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COT-GAN: Generating Sequential Data via Causal Optimal Transport

About

We introduce COT-GAN, an adversarial algorithm to train implicit generative models optimized for producing sequential data. The loss function of this algorithm is formulated using ideas from Causal Optimal Transport (COT), which combines classic optimal transport methods with an additional temporal causality constraint. Remarkably, we find that this causality condition provides a natural framework to parameterize the cost function that is learned by the discriminator as a robust (worst-case) distance, and an ideal mechanism for learning time dependent data distributions. Following Genevay et al.\ (2018), we also include an entropic penalization term which allows for the use of the Sinkhorn algorithm when computing the optimal transport cost. Our experiments show effectiveness and stability of COT-GAN when generating both low- and high-dimensional time series data. The success of the algorithm also relies on a new, improved version of the Sinkhorn divergence which demonstrates less bias in learning.

Tianlin Xu, Li K. Wenliang, Michael Munn, Beatrice Acciaio• 2020

Related benchmarks

TaskDatasetResultRank
Time-series generationSines
Discriminative Score0.302
21
Time-series generationStocks
Discriminative Score0.26
21
Time-series generationEnergy
Discriminative Score0.5
21
Time-series generationChickenpox
MAE0.094
12
Time-series generationAIR
Predictive Score (MAE)0.044
12
Time-series generationMIMIC-III
Predictive Score0.014
7
Time-series generationMetro
Predictive Score0.245
7
Time-series generationREST-meta-MDD (test)
Context-FID7.813
7
Time-series generationGAS
Predictive Score0.022
7
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