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Hybrid schemes for exact conditional inference in discrete exponential families

机译:用于离散指数家庭的确切条件推断的混合方案

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摘要

Exact conditional goodness-of-fit tests for discrete exponential family models can be conducted via Monte Carlo estimation of p values by sampling from the conditional distribution of multiway contingency tables. The two most popular methods for such sampling are Markov chain Monte Carlo (MCMC) and sequential importance sampling (SIS). In this work we consider various ways to hybridize the two schemes and propose one standout strategy as a good general purpose method for conducting inference. The proposed method runs many parallel chains initialized at SIS samples across the fiber. When a Markov basis is unavailable, the proposed scheme uses a lattice basis with intermittent SIS proposals to guarantee irreducibility and asymptotic unbiasedness. The scheme alleviates many of the challenges faced by the MCMC and SIS schemes individually while largely retaining their strengths. It also provides diagnostics that guide and lend credibility to the procedure. Simulations demonstrate the viability of the approach.
机译:通过从多通道差表表的条件分布采样,通过对P值的Monte Carlo估计来进行确切条件的离散指数家庭模型的精确性拟合测试。这种采样的两个最流行的方法是Markov链蒙特卡罗(MCMC)和顺序重要性采样(SIS)。在这项工作中,我们考虑各种方法来杂交两种方案并提出一个突出策略作为导入推理的良好通用方法。所提出的方法在纤维上运行许多在SIS样品中初始化的并行链。当马尔可夫不可用时,所提出的方案使用晶格基础与间歇性SIS建议,以保证不可缩短的无偏见。该计划减轻了MCMC和SIS计划的许多挑战,同时在很大程度上留下了它们的优势。它还提供诊断,指导和借入该程序的可信度。仿真证明了这种方法的可行性。

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