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Gibbs Sampling in Open-Universe Stochastic Languages

机译:开放宇宙随机语言中的Gibbs抽样

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Languages for open-universe probabilistic models (OUPMs) can represent situations with an unknown number of objects and identity uncertainty. While such cases arise in a wide range of important real-world applications, existing general purpose inference methods for OUPMs are far less efficient than those available for more restricted languages and model classes. This paper goes some way to remedying this deficit by introducing, and proving correct, a generalization of Gibbs sampling to partial worlds with possibly varying model structure. Our approach draws on and extends previous generic OUPM inference methods, as well as auxiliary variable samplers for nonparametric mixture models. It has been implemented for BLOG, a well-known OUPM language. Combined with compile-time optimizations, the resulting algorithm yields very substantial speedups over existing methods on several test cases, and substantially improves the practicality of OUPM languages generally.
机译:开放宇宙概率模型(OUPM)的语言可以表示对象数量未知且身份不确定的情况。尽管在许多重要的实际应用中都会出现这种情况,但是OUPM的现有通用推理方法的效率远不如限制更严格的语言和模型类的方法有效。本文通过引入并证明吉布斯采样到具有可能变化的模型结构的部分世界的概括,来纠正这种缺陷。我们的方法借鉴并扩展了以前的通用OUPM推理方法,以及用于非参数混合模型的辅助变量采样器。它已针对BLOG(一种著名的OUPM语言)实现。与编译时优化相结合,所生成的算法在几个测试用例上比现有方法产生了非常大的加速,并总体上提高了OUPM语言的实用性。

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