We combine two popular optimization approaches to derive learning algorithms for generative models: variational optimization and evolutionary algorithms. The combination is realized for generative models with discrete latents by using truncated posteriors as the family of variational distributions. The variational parameters of truncated posteriors are sets of latent states. By interpreting these states as genomes of individuals and by using the variational lower bound to define a fitness, we can apply evolutionary algorithms to realize the variational loop. The used variational distributions are very flexible and we show that evolutionary algorithms can effectively and efficiently optimize the variational bound. Furthermore, the variational loop is generally applicable ("black box") with no analytical derivations required. To show general applicability, we apply the approach to three generative models (we use noisy-OR Bayes Nets, Binary Sparse Coding, and Spike-and-Slab Sparse Coding). To demonstrate effectiveness and efficiency of the novel variational approach, we use the standard competitive benchmarks of image denoising and inpainting. The benchmarks allow quantitative comparisons to a wide range of methods including probabilistic approaches, deep deterministic and generative networks, and non-local image processing methods. In the category of "zero-shot" learning (when only the corrupted image is used for training), we observed the evolutionary variational algorithm to significantly improve the state-of-the-art in many benchmark settings. For one well-known inpainting benchmark, we also observed state-of-the-art performance across all categories of algorithms although we only train on the corrupted image. In general, our investigations highlight the importance of research on optimization methods for generative models to achieve performance improvements.
翻译:我们结合了两种流行优化方法,以获得基因化模型的学习算法:变异优化和进化算法。这种组合通过使用脱节的子宫外表作为变异分布的组合,在具有离散潜伏的模型中实现。短线后背体的变异参数是一组潜在的状态。通过将这些状态解释为个人基因组,并通过使用变异下限来定义健身,我们可以应用进化算法来实现变异循环。使用的变异分布非常灵活,我们表明演化算法能够有效和高效地优化变异界限。此外,变异循环一般适用(“黑盒”),不需要分析衍生。为了显示一般适用性能,我们把这些方法应用于三种变异型模型(我们使用噪音-OR Bayes Nets, Binary Sprassarting Coding, Spretail-Slabrefer confermall coding ) 。为了展示新变异方法的有效性和效率,我们使用所有已知的变异性图像变现和整形标准基准,我们使用所有不同的变异性变法的变现和制图像变法的变法的变法。我们使用这些基准基准基准基准基准可以用来用来进行一种不同变现的变现的变法的变法的变法的变法的变法的变法的变法的变法方法。我们所观察到的变法的变法的变法的变法的变法方法,我们所观察到的变法的变法的变法的变法的变法的变法的变法的变法的变法的变法的变法的变法的变法的变法的变法的变法的变法的变法的变法的变法的变法的变法方法,我们的变法的变法的变法方法,我们的变法的变法的变法的变法的变法的变法的变法的变法的变法的变法和制和制和制和制和制的变法的变法的变法的变法的变法的变法的变法的变法的变法的变法的变法的变法的变法的变法的变法的变法的变法的变法的变法的变法的变法的变法的变