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Differentiable Antithetic Sampling for Variance Reduction in Stochastic Variational Inference

机译:随机抗静性采样,随机变分推理的方差减少

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Stochastic optimization techniques are standard in variational inference algorithms. These methods estimate gradients by approximating expectations with independent Monte Carlo samples. In this paper, we explore a technique that uses correlated, but more representative, samples to reduce estimator variance. Specifically, we show how to generate antithetic samples that match sample moments with the true moments of an underlying importance distribution. Combining a differentiable antithetic sampler with modern stochastic variational inference, we showcase the effectiveness of this approach for learning a deep generative model. An implementation is available at https://github.com/mhw32/antithetic-vae-public.
机译:随机优化技术是变分推理算法的标准。这些方法通过与独立蒙特卡罗样本近似预期来估计梯度。在本文中,我们探讨了一种使用相关性但更多代表性的方法来降低估计方差的技术。具体而言,我们展示了如何生成与潜在重视分布的真实时刻匹配样本矩的反向样本。结合具有现代随机变分推理的可微分的抗静电采样器,我们展示了这种方法学习深生成模型的有效性。在https://github.com/mhw32/tithethetic-vae-公共场所提供了一个实现。

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