Timezone: »
Comparing unpaired samples of a distribution or population taken at different points in time is a fundamental task in many application domains where measuring populations is destructive and cannot be done repeatedly on the same sample, such as in single-cell biology. Optimal transport (OT) can solve this challenge by learning an optimal coupling of samples across distributions from unpaired data. However, the usual formulation of OT assumes conservation of mass, which is violated in unbalanced scenarios in which the population size changes (e.g., cell proliferation or death) between measurements. In this work, we introduce NubOT, a neural unbalanced OT formulation that relies on the formalism of semi-couplings to account for creation and destruction of mass. To estimate such semi-couplings and generalize out-of-sample, we derive an efficient parameterization based on neural optimal transport maps and propose a novel algorithmic scheme through a cycle-consistent training procedure. We apply our method to the challenging task of forecasting heterogeneous responses of multiple cancer cell lines to various drugs, where we observe that by accurately modeling cell proliferation and death, our method yields notable improvements over previous neural optimal transport methods.
Author Information
Frederike Lübeck (ETH Zurich)
Charlotte Bunne (ETH Zurich)
Gabriele Gut (University of Zurich)
Jacobo Sarabia del Castillo (University of Zurich)
Lucas Pelkmans (University of Zurich)
David Alvarez-Melis (Microsoft)
More from the Same Authors
-
2021 : Learning Single-Cell Perturbation Responses using Neural Optimal Transport »
Charlotte Bunne · Stefan Stark · Gabriele Gut · Andreas Krause · Gunnar Rätsch · Lucas Pelkmans · Kjong Lehmann -
2022 : Neural Unbalanced Optimal Transport via Cycle-Consistent Semi-Couplings »
Frederike Lübeck · Charlotte Bunne · Gabriele Gut · Jacobo Sarabia del Castillo · Lucas Pelkmans · David Alvarez-Melis -
2022 Spotlight: Are GANs overkill for NLP? »
David Alvarez-Melis · Vikas Garg · Adam Kalai -
2022 : Generating Synthetic Datasets by Interpolating along Generalized Geodesics »
Jiaojiao Fan · David Alvarez-Melis -
2022 Poster: Supervised Training of Conditional Monge Maps »
Charlotte Bunne · Andreas Krause · Marco Cuturi -
2022 Poster: Are GANs overkill for NLP? »
David Alvarez-Melis · Vikas Garg · Adam Kalai -
2021 Workshop: Optimal Transport and Machine Learning »
Jason Altschuler · Charlotte Bunne · Laetitia Chapel · Marco Cuturi · Rémi Flamary · Gabriel Peyré · Alexandra Suvorikova -
2021 Poster: Learning Graph Models for Retrosynthesis Prediction »
Vignesh Ram Somnath · Charlotte Bunne · Connor Coley · Andreas Krause · Regina Barzilay -
2021 Poster: Multi-Scale Representation Learning on Proteins »
Vignesh Ram Somnath · Charlotte Bunne · Andreas Krause