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Towards end-to-end likelihood-free inference with convolutional neural networks

机译:朝向卷积神经网络的完全无似然推点

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摘要

Complex simulator-based models with non-standard sampling distributions require sophisticated design choices for reliable approximate parameter inference. We introduce a fast, end-to-end approach for approximate Bayesian computation (ABC) based on fully convolutional neural networks. The method enables users of ABC to derive simultaneously the posterior mean and variance of multidimensional posterior distributions directly from raw simulated data. Once trained on simulated data, the convolutional neural network is able to map real data samples of variable size to the first two posterior moments of the relevant parameter's distributions. Thus, in contrast to other machine learning approaches to ABC, our approach allows us to generate reusable models that can be applied by different researchers employing the same model. We verify the utility of our method on two common statistical models (i.e., a multivariate normal distribution and a multiple regression scenario), for which the posterior parameter distributions can be derived analytically. We then apply our method to recover the parameters of the leaky competing accumulator (LCA) model and we reference our results to the current state-of-the-art technique, which is the probability density estimation (PDA). Results show that our method exhibits a lower approximation error compared with other machine learning approaches to ABC. It also performs similarly to PDA in recovering the parameters of the LCA model.
机译:具有非标准采样分布的基于复杂的模拟器的模型需要复杂的设计选择,可用于可靠的近似参数推断。基于完全卷积神经网络,我们介绍了近似贝叶斯计算(ABC)的快速最终的端到端方法。该方法使ABC的用户能够同时从原始模拟数据中同时导出多维后部分布的后均值和方差。一旦训练了模拟数据,卷积神经网络就能够将变量大小的真实数据样本映射到相关参数分布的前两个后方。因此,与其他机器学习方法相比,我们的方法允许我们生成可通过采用相同模型的不同研究人员应用的可重用模型。我们验证了我们在两个常见的统计模型上(即多元正常分布和多元回归场景)的方法,可以分析地导出后参数分布。然后,我们应用我们的方法来恢复泄漏竞争蓄能器(LCA)模型的参数,我们将我们的结果引用到当前的最先进技术,这是概率密度估计(PDA)。结果表明,与ABC的其他机器学习方法相比,我们的方法表现出较低的近似误差。它同样地执行到PDA时恢复LCA模型的参数。

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