A novel neural architecture was recently developed that enforces an exact upper bound on the Lipschitz constant of the model by constraining the norm of its weights in a minimal way, resulting in higher expressiveness compared to other techniques. We present a new and interesting direction for this architecture: estimation of the Wasserstein metric (Earth Mover's Distance) in optimal transport by employing the Kantorovich-Rubinstein duality to enable its use in geometric fitting applications. Specifically, we focus on the field of high-energy particle physics, where it has been shown that a metric for the space of particle-collider events can be defined based on the Wasserstein metric, referred to as the Energy Mover's Distance (EMD). This metrization has the potential to revolutionize data-driven collider phenomenology. The work presented here represents a major step towards realizing this goal by providing a differentiable way of directly calculating the EMD. We show how the flexibility that our approach enables can be used to develop novel clustering algorithms.
翻译:最近开发了一种新型神经结构,对模型的Lipschitz常数实施精确的上限约束,以最起码的方式限制其重量规范,从而导致与其他技术相比,表达性更高。我们为这一结构提出了一个新的有趣的方向:利用Kantorovich-Rubinstein的双重性,利用Kantorovich-Rubinstein的距离进行最佳运输,以将其用于几何安装应用。具体地说,我们侧重于高能粒子物理学领域,在那里,已经显示,粒子-对流器事件空间的量度可以基于Wasserstein标准(称为“能源移动器距离”(EMD))来界定。这一计量有可能使数据驱动的对焦耳光性细胞学发生革命。这里介绍的工作通过提供一种不同的直接计算环流数据的方法,是朝着实现这一目标迈出的重要一步。我们展示了我们的方法所允许的灵活性如何能够用于开发新型的集群算法。