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Incremental Mixture Importance Sampling With Shotgun Optimization

机译:霰弹枪优化的增量混合物重要性抽样

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This article proposes a general optimization strategy, which combines results from different optimization or parameter estimation methods to overcome shortcomings of a single method. Shotgun optimization is developed as a framework which employs different optimization strategies, criteria, or conditional targets to enable wider likelihood exploration. The introduced shotgun optimization approach is embedded into an incremental mixture importance sampling algorithm to produce improved posterior samples for multimodal densities and creates robustness in cases where the likelihood and prior are in disagreement. Despite using different optimization approaches, the samples are combined into samples from a single target posterior. The diversity of the framework is demonstrated on parameter estimation from differential equation models employing diverse strategies including numerical solutions and approximations thereof. Additionally the approach is demonstrated on mixtures of discrete and continuous parameters and is shown to ease estimation from synthetic likelihood models. R code of the implemented examples can be found at . for this article are available online.
机译:本文提出了一般优化策略,该策略结合了不同优化或参数估计方法的结果来克服单一方法的缺点。 Shotgun优化是作为框架开发的,该框架采用不同的优化策略,标准或有条件目标来实现更广泛的可能性探索。介绍的霰弹枪优化方法嵌入到增量混合物中的重要性采样算法,以产生改进的多峰密度的后样品,并在可能性和之前的分歧中产生稳健性。尽管使用不同的优化方法,但样品组合成从单个目标后部的样品。关于采用不同策略的差分方程模型的参数估计对框架的多样性进行了证明,包括不同策略,包括数值解和其近似。另外,该方法是在离散和连续参数的混合物上进行说明的,并且被证明可以从合成似然模型中估计。可以找到实现的示例的R代码。本文可在线获取。

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