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Fast Є-free Inference of Simulation Models with Bayesian Conditional Density Estimation

机译:贝叶斯条件密度估计的仿真模型快速无Є推断

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Many statistical models can be simulated forwards but have intractable likelihoods. Approximate Bayesian Computation (ABC) methods are used to infer properties of these models from data. Traditionally these methods approximate the posterior over parameters by conditioning on data being inside an Є-ball around the observed data, which is only correct in the limit Є → 0. Monte Carlo methods can then draw samples from the approximate posterior to approximate predictions or error bars on parameters. These algorithms critically slow down as Є → 0, and in practice draw samples from a broader distribution than the posterior. We propose a new approach to likelihood-free inference based on Bayesian conditional density estimation. Preliminary inferences based on limited simulation data are used to guide later simulations. In some cases, learning an accurate parametric representation of the entire true posterior distribution requires fewer model simulations than Monte Carlo ABC methods need to produce a single sample from an approximate posterior.
机译:许多统计模型可以向前模拟,但具有难以克服的可能性。近似贝叶斯计算(ABC)方法用于从数据推断这些模型的属性。传统上,这些方法通过以观测数据周围的Є球内的数据为条件来近似后验参数,这仅在Є→0的极限内是正确的。然后,蒙特卡洛方法可以从近似后验中抽取样本以进行近似预测或误差参数上的条。这些算法严重地降低了critical→0的速度,并且实际上从比后验分布更广泛的分布中抽取样本。我们提出了一种新的基于贝叶斯条件密度估计的无可能性推理方法。基于有限模拟数据的初步推断可用于指导以后的模拟。在某些情况下,与要从近似后验产生单个样本的蒙特卡洛ABC方法相比,学习整个真实后验分布的精确参数表示所需的模型仿真次数更少。

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