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A Recurrent Latent Variable Model for Supervised Modeling of High-Dimensional Sequential Data

机译:高维顺序数据监督建模的经常性潜在变量模型

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In this work, we attempt to ameliorate the impact of data sparsity in the context of supervised modeling applications dealing with high-dimensional sequential data. Specifically, we seek to devise a machine learning mechanism capable of extracting subtle and complex underlying temporal dynamics in the observed sequential data, so as to inform the predictive algorithm. To this end, we improve upon systems that utilize deep learning techniques with recurrently connected units; we do so by adopting concepts from the field of Bayesian statistics, namely variational inference. Our proposed approach consists in treating the network recurrent units as stochastic latent variables with a prior distribution imposed over them. On this basis, we proceed to infer corresponding posteriors; these can be used for prediction generation, in a way that accounts for the uncertainty in the available sparse training data. To allow for our approach to easily scale to large real-world datasets, we perform inference under an approximate amortized variational inference (AVI) setup, whereby the learned posteriors are parameterized via (conventional) neural networks. We perform an extensive experimental evaluation of our approach using challenging benchmark datasets, and illustrate its superiority over existing state-of-the-art techniques.
机译:在这项工作中,我们试图改善数据稀疏在处理高维顺序数据的监督建模应用程序中的影响。具体而言,我们寻求设计一种能够在观察到的顺序数据中提取微妙和复杂的底层时间动态的机器学习机制,以便通知预测算法。为此,我们改进了利用具有频繁连接单元的深度学习技术的系统;我们通过采用贝叶斯统计数据领域的概念,即变分推理。我们所提出的方法包括将网络经常性单位视为随机潜变量,其先前分配施加在它们上。在此基础上,我们继续推断出相应的后医;这些可以用于预测生成,以可用稀疏训练数据中的不确定性占据不确定性的方式。为了允许我们的方法可以轻松地扩展到大型真实数据集,我们在近似摊销变分推理(AVI)设置下的推动,由此通过(传统)神经网络进行参数化的后海程。我们对使用具有挑战性的基准数据集进行了广泛的实验评估,并说明了其对现有最先进技术的优越性。

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