Distribution estimation and change-point estimation for time series via DNN-based GANs

Lu, Jianya, Mo, Yingjun, Xiao, Zhijie, Xu, Lihu, Yao, Qiuran

arXiv.org Artificial Intelligence 

In this paper, we use the blocking technique to demonstrate the effectiveness of GANs for estimating the distribution of stationary time series. Theoretically, we derive a non-asymptotic error bound for the Deep Neural Network (DNN)-based GANs estimator for the stationary distribution of the time series. Based on our theoretical analysis, we propose an algorithm for estimating the change point in time series distribution. The two main results are verified by two Monte Carlo experiments respectively, one is to estimate the joint stationary distribution of 5-tuple samples of a 20 dimensional AR(3) model, the other is about estimating the change point at the combination of two different stationary time series. A real world empirical application to the human activity recognition dataset highlights the potential of the proposed methods. Estimation of distribution plays an important role in data analysis. Many traditional methods on distributional estimation are based on nonparametric kernel methods, and suffer from the curse of dimensionality.

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