布式,异步,无学习速率和无截断的。由于BNP模型没有对其组件强加固有顺序这一事实而引起的开发框架的主要挑战是,在执行每次更新之前,要找到小批量生产和中央BNP后部组件之间的对应关系。为了解决这个问题,本文提出了一种针对组件对应的组合优化问题,并提供了一种有效的解决方法。本文以该方法在DP混合模型中的应用结束,实验结果证明了该方法的实际可扩展性和性能。

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