DATE OF PUBLICATION
Evgeny Burnaev Alexander Korotin Daniil Selikhanovych
KERNEL NEURAL OPTIMAL TRANSPORT
We study the Neural Optimal Transport (NOT) algorithm which uses the general optimal transport formulation and learns stochastic transport plans. We show that NOT with the weak quadratic cost may learn fake plans which are not optimal. To resolve this issue, we introduce kernel weak quadratic costs. We show that they provide improved theoretical guarantees and practical performance. We test NOT with kernel costs on the unpaired image-to-image translation task.
You can ask us a question or suggest a joint project in the field of AI
For scientific cooperation and
For journalists and media