Learning to Simulate Sequentially Generated Data via Neural Networks and Wasserstein Training

IF 0.7 4区 计算机科学 Q4 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS ACM Transactions on Modeling and Computer Simulation Pub Date : 2023-04-03 DOI:https://dl.acm.org/doi/10.1145/3583070
Tingyu Zhu, Haoyu Liu, Zeyu Zheng
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Abstract

We propose a new framework of a neural network-assisted sequential structured simulator to model, estimate, and simulate a wide class of sequentially generated data. Neural networks are integrated into the sequentially structured simulators in order to capture potential nonlinear and complicated sequential structures. Given representative real data, the neural network parameters in the simulator are estimated and calibrated through a Wasserstein training process, without restrictive distributional assumptions. The target of Wasserstein training is to enforce the joint distribution of the simulated data to match the joint distribution of the real data in terms of Wasserstein distance. Moreover, the neural network-assisted sequential structured simulator can flexibly incorporate various kinds of elementary randomness and generate distributions with certain properties such as heavy-tail, without the need to redesign the estimation and training procedures. Further, regarding statistical properties, we provide results on consistency and convergence rate for the estimation procedure of the proposed simulator, which are the first set of results that allow the training data samples to be correlated. We then present numerical experiments with synthetic and real data sets to illustrate the performance of the proposed simulator and estimation procedure.

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学习通过神经网络和Wasserstein训练来模拟顺序生成的数据
我们提出了一个新的框架的神经网络辅助顺序结构化模拟器,以建模,估计,并模拟一系列的顺序生成的数据。为了捕获潜在的非线性和复杂的序列结构,将神经网络集成到序列结构模拟器中。给定具有代表性的真实数据,模拟器中的神经网络参数通过Wasserstein训练过程进行估计和校准,没有限制性的分布假设。Wasserstein训练的目标是使模拟数据的联合分布在Wasserstein距离上与真实数据的联合分布相匹配。此外,神经网络辅助序列结构化模拟器可以灵活地结合各种初等随机性,生成具有重尾等特性的分布,而无需重新设计估计和训练过程。此外,在统计特性方面,我们为所提出的模拟器的估计过程提供了一致性和收敛率的结果,这是允许训练数据样本相互关联的第一组结果。然后,我们用合成和真实数据集进行了数值实验,以说明所提出的模拟器和估计过程的性能。
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来源期刊
ACM Transactions on Modeling and Computer Simulation
ACM Transactions on Modeling and Computer Simulation 工程技术-计算机:跨学科应用
CiteScore
2.50
自引率
22.20%
发文量
29
审稿时长
>12 weeks
期刊介绍: The ACM Transactions on Modeling and Computer Simulation (TOMACS) provides a single archival source for the publication of high-quality research and developmental results referring to all phases of the modeling and simulation life cycle. The subjects of emphasis are discrete event simulation, combined discrete and continuous simulation, as well as Monte Carlo methods. The use of simulation techniques is pervasive, extending to virtually all the sciences. TOMACS serves to enhance the understanding, improve the practice, and increase the utilization of computer simulation. Submissions should contribute to the realization of these objectives, and papers treating applications should stress their contributions vis-á-vis these objectives.
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