Ensemble kalman variational objective: a variational inference framework for sequential variational auto-encoders

IF 0.5 Q4 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS
Tsuyoshi Ishizone, Tomoyuki Higuchi, Kazuyuki Nakamura
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引用次数: 0

Abstract

Time series model inference can be divided into modeling and optimization. Sequential VAEs have been studied as a modeling technique. As an optimization technique, methods combining variational inference (VI) and sequential Monte Carlo (SMC) have been proposed; however, they have two drawbacks: less particle diversity and biased gradient estimators. This paper proposes Ensemble Kalman Variational Objective (EnKO), a VI framework with the ensemble Kalman filter, to infer latent time-series models. Our proposed method efficiently learns the time-series models because of its particle diversity and unbiased gradient estimators. We demonstrate that our EnKO outperforms previous SMC-based VI methods in the predictive ability for several synthetic and real-world data sets.
集合卡尔曼变分目标:序列变分自编码器的变分推理框架
时间序列模型推理可分为建模和优化。序贯式涡发生器作为一种建模技术进行了研究。作为一种优化技术,变分推理(VI)和序贯蒙特卡罗(SMC)相结合的方法被提出;然而,它们有两个缺点:粒子多样性少,梯度估计偏倚。本文提出了集成卡尔曼变分目标(Ensemble Kalman Variational Objective, EnKO)框架,该框架采用集成卡尔曼滤波器来推断潜在的时间序列模型。由于该方法具有粒子多样性和无偏梯度估计,可以有效地学习时间序列模型。我们证明,我们的EnKO在几种合成和真实数据集的预测能力方面优于以前基于smc的VI方法。
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来源期刊
IEICE Nonlinear Theory and Its Applications
IEICE Nonlinear Theory and Its Applications MATHEMATICS, INTERDISCIPLINARY APPLICATIONS-
自引率
20.00%
发文量
67
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