论文标题
有条件的Sig-Wasserstein Gans用于时间序列
Conditional Sig-Wasserstein GANs for Time Series Generation
论文作者
论文摘要
生成对抗网络(GAN)在看似高维概率度量中生成样品方面非常成功。但是,这些方法难以捕获由时间序列数据引起的关节概率分布的时间依赖性。此外,长时间的数据流大大增加了目标空间的维度,这可能使生成性建模不可行。为了克服这些挑战,是由计量经济学中自回旋模型的动机,我们对过去信息的未来时间序列的有条件分布感兴趣。我们通过将Wasserstein-Gans(WGAN)与数学原则上有效的路径特征提取(称为路径的特征提取)集成在一起,提出了通用条件Sig-Wgan框架。路径的签名是一个级别的统计序列,为数据流提供了通用描述,其预期值则是时间序列模型的定律。特别是,我们开发了有条件的sig- $ w_1 $公制,该公制捕获了有条件的时间序列模型,并将其用作歧视者。签名功能空间可以明确表示拟议的歧视者,从而减轻了对昂贵培训的需求。我们在合成和经验数据集上验证了我们的方法,并观察到我们的方法始终如一地超过了相似性和预测能力的衡量标准。
Generative adversarial networks (GANs) have been extremely successful in generating samples, from seemingly high dimensional probability measures. However, these methods struggle to capture the temporal dependence of joint probability distributions induced by time-series data. Furthermore, long time-series data streams hugely increase the dimension of the target space, which may render generative modelling infeasible. To overcome these challenges, motivated by the autoregressive models in econometric, we are interested in the conditional distribution of future time series given the past information. We propose the generic conditional Sig-WGAN framework by integrating Wasserstein-GANs (WGANs) with mathematically principled and efficient path feature extraction called the signature of a path. The signature of a path is a graded sequence of statistics that provides a universal description for a stream of data, and its expected value characterises the law of the time-series model. In particular, we develop the conditional Sig-$W_1$ metric, 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. We validate our method on both synthetic and empirical dataset and observe that our method consistently and significantly outperforms state-of-the-art benchmarks with respect to measures of similarity and predictive ability.