Conditional Sig-Wasserstein GANs for Time Series Generation

06/09/2020
by   Hao Ni, et al.
10

Generative adversarial networks (GANs) have been extremely successful in generating samples, from seemingly high dimensional probability measures. However, these methods struggle to capture the temporal dependence of joint probability distributions induced by time-series data. Furthermore, long time-series data streams hugely increase the dimension of the target space, which may render generative modeling infeasible. To overcome these challenges, we integrate GANs with mathematically principled and efficient path feature extraction called the signature of a path. The signature of a path is a graded sequence of statistics that provides a universal description for a stream of data, and its expected value characterizes the law of the time-series model. In particular, we a develop new metric, (conditional) Sig-W_1, that captures the (conditional) joint law of time series models, and use it as a discriminator. The signature feature space enables the explicit representation of the proposed discriminators which alleviates the need for expensive training. Furthermore, we develop a novel generator, called the conditional AR-FNN, which is designed to capture the temporal dependence of time series and can be efficiently trained. We validate our method on both synthetic and empirical datasets and observe that our method consistently and significantly outperforms state-of-the-art benchmarks with respect to measures of similarity and predictive ability.

READ FULL TEXT

page 24

page 31

page 32

research
05/21/2023

PCF-GAN: generating sequential data via the characteristic function of measures on the path space

Generating high-fidelity time series data using generative adversarial n...
research
01/03/2023

Neural SDEs for Conditional Time Series Generation and the Signature-Wasserstein-1 metric

(Conditional) Generative Adversarial Networks (GANs) have found great su...
research
08/30/2023

Fully Embedded Time-Series Generative Adversarial Networks

Generative Adversarial Networks (GANs) should produce synthetic data tha...
research
03/02/2020

Subadditivity of Probability Divergences on Bayes-Nets with Applications to Time Series GANs

GANs for time series data often use sliding windows or self-attention to...
research
04/25/2023

Directed Chain Generative Adversarial Networks

Real-world data can be multimodal distributed, e.g., data describing the...
research
08/03/2017

Detecting early signs of depressive and manic episodes in patients with bipolar disorder using the signature-based model

Recurrent major mood episodes and subsyndromal mood instability cause su...
research
11/01/2021

Sig-Wasserstein GANs for Time Series Generation

Synthetic data is an emerging technology that can significantly accelera...

Please sign up or login with your details

Forgot password? Click here to reset