We present a novel kernel over the space of probability measures based on the dual formulation of optimal regularized transport. We propose an Hilbertian embedding of the space of probabilities using their Sinkhorn potentials, which are solutions of the dual entropic relaxed optimal transport between the probabilities and a reference measure $\mathcal{U}$. We prove that this construction enables to obtain a valid kernel, by using the Hilbert norms. We prove that the kernel enjoys theoretical properties such as universality and some invariances, while still being computationally feasible. Moreover we provide theoretical guarantees on the behaviour of a Gaussian process based on this kernel. The empirical performances are compared with other traditional choices of kernels for processes indexed on distributions.
翻译:我们根据最佳正规化运输的双重配方,提出了关于概率测量空间的新核心。我们建议Hilbertian嵌入概率空间,利用Sinkhorn的潜力,这是在概率和参考度之间双轨宽松最佳迁移的解决方案。我们用Hilbert规范证明,这种构造能够获取有效的内核。我们证明,内核具有理论特性,如普遍性和一些逆差,但仍然可以计算。我们还提供了基于此内核的高斯进程行为的理论保证。经验表现与其他传统的分配指数化进程核心选择相比。