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A State-Space Approach to Dynamic Nonnegative Matrix Factorization

机译:动态非负矩阵分解的状态空间方法

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摘要

Nonnegative matrix factorization (NMF) has been actively investigated and used in a wide range of problems in the past decade. A significant amount of attention has been given to develop NMF algorithms that are suitable to model time series with strong temporal dependencies. In this paper, we propose a novel state-space approach to perform dynamic NMF (D-NMF). In the proposed probabilistic framework, the NMF coefficients act as the state variables and their dynamics are modeled using a multi-lag nonnegative vector autoregressive (N-VAR) model within the process equation. We use expectation maximization and propose a maximum-likelihood estimation framework to estimate the basis matrix and the N-VAR model parameters. Interestingly, the N-VAR model parameters are obtained by simply applying NMF. Moreover, we derive a maximum a posteriori estimate of the state variables (i.e., the NMF coefficients) that is based on a prediction step and an update step, similarly to the Kalman filter. We illustrate the benefits of the proposed approach using different numerical simulations where D-NMF significantly outperforms its static counterpart. Experimental results for three different applications show that the proposed approach outperforms two state-of-the-art NMF approaches that exploit temporal dependencies, namely a nonnegative hidden Markov model and a frame stacking approach, while it requires less memory and computational power.
机译:在过去的十年中,非负矩阵分解(NMF)已被积极研究并用于各种问题中。已经为开发适用于建模具有强烈时间相关性的时间序列的NMF算法投入了大量精力。在本文中,我们提出了一种新颖的状态空间方法来执行动态NMF(D-NMF)。在提出的概率框架中,NMF系数充当状态变量,并使用过程方程中的多延迟非负向量自回归(N-VAR)模型对它们的动力学进行建模。我们使用期望最大化并提出最大似然估计框架来估计基本矩阵和N-VAR模型参数。有趣的是,仅通过应用NMF即可获得N-VAR模型参数。此外,类似于卡尔曼滤波器,我们基于预测步骤和更新步骤,得出状态变量(即NMF系数)的最大后验估计。我们使用不同的数值模拟说明了该方法的优势,其中D-NMF明显优于其静态对应方法。针对三种不同应用的实验结果表明,该方法优于两种利用时间相关性的最新NMF方法,即非负隐马尔可夫模型和帧堆叠方法,同时所需的内存和计算能力更低。

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